WO2023055418A1 - Multiple stage sorting - Google Patents
Multiple stage sorting Download PDFInfo
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- WO2023055418A1 WO2023055418A1 PCT/US2022/016869 US2022016869W WO2023055418A1 WO 2023055418 A1 WO2023055418 A1 WO 2023055418A1 US 2022016869 W US2022016869 W US 2022016869W WO 2023055418 A1 WO2023055418 A1 WO 2023055418A1
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- materials
- mixture
- sorting
- heterogeneous mixture
- certain ones
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Classifications
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- B—PERFORMING OPERATIONS; TRANSPORTING
- B07—SEPARATING SOLIDS FROM SOLIDS; SORTING
- B07C—POSTAL SORTING; SORTING INDIVIDUAL ARTICLES, OR BULK MATERIAL FIT TO BE SORTED PIECE-MEAL, e.g. BY PICKING
- B07C5/00—Sorting according to a characteristic or feature of the articles or material being sorted, e.g. by control effected by devices which detect or measure such characteristic or feature; Sorting by manually actuated devices, e.g. switches
- B07C5/36—Sorting apparatus characterised by the means used for distribution
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- B—PERFORMING OPERATIONS; TRANSPORTING
- B07—SEPARATING SOLIDS FROM SOLIDS; SORTING
- B07C—POSTAL SORTING; SORTING INDIVIDUAL ARTICLES, OR BULK MATERIAL FIT TO BE SORTED PIECE-MEAL, e.g. BY PICKING
- B07C5/00—Sorting according to a characteristic or feature of the articles or material being sorted, e.g. by control effected by devices which detect or measure such characteristic or feature; Sorting by manually actuated devices, e.g. switches
- B07C5/34—Sorting according to other particular properties
- B07C5/3416—Sorting according to other particular properties according to radiation transmissivity, e.g. for light, x-rays, particle radiation
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- B—PERFORMING OPERATIONS; TRANSPORTING
- B07—SEPARATING SOLIDS FROM SOLIDS; SORTING
- B07C—POSTAL SORTING; SORTING INDIVIDUAL ARTICLES, OR BULK MATERIAL FIT TO BE SORTED PIECE-MEAL, e.g. BY PICKING
- B07C5/00—Sorting according to a characteristic or feature of the articles or material being sorted, e.g. by control effected by devices which detect or measure such characteristic or feature; Sorting by manually actuated devices, e.g. switches
- B07C5/34—Sorting according to other particular properties
- B07C5/342—Sorting according to other particular properties according to optical properties, e.g. colour
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- B—PERFORMING OPERATIONS; TRANSPORTING
- B07—SEPARATING SOLIDS FROM SOLIDS; SORTING
- B07C—POSTAL SORTING; SORTING INDIVIDUAL ARTICLES, OR BULK MATERIAL FIT TO BE SORTED PIECE-MEAL, e.g. BY PICKING
- B07C5/00—Sorting according to a characteristic or feature of the articles or material being sorted, e.g. by control effected by devices which detect or measure such characteristic or feature; Sorting by manually actuated devices, e.g. switches
- B07C5/34—Sorting according to other particular properties
- B07C5/342—Sorting according to other particular properties according to optical properties, e.g. colour
- B07C5/3422—Sorting according to other particular properties according to optical properties, e.g. colour using video scanning devices, e.g. TV-cameras
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01N—INVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
- G01N21/00—Investigating or analysing materials by the use of optical means, i.e. using sub-millimetre waves, infrared, visible or ultraviolet light
- G01N21/62—Systems in which the material investigated is excited whereby it emits light or causes a change in wavelength of the incident light
- G01N21/71—Systems in which the material investigated is excited whereby it emits light or causes a change in wavelength of the incident light thermally excited
- G01N21/718—Laser microanalysis, i.e. with formation of sample plasma
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06N—COMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
- G06N3/00—Computing arrangements based on biological models
- G06N3/02—Neural networks
- G06N3/04—Architecture, e.g. interconnection topology
- G06N3/0464—Convolutional networks [CNN, ConvNet]
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06N—COMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
- G06N3/00—Computing arrangements based on biological models
- G06N3/02—Neural networks
- G06N3/08—Learning methods
- G06N3/09—Supervised learning
Definitions
- U.S. Patent Application Serial No. 17/491,415 is also a continuation-in-part application of U.S. Patent Application Serial No. 16/852,514, which is a divisional application of U.S. Patent Application Serial No. 16/358,374 filed on March 19, 2019 (issued as U.S. Patent No. 10,625,304), both of which are incorporated herein by reference.
- the present disclosure relates in general to the sorting of materials, and in particular, to the sorting of materials utilizing multiple stages of sorting.
- Recycling is the process of collecting and processing materials that would otherwise be thrown away as trash, and turning them into new products. Recycling has benefits for communities and for the environment, since it reduces the amount of waste sent to landfills and incinerators, conserves natural resources, increases economic security by tapping a domestic source of materials, prevents pollution by reducing the need to collect new raw materials, and saves energy. After collection, recyclables are generally sent to a material recovery facility to be sorted, cleaned, and processed into materials that can be used in manufacturing.
- any quantity of scrap composed of similar, or the same, alloys and of consistent quality has more value than scrap consisting of mixed aluminum alloys.
- aluminum will always be the bulk of the material.
- constituents such as copper, magnesium, silicon, iron, chromium, zinc, manganese, and other alloy elements provide a range of properties to alloyed aluminum and provide a means to distinguish one aluminum alloy from the other.
- the Aluminum Association is the authority that defines the allowable limits for aluminum alloy chemical composition.
- the data for the aluminum wrought alloy chemical compositions is published by the Aluminum Association in “International Alloy Designations and Chemical Composition Limits for Wrought Aluminum and Wrought Aluminum Alloys,” which was updated in January 2015, and which is incorporated by reference herein.
- the Ixxx series of wrought aluminum alloys is composed essentially of pure aluminum with a minimum 99% aluminum content by weight; the 2xxx series is wrought aluminum principally alloyed with copper (Cu); the 3xxx series is wrought aluminum principally alloyed with manganese (Mn); the 4xxx series is wrought aluminum alloyed with silicon (Si); the 5xxx series is wrought aluminum primarily alloyed with magnesium (Mg); the 6xxx series is wrought aluminum principally alloyed with magnesium and silicon; the 7xxx series is wrought aluminum primarily alloyed with zinc (Zn); and the 8xxx series is a miscellaneous category.
- the Aluminum Association also has a similar document for cast aluminum alloys.
- the Ixx series of cast aluminum alloys is composed essentially of pure aluminum with a minimum 99% aluminum content by weight; the 2xx series is cast aluminum principally alloyed with copper; the 3xx series is cast aluminum principally alloyed with silicon plus copper and/or magnesium; the 4xx series is cast aluminum principally alloyed with silicon; the 5xx series is cast aluminum principally alloyed with magnesium; the 6xx series is an unused series; the 7xx series is cast aluminum principally alloyed with zinc; the 8xx series is cast aluminum principally alloyed with tin; and the 9xx series is cast aluminum alloyed with other elements.
- Examples of cast alloys utilized for automotive parts include 380, 384, 356, 360, and 319.
- recycled cast alloys 380 and 384 can be used to manufacture vehicle engine blocks, transmission cases, etc.
- Recycled cast alloy 356 can be used to manufacture aluminum alloy wheels.
- recycled cast alloy 319 can be used to manufacture transmission blocks.
- wrought aluminum alloys have a higher magnesium concentration than cast aluminum alloys, and cast aluminum alloys have a higher silicon concentration than wrought aluminum alloys.
- the presence of commingled pieces of different alloys in a body of scrap limits the ability of the scrap to be usefully recycled, unless the different alloys (or, at least, alloys belonging to different compositional families such as those designated by the Aluminum Association) can be separated prior to re-melting. This is because, when commingled scrap of a plurality of different alloy compositions or composition families is re-melted, the resultant molten mixture contains proportions of the principal alloy and elements (or the different compositions) that are too high to satisfy the compositional limitations required in any particular commercial alloy.
- FIG. 1 illustrates a schematic of a sorting system configured in accordance with embodiments of the present disclosure.
- FIG. 2 shows visual images of exemplary material pieces from cast aluminum.
- FIG. 3 shows visual images of exemplary material pieces from aluminum extrusions.
- FIG. 4 shows visual images of exemplary material pieces from wrought aluminum.
- FIG. 5 illustrates a flowchart diagram configured in accordance with embodiments of the present disclosure.
- FIG. 6 illustrates a flowchart diagram configured in accordance with embodiments of the present disclosure.
- FIGS. 7 A and 7B illustrate systems and processes for sorting of materials in accordance with certain embodiments of the present disclosure.
- FIG. 8 illustrates a block diagram of a data processing system configured in accordance with embodiments of the present disclosure.
- chemical element means a chemical element of the periodic table of chemical elements, including chemical elements that may be discovered after the filing date of this application.
- a “material” may include a solid composed of a compound or mixture of one or more chemical elements, or a compound or mixture of a compound or mixture of chemical elements, wherein the complexity of a compound or mixture may range from being simple to complex (all of which may also be referred to herein as a material having a particular “chemical composition”).
- Classes of materials may include metals (ferrous and nonferrous), metal alloys, plastics (including, but not limited to PCB, HDPE, UHMWPE, and various colored plastics), rubber, foam, glass (including, but not limited to borosilicate or soda lime glass, and various colored glass), ceramics, paper, cardboard, Teflon, PE, bundled wires, insulation covered wires, rare earth elements, leaves, wood, plants, parts of plants, textiles, bio-waste, packaging, electronic waste, batteries and accumulators, end-of-life vehicles, mining, construction, and demolition waste, crop wastes, forest residues, purpose-grown grasses, woody energy crops, microalgae, urban food waste, food waste, hazardous chemical and biomedical wastes, construction debris, farm wastes, biogenic items, non-biogenic items, objects with a carbon content, any other objects that may be found within municipal solid waste, and any other objects, items, or materials disclosed herein, including further types or classes of any of the foregoing that can be distinguished from each other
- aluminum refers to aluminum metal and aluminum-based alloys, viz., alloys containing more than 50% by weight aluminum (including those classified by the Aluminum Association).
- the terms “scrap,” “scrap pieces,” “materials,” “material pieces,” and “pieces” may be used interchangeably.
- a material piece or scrap piece referred to as having a metal alloy composition is a metal alloy having a particular chemical composition that distinguishes it from other metal alloys.
- Zorba is the collective term for shredded nonferrous metals, including, but not limited to, those originating from end-of-life vehicles (“ELVs”) or waste electronic and electrical equipment (“WEEE”).
- EUVs end-of-life vehicles
- WEEE waste electronic and electrical equipment
- ISRI Institute Of Scrap Recycling Industries, Inc.
- each scrap piece may be made up of a combination of the nonferrous metals: aluminum, copper, lead, magnesium, stainless steel, nickel, tin, and zinc, in elemental or alloyed (solid) form.
- the term “Twitch” shall mean fragmented aluminum scrap. Twitch may be produced by a float process whereby the aluminum scrap floats to the top because heavier metal scrap pieces sink (for example, in some processes, sand may be mixed in to change the density of the water in which the scrap is immersed).
- the terms “identify” and “classify,” and the terms “identification” and “classification,” and their derivative forms, may be utilized interchangeably.
- to “classify” a piece of material is to determine a type or class of materials to which the piece of material belongs.
- a vision system or sensor system may be configured to collect any type of information for classifying materials, which classifications can be utilized within a sorting system to selectively sort material pieces as a function of a set of one or more physical and/or chemical characteristics (e.g., which may be user- defined), including but not limited to, color, texture, hue, shape, brightness, weight, density, chemical composition, size, uniformity, manufacturing type, chemical signature, radioactive signature, transmissivity to light, sound, or other signals, and reaction to stimuli such as various fields, including emitted and/or reflected electromagnetic radiation (“EM”) of the material pieces.
- physical and/or chemical characteristics e.g., which may be user- defined
- the types or classes (i.e., classification) of materials may be user-definable and not limited to any known classification of materials.
- the granularity of the types or classes may range from very coarse to very fine.
- the types or classes may include plastics, ceramics, glasses, metals, and other materials, where the granularity of such types or classes is relatively coarse; different metals and metal alloys such as, for example, zinc, copper, brass, chrome plate, and aluminum, where the granularity of such types or classes is finer; or between specific types of plastic, where the granularity of such types or classes is relatively fine.
- the types or classes may be configured to distinguish between materials of significantly different chemical compositions such as, for example, plastics and metal alloys, or to distinguish between materials of almost identical chemical compositions such as, for example, different types of metal alloys. It should be appreciated that the methods and systems discussed herein may be applied to accurately identify/classify pieces of material for which the chemical composition is completely unknown before being classified.
- manufacturing type refers to the type of manufacturing process by which the material in a material piece was manufactured, such as a metal part having been formed by a wrought process, having been cast (including, but not limited to, expendable mold casting, permanent mold casting, and powder metallurgy), having been forged, a material removal process, extruded, etc.
- a “conveyor system” may be any known piece of mechanical handling equipment that moves materials from one location to another, including, but not limited to, an aeromechanical conveyor, automotive conveyor, belt conveyor, belt-driven live roller conveyor, bucket conveyor, chain conveyor, chain-driven live roller conveyor, drag conveyor, dust-proof conveyor, electric track vehicle system, flexible conveyor, gravity conveyor, gravity skatewheel conveyor, lineshaft roller conveyor, motorized-drive roller conveyor, overhead I-beam conveyor, overland conveyor, pharmaceutical conveyor, plastic belt conveyor, pneumatic conveyor, screw or auger conveyor, spiral conveyor, tubular gallery conveyor, vertical conveyor, vibrating conveyor, and wire mesh conveyor.
- the material sorting systems described herein receive a heterogeneous mixture of a plurality of material pieces, wherein at least one material within this heterogeneous mixture includes a composition of elements (e.g., a metal alloy composition) different from one or more other materials.
- a composition of elements e.g., a metal alloy composition
- all embodiments of the present disclosure may be utilized to sort any types or classes of materials as defined herein, certain embodiments of the present disclosure are hereinafter described for sorting metal alloy material pieces, including aluminum alloy material pieces, and including between wrought, extruded, and/or cast aluminum alloy material pieces.
- the materials to be sorted may have irregular sizes and shapes (e.g., see FIGS. 6-8).
- such material e.g., Zorba and/or Twitch
- shredding mechanism that chops up the materials into such irregularly shaped and sized pieces (producing scrap pieces), which may then be fed or diverted onto a conveyor system.
- Embodiments of the present disclosure will be described herein as sorting material pieces into such separate groups or collections by physically depositing (e.g., ejecting or diverting) the material pieces into separate receptacles or bins, or onto another conveyor system, as a function of user-defined groupings or collections (e.g., material type classifications).
- material pieces may be sorted in order to separate material pieces composed of a specific chemical composition, or compositions, from other material pieces composed of a different specific chemical composition.
- certain embodiments of the present disclosure may sort aluminum alloy material pieces into separate bins so that substantially all of the aluminum alloy material pieces having a chemical composition falling within one of the aluminum alloy series published by the Aluminum Association are sorted into a single bin (for example, a bin may correspond to one or more specific aluminum alloy series (e.g., 1000, 2000, 3000, 4000, 5000, 6000, 7000, 8000, 100, 200, 300, 400, 500, 600, 700, 800, 900)).
- certain embodiments of the present disclosure may be configured to sort aluminum alloy material pieces into separate bins as a function of a classification of their alloy composition even if such alloy compositions fall within the same Aluminum Association series.
- the sorting system in accordance with certain embodiments of the present disclosure can classify and sort aluminum alloy material pieces having compositions that would all classify them into a single aluminum alloy series (e.g., the 300 series or the 500 series) into separate bins as a function of their aluminum alloy composition.
- certain embodiments of the present disclosure can classify and sort into separate bins aluminum alloy material pieces classified as cast aluminum alloy 319 separate from aluminum alloy material pieces classified as cast aluminum alloy 380.
- FIG. 1 illustrates an example of a system 100 configured in accordance with various embodiments of the present disclosure to automatically classify/sort materials.
- a conveyor system 103 may be implemented to convey individual material pieces 101 through the system 100 so that each of the individual material pieces 101 can be tracked, classified, and/or sorted into predetermined desired groups or collections.
- Such a conveyor system 103 may be implemented with one or more conveyor belts on which the material pieces 101 travel, typically at a predetermined constant speed.
- the conveyor system 103 may also be referred to as the conveyor belt 103.
- some or all of the acts of conveying, stimulating, detecting, classifying, and sorting may be performed automatically, i.e., without human intervention.
- one or more sources of stimuli, one or more emissions detectors, a classification module, a sorting apparatus, and/or other system components may be configured to perform these and other operations automatically.
- FIG. 1 depicts a single stream of material pieces 101 on a conveyor belt 103
- embodiments of the present disclosure may be implemented in which a plurality of such streams of material pieces are passing by the various components of the system 100 in parallel with each other, or a collection of material pieces deposited in a random manner onto a conveyor system (e.g., the conveyor belt 103) are passed by the various components of the system 100.
- certain embodiments of the present disclosure are capable of simultaneously tracking, classifying, and/or sorting a plurality of such parallel travelling streams of material pieces, or material pieces randomly deposited onto a conveyor system (belt).
- singulation of the material pieces 101 is not required to track, classify, and/or sort the material pieces.
- the conveyor belt 103 may be a conventional endless belt conveyor employing a conventional drive motor 104 suitable to move the conveyor belt 103 at the predetermined speeds.
- some sort of suitable feeder mechanism may be utilized to feed the material pieces 101 onto the conveyor belt 103, whereby the conveyor belt 103 conveys the material pieces 101 past various components within the system 100.
- the conveyor belt 103 is operated to travel at a predetermined speed by a conveyor belt motor 104. This predetermined speed may be programmable and/or adjustable by the operator in any well- known manner.
- control of the conveyor belt motor 104 and/or the position detector 105 may be performed by an automation control system 108.
- Such an automation control system 108 may be operated under the control of a computer system 107 and/or the functions for performing the automation control may be implemented in software within the computer system 107.
- a position detector 105 which may be a conventional encoder, may be operatively coupled to the conveyor belt 103 and the automation control system 108 to provide information corresponding to the movement (e.g., speed) of the conveyor belt 103.
- the controls to the conveyor belt drive motor 104 and/or the automation control system 108 and alternatively including the position detector 105
- the automation control system 108 is able to track the location of each of the material pieces 101 while they travel along the conveyor belt 103.
- a tumbler and/or a vibrator may be utilized to separate the individual material pieces from a collection of material pieces, and then they may be positioned into one or more singulated (i.e., single file) streams.
- the material pieces may be positioned into one or more singulated (i.e., single file) streams, which may be performed by an active or passive singulator 106.
- An example of a passive singulator is further described in U.S. Patent No. 10,207,296.
- the conveyor system e.g., the conveyor belt 103 may simply convey a collection of material pieces, which have been deposited onto the conveyor belt 103 in a random manner.
- certain embodiments of the present disclosure may utilize a vision, or optical recognition, system 110 and/or a distance measuring device 111 as a means to begin tracking each of the material pieces 101 as they travel on the conveyor belt 103.
- the vision system 110 may utilize one or more still or live action cameras 109 to note the position (i.e., location and timing) of each of the material pieces 101 on the moving conveyor belt 103.
- the vision system 110 may be further, or alternatively, configured to perform certain types of identification (e.g., classification) of all or a portion of the material pieces 101. For example, such a vision system 110 may be utilized to acquire information about each of the material pieces 101.
- the vision system 110 may be configured (e.g., with a machine learning system) to collect any type of information that can be utilized within the system 100 to classify the material pieces 101 as a function of a set of one or more (user-defined) physical characteristics, including, but not limited to, color, hue, size, shape, texture, overall physical appearance, uniformity, composition, and/or manufacturing type of the material pieces 101.
- the vision system 110 captures images of each of the material pieces 101 (including one-dimensional, two-dimensional, three-dimensional, or holographic imaging), for example, by using an optical sensor as utilized in typical digital cameras and video equipment. Such images captured by the optical sensor are then stored in a memory device as image data.
- such image data represents images captured within optical wavelengths of light (i.e., the wavelengths of light that are observable by the typical human eye).
- alternative embodiments of the present disclosure may utilize sensors that are able to capture an image of a material made up of wavelengths of light outside of the visual wavelengths of the typical human eye.
- one or more sensor systems 120 may be utilized solely or in combination with the vision system 110 to classify/identify material pieces 101.
- a sensor system 120 may be configured with any type of sensor technology, including sensors utilizing irradiated or reflected electromagnetic radiation (e.g., utilizing infrared (“IR”), Fourier Transform IR (“FTIR”), Forward-looking Infrared (“FLIR”), Very Near Infrared (“VNIR”), Near Infrared (“NIR”), Short Wavelength Infrared (“SWIR”), Long Wavelength Infrared (“LWIR”), Medium Wavelength Infrared (“MWIR”), X-Ray Transmission (“XRT”), Gamma Ray, Ultraviolet, X-Ray Fluorescence (“XRF”), Laser Induced Breakdown Spectroscopy (“LIBS”), Raman Spectroscopy, Anti-stokes Raman Spectroscopy, Gamma Spectroscopy, Hyperspectral Spectroscopy (e.g., any range beyond visible wavelengths), Acoustic Spectroscopy, NMR Spectroscopy, Microwave Spectroscopy, Terahertz Spec
- FIG. 1 is illustrated with a combination of a vision system 110 and a sensor system 120
- embodiments of the present disclosure may be implemented with any combination of sensor systems utilizing any of the sensor technologies disclosed herein, or any other sensor technologies currently available or developed in the future.
- FIG. 1 is illustrated as including a sensor system 120, implementation of such a sensor system is optional within certain embodiments of the present disclosure.
- a combination of both the vision system 110 and one or more sensor systems 120 may be used to classify the material pieces 101.
- any combination of one or more of the different sensor technologies disclosed herein may be used to classify the material pieces 101 without utilization of a vision system 110.
- embodiments of the present disclosure may include any combinations of one or more sensor systems and/or vision systems in which the outputs of such sensor and/or vision systems are utilized by a machine learning system (as further disclosed herein) in order to classify/identify materials from a heterogeneous mixture of materials, which can then be sorted from each other.
- a vision system 110 and/or sensor system(s) may be configured to identify which of the material pieces 101 are not of the kind to be sorted by the system 100 (sometimes referred to as contaminants), and send a signal to reject such material pieces.
- the identified material pieces 101 may be diverted/ejected utilizing one of the mechanisms as described hereinafter for physically moving sorted material pieces into individual bins.
- the distance measuring device 111 and accompanying control system 112 may be utilized and configured to measure the sizes and/or shapes of each of the material pieces 101 as they pass within proximity of the distance measuring device 111, along with the position (i.e., location and timing) of each of the material pieces 101 on the moving conveyor belt 103.
- An exemplary operation of such a distance measuring device 111 and control system 112 is further described in U.S. Patent No. 10,207,296.
- the vision system 110 may be utilized to track the position (i.e., location and timing) of each of the material pieces 101 on the moving conveyor belt 103.
- Such a distance measuring device 111 may be implemented with a well-known visible light (e.g., laser light) system, which continuously measures a distance the light travels before being reflected back into a detector of the laser light system. As such, as each of the material pieces 101 passes within proximity of the device 111, it outputs a signal to the control system 112 indicating such distance measurements. Therefore, such a signal may substantially represent an intermittent series of pulses whereby the baseline of the signal is produced as a result of a measurement of the distance between the distance measuring device 111 and the conveyor belt 103 during those moments when a material piece 101 is not in the proximity of the device 111, while each pulse provides a measurement of the distance between the distance measuring device 111 and a material piece 101 passing by on the conveyor belt 103.
- a well-known visible light e.g., laser light
- each pulse signal generated by the distance measuring device 111 provides the height of portions of each of the material pieces 101 as they pass by on the conveyor belt 103.
- the length of each of such pulses also provides a measurement of a length of each of the material pieces 101 measured along a line substantially parallel to the direction of travel of the conveyor belt 103.
- this length measurement (and alternatively the height measurements) that may be utilized within certain embodiments of the present disclosure to determine when to activate and deactivate the acquisition of detected fluorescence (i.e., the XRF spectrum) of each of the material pieces 101 by a sensor system 120 implementing an XRF system so that the detected fluorescence is obtained substantially only from each of the material pieces and not from any background surfaces, such as a conveyor belt 103.
- detected fluorescence i.e., the XRF spectrum
- the sensor system(s) 120 may be configured to assist the vision system 110 to identify the chemical composition, or relative chemical compositions, of each of the material pieces 101 as they pass within proximity of the sensor system(s) 120.
- the sensor system(s) 120 may include an energy emitting source 121, which may be powered by a power supply 122, for example, in order to stimulate a response from each of the material pieces 101.
- FIG. 1 uses air jets to divert/eject material pieces
- other mechanisms may be used to divert/eject the material pieces, such as robotically removing the material pieces from the conveyor belt, pushing the material pieces from the conveyor belt (e.g., with paint brush type plungers), causing an opening (e.g., a trap door) in the conveyor system 103 from which a material piece may drop, or using air jets to separate the material pieces into separate bins as they fall from the edge of the conveyor belt.
- multiple classifications may be mapped to a single sorting device and associated sorting bin.
- the same sorting device may be activated to sort these into the same sorting bin.
- Such combination sorting may be applied to produce any desired combination of sorted material pieces.
- the mapping of classifications may be programmed by the user (e.g., using the sorting algorithm (e.g., see FIG. 5) operated by the computer system 107) to produce such desired combinations.
- the classifications of material pieces are user-definable, and not limited to any particular known classifications of material pieces.
- the conveyor system 103 may be divided into multiple belts configured in series such as, for example, two belts, where a first belt conveys the material pieces past the vision system 110 and/or an implemented sensor system 120, and a second belt conveys the material pieces from the vision system 110 and/or an implemented sensor system 120 to the sorting devices. Moreover, such a second conveyor belt may be at a lower height than the first conveyor belt, such that the material pieces fall from the first belt onto the second belt.
- the emitting source 121 may be located above the detection area (i.e., above the conveyor system 103); however, certain embodiments of the present disclosure may locate the emitting source 121 and/or detectors 124 in other positions that still produce acceptable sensed/detected physical characteristics.
- signals representing the detected XRF spectrum may be converted into a discrete energy histogram such as on a per-channel (i.e., element) basis, as further described herein.
- a conversion process may be implemented within the control system 123, or the computer system 107.
- a control system 123 or computer system 107 may include a commercially available spectrum acquisition module, such as the commercially available Amptech MCA 5000 acquisition card and software programmed to operate the card.
- a sorting algorithm configured in accordance with certain embodiments of the present disclosure may then utilize this collected histogram of energy levels to classify at least certain ones of the material pieces 101 and/or assist the vision system 110 in classifying the material pieces 101.
- the source 121 may include an in-line x-ray fluorescence (“IL-XRF”) tube, such as further described within U.S. Patent No. 10,207,296.
- IL-XRF in-line x-ray fluorescence
- Such an IL-XRF tube may include a separate x- ray source each dedicated for one or more streams (e.g., singulated) of conveyed material pieces.
- the one or more detectors 124 may be implemented as XRF detectors to detect fluoresced x-rays from material pieces 101 within each of the singulated streams. Examples of such XRF detectors are further described within U.S. Patent No. 10,207,296.
- the systems and methods described herein may be applied to classify and/or sort individual material pieces having any of a variety of sizes as small as a 1/4 inch in diameter or less. Even though the systems and methods described herein are described primarily in relation to sorting individual material pieces of a singulated stream one at a time, the systems and methods described herein are not limited thereto. Such systems and methods may be used to stimulate and/or detect emissions from a plurality of materials concurrently. For example, as opposed to a singulated stream of materials being conveyed along one or more conveyor belts in series, multiple singulated streams may be conveyed in parallel. Each stream may be a on a same belt or on different belts arranged in parallel.
- pieces may be randomly distributed on (e.g., across and along) one or more conveyor belts. Accordingly, the systems and methods described herein may be used to stimulate, and/or detect emissions from, a plurality of these small pieces at the same time. In other words, a plurality of small pieces may be treated as a single piece as opposed to each small piece being considered individually. Accordingly, the plurality of small pieces of material may be classified and sorted (e.g., diverted/ejected from the conveyor system) together. It should be appreciated that a plurality of larger material pieces also may be treated as a single material piece.
- certain embodiments of the present disclosure may implement one or more vision systems (e.g., vision system 110) in order to identify, track, and/or classify material pieces.
- vision system(s) may operate alone to identify and/or classify and sort material pieces, or may operate in combination with a sensor system (e.g., sensor system 120) to identify and/or classify and sort material pieces.
- sensor system e.g., sensor system 120
- a sorting system e.g., system 100
- the sensor system 120 may be omitted from the system 100 (or simply deactivated).
- Such a vision system may be configured with one or more devices for capturing or acquiring images of the material pieces as they pass by on a conveyor system.
- the devices may be configured to capture or acquire any desired range of wavelengths irradiated or reflected by the material pieces, including, but not limited to, visible, infrared (“IR”), ultraviolet (“UV”) light.
- the vision system may be configured with one or more cameras (still and/or video, either of which may be configured to capture two-dimensional, three-dimensional, and/or holographical images) positioned in proximity (e.g., above) the conveyor system so that images of the material pieces are captured as they pass by the sensor system(s).
- data captured by a sensor system 120 may be processed (converted) into data to be utilized (either solely or in combination with the image data captured by the vision system 110) for classifying/sorting of the material pieces.
- Such an implementation may be in lieu of, or in combination with, utilizing the sensor system 120 for classifying material pieces.
- the information may then be sent to a computer system (e.g., computer system 107) to be processed by a machine learning system in order to identify and/or classify each of the material pieces.
- a computer system e.g., computer system 107
- Such a machine learning system may implement any well-known machine learning system, including one that implements a neural network (e.g., artificial neural network, deep neural network, convolutional neural network, recurrent neural network, autoencoders, reinforcement learning, etc.), supervised learning, unsupervised learning, semi-supervised learning, reinforcement learning, self learning, feature learning, sparse dictionary learning, anomaly detection, robot learning, association rule learning, fuzzy logic, artificial intelligence (“Al”), deep learning algorithms, deep structured learning hierarchical learning algorithms, support vector machine (“SVM”) (e.g., linear SVM, nonlinear SVM, SVM regression, etc.), decision tree learning (e.g., classification and regression tree (“CART”), ensemble methods (e.g., ensemble learning, Random Forests, Bagging and Pasting, Patches and Subspaces, Boosting, Stacking, etc.), dimensionality reduction (e.g., Projection, Manifold Learning, Principal Components Analysis, etc.) and/or deep machine learning algorithms, such as those described in and
- Non-limiting examples of publicly available machine learning software and libraries that could be utilized within embodiments of the present disclosure include Python, OpenCV, Inception, Theano, Torch, PyTorch, Pylearn2, Numpy, Blocks, TensorFlow, MXNet, Caffe, Lasagne, Keras, Chainer, Matlab Deep Learning, CNTK, MatConvNet (a MATLAB toolbox implementing convolutional neural networks for computer vision applications), DeepLearnToolbox (a Matlab toolbox for Deep Learning (from Rasmus Berg Palm)), BigDL, Cuda-Convnet (a fast C++/CUDA implementation of convolutional (or more generally, feed-forward) neural networks), Deep Belief Networks, RNNLM, RNNLIB-RNNLIB, matrbm, deep learning 4j, Eblearn.lsh, deepmat, MShadow, Matplotlib, SciPy, CXXNET, Nengo-Nengo, Eblearn, cudamat, Gnumpy, 3-way factor
- Machine learning often occurs in two stages. For example, first, training occurs, which may be performed offline in that the system 100 is not being utilized to perform actual classifying/sorting of material pieces.
- the system 100 may be utilized to train the machine learning system in that homogenous sets (also referred to herein as control samples) of material pieces (i.e., having the same types or classes of materials) are passed through the system 100 (e.g., by a conveyor system 103); and all such material pieces may not be sorted, but may be collected in a common bin (e.g., bin 140).
- the training may be performed at another location remote from the system 100, including using some other mechanism for collecting sensed information (characteristics) of homogenous sets of material pieces.
- a machine learning system configured in accordance with certain embodiments of the present disclosure may be configured to sort between material pieces as a function of their respective material/chemical compositions. For example, such a machine learning system may be configured so that aluminum alloys can be sorted as a function of the percentage of a specified alloying material contained within the aluminum alloys.
- FIG. 2 shows captured or acquired images of exemplary material pieces of cast aluminum, which may be used during the aforementioned training stage.
- FIG. 3 shows captured or acquired images of exemplary material pieces of extruded aluminum, which may be used during the aforementioned training stage.
- FIG. 4 shows captured or acquired images of exemplary material pieces of wrought aluminum, which may be used during the aforementioned training stage.
- a plurality of material pieces of a particular (homogenous) classification (type) of material which are the control samples, may be delivered past the vision system by the conveyor system so that the machine learning system detects, extracts, and learns what features visually represent such exemplary material pieces.
- images of cast aluminum material pieces such as shown in FIG.
- the machine learning algorithm “learns” how to detect, recognize, and classify material pieces composed of cast aluminum alloys. This creates a library of parameters particular to cast aluminum material pieces. Then, the same process can be performed with respect to images of extruded aluminum material pieces, such as shown in FIG. 3, creating a library of parameters particular to extruded aluminum material pieces. And, the same process can be performed with respect to images of wrought aluminum material pieces, such as shown in FIG. 4, creating a library of parameters particular to wrought aluminum material pieces. For each type of material to be classified by the vision system, any number of exemplary material pieces of that type of material may be passed by the vision system. Given a captured image as input data, the machine learning algorithms may use N classifiers, each of which test for one of N different material types.
- data captured by a sensor and/or vision system with respect to a particular material piece may be processed as an array of data values.
- the data may be image data captured by a digital camera or other type of imaging sensor with respect to a particular material piece and processed as an array of pixel values.
- Each data value may be represented by a single number, or as a series of numbers representing values.
- These values are multiplied by the neuron weight parameters, and may possibly have a bias added. This is fed into a neuron nonlinearity.
- the resulting number output by the neuron can be treated much as the values were, with this output multiplied by subsequent neuron weight values, a bias optionally added, and once again fed into a neuron nonlinearity.
- Each such iteration of the process is known as a “layer” of the neural network.
- the final outputs of the final layer may be interpreted as probabilities that a material is present or absent in the captured data pertaining to the material piece. Examples of such a process are described in detail in both of the previously noted “ImageNet Classification with Deep Convolutional Networks” and “Gradient-Based Learning Applied to Document Recognition” references.
- the final set of neurons’ outputs is trained to represent the likelihood a material piece is associated with the captured data.
- the likelihood that a material piece is associated with the captured data is over a user-specified threshold, then it is determined that the particular material piece is indeed associated with the captured data.
- training of the machine learning system may be performed utilizing a labeling/ annotation technique (or any other supervised learning technique) whereby as data/information of material pieces are captured by a vision/sensor system, a user inputs a label or annotation that identifies each material piece, which is then used to create the library for use by the machine learning system when classifying material pieces within a heterogenous mixture of material pieces.
- a labeling/ annotation technique or any other supervised learning technique
- FIG. 2 shows visual images of exemplary scrap pieces from cast aluminum.
- FIG. 3 shows visual images of exemplary scrap pieces from aluminum extrusions.
- FIG. 4 shows visual images of exemplary scrap pieces from wrought aluminum.
- Embodiments of the present disclosure utilize a vision system as described herein capable of classifying/sorting between these three different types of aluminum scrap pieces.
- aluminum extrusions have an overall physical appearance that is distinguishable from cast and wrought aluminum scrap pieces, which can be learned by a machine learning system configured in accordance with embodiments of the present disclosure.
- Embodiments of the present disclosure are configured to sort the wrought aluminum alloy material pieces from the Twitch, which contains both wrought and cast aluminum pieces.
- extruded aluminum alloy pieces can be sorted with the wrought aluminum alloy pieces (or sorted separately from both cast and wrought aluminum). Since most of the Mg is within the wrought aluminum, the remaining aluminum scrap pieces, containing mostly cast aluminum alloys, have relatively insignificant amounts of Mg.
- one or more of the sensor systems 120 disclosed herein may be utilized to classify/sort either or both of the aforementioned cast fractions and wrought fractions.
- one or both of an XRF system and/or a sensor system using LIBS may be utilized to classify/sort between two or more different cast aluminum alloys or two or more different wrought aluminum alloys.
- the utilization of an XRF system to do so is disclosed in U.S. Patent No. 10,207,296.
- the spectroscopy technique known as Laser-Induced Breakdown Spectroscopy (“LIBS), Laser Spark Spectroscopy (“LSS”), or Laser-Induced Optical Emission Spectroscopy (“LIOES”) uses a focused laser beam to vaporize and subsequently produce spectral line emissions from a sample material. In this way samples placed at a distance from the analyzing instrumentation, can be analyzed for their chemical composition.
- LIBS Laser-Induced Breakdown Spectroscopy
- LSS Laser Spark Spectroscopy
- LIOES Laser-Induced Optical Emission Spectroscopy
- a vision system e.g., implemented within the computer system 107
- a vision system may perform pre-processing of the captured information, which may be utilized to detect (extract) each of the material pieces (e.g., from the background (e.g., the conveyor belt); in other words, the pre-processing may be utilized to identify the difference between the material piece and the background).
- image processing techniques such as dilation, thresholding, and contouring may be utilized to identify the material piece as being distinct from the background.
- the material pieces may be conveyed along the conveyor system within proximity of a distance measuring device and/or a sensor system in order to determine a size and/or shape of the material pieces, which may be useful if an XRF system, LIBS system, or some other spectroscopy sensor is also implemented within the sorting system and requires such size and/or shape determinations.
- post processing may be performed. Post processing may involve resizing the captured information/data to prepare it for use in the neural networks. This may also include modifying certain properties (e.g., enhancing image contrast, changing the image background, or applying filters) in a manner that will yield an enhancement to the capability of the machine learning system to classify the material pieces.
- the data may be resized.
- Data resizing may be necessary under certain circumstances to match the data input requirements for certain machine learning systems, such as neural networks.
- neural networks may require much smaller image sizes (e.g., 225 x 255 pixels or 299 x 299 pixels) than the sizes of the images captured by typical digital cameras.
- image sizes e.g., 225 x 255 pixels or 299 x 299 pixels
- the smaller the input data size the less processing time is needed to perform the classification.
- smaller data sizes can ultimately increase the throughput of the sorter system 100 and increase its value.
- the process block 3510 may be configured with a neural network employing one or more machine learning algorithms, which compare the extracted features with those stored in the knowledge base generated during the training stage, and assigns the classification with the highest match to each of the material pieces based on such a comparison.
- the algorithms of the machine learning system may process the captured information/data in a hierarchical manner by using automatically trained filters. The filter responses are then successfully combined in the next levels of the algorithms until a probability is obtained in the final step.
- these probabilities may be used for each of the N classifications to decide into which of the N sorting bins the respective material pieces should be sorted.
- each of the N classifications may be assigned to one sorting bin, and the material piece under consideration is sorted into that bin that corresponds to the classification returning the highest probability larger than a predefined threshold.
- predefined thresholds may be preset by the user.
- a particular material piece may be sorted into an outlier bin (e.g., sorting bin 140) if none of the probabilities is larger than the predetermined threshold.
- a sorting device corresponding to the classification, or classifications, of the material piece may be activated.
- the material piece has moved from the proximity of the vision system and/or sensor system(s) to a location downstream on the conveyor system (e.g., at the rate of conveying of a conveyor system).
- the activation of the sorting device is timed such that as the material piece passes the sorting device mapped to the classification of the material piece, the sorting device is activated, and the material piece is diverted/ejected from the conveyor system into its associated sorting bin.
- FIG. 6 illustrates a flowchart diagram depicting exemplary embodiments of a process 400 of sorting material pieces in accordance with certain embodiments of the present disclosure.
- the process 400 may be configured to operate within any of the embodiments of the present disclosure described herein, including the system 100 of FIG. 1.
- the process 400 may be configured to operate in conjunction with the process 3500.
- the process blocks 403 and 404 may be incorporated in the process 3500 (e.g., operating in series or in parallel with the process blocks 3503-3510) in order to combine the efforts of a vision system 110 that is implemented in conjunction with a machine learning system with a sensor system (e.g., the sensor system 120) that is not implemented in conjunction with a machine learning system in order to classify and/or sort material pieces.
- a vision system 110 that is implemented in conjunction with a machine learning system with a sensor system (e.g., the sensor system 120) that is not implemented in conjunction with a machine learning system in order to classify and/or sort material pieces.
- a sensor system e.g., the sensor system 120
- process block 404 physical characteristics of the material piece are sensed/detected by the sensor system.
- the type of material is identified/classified based (at least in part) on the sensed/detected characteristics, which may be combined with the classification by the machine learning system in conjunction with the vision system 110.
- a sorting device corresponding to the classification, or classifications, of the material piece is activated. Between the time at which the material piece was sensed and the time at which the sorting device is activated, the material piece has moved from the proximity of the sensor system to a location downstream on the conveyor system, at the rate of conveying of the conveyor system.
- the activation of the sorting device is timed such that as the material piece passes the sorting device mapped to the classification of the material piece, the sorting device is activated, and the material piece is diverted/ejected from the conveyor system into its associated sorting bin.
- the activation of a sorting device may be timed by a respective position detector that detects when a material piece is passing before the sorting device and sends a signal to enable the activation of the sorting device.
- the sorting bin corresponding to the sorting device that was activated receives the diverted/ejected material piece.
- a plurality of at least a portion of the system 100 may be linked together in succession in order to perform multiple iterations or layers of sorting.
- the conveyor system may be implemented with a single conveyor belt, or multiple conveyor belts, conveying the material pieces past a first vision system (and, in accordance with certain embodiments, a sensor system) configured for sorting material pieces of a first set of a heterogeneous mixture of materials by a sorter (e.g., the first automation control system 108 and associated one or more sorting devices 126.. . 129) into a first set of one or more receptacles (e.g., sorting bins 136...
- a sorter e.g., the first automation control system 108 and associated one or more sorting devices 126.. . 129
- a second vision system and, in accordance with certain embodiments, another sensor system ) configured for sorting material pieces of a second set of a heterogeneous mixture of materials by a second sorter into a second set of one or more sorting bins.
- each successive vision system may be configured to sort out a different material than previous vision system(s).
- different types or classes of materials may be classified by different types of sensors each for use with a machine learning system, and combined to classify material pieces in a stream of scrap or waste.
- data from two or more sensors can be combined using a single or multiple machine learning systems to perform classifications of material pieces.
- multiple sensor systems can be mounted onto a single conveyor system, with each sensor system utilizing a different machine learning system.
- multiple sensor systems can be mounted onto different conveyor systems, with each sensor system utilizing a different machine learning system.
- FIGS. 7A-7B illustrate a system and process 1600 configured in accordance with certain embodiments of the present disclosure in order to sort a plurality of metal alloy pieces.
- FIG. 7A illustrates an exemplary non-limiting schematic diagram of a side view of such a system and process 1600
- FIG. 7B illustrates a top view.
- FIGS. 7A-7B depict three stages of classification/sorting, any number of such stages may be implemented in accordance with various embodiments of the present disclosure.
- An Al system 1610 may be configured to recognize, classify, and distinguish those material pieces composed of wrought aluminum alloy(s) from those composed of cast aluminum alloys.
- the conveyor system 1603 may be configured to operate at a sufficient speed in order to “throw” the material pieces classified as wrought aluminum alloy(s) onto a following inclined conveyor system 1604.
- Material pieces not classified as composed of wrought aluminum alloy(s) are ejected by a sorting device 1620 onto a lower positioned conveyor system 1606.
- such a sorting device 1620 may be an air jet nozzle such as described herein, which is actuated to eject a material piece not classified as wrought aluminum alloy(s) from the normal trajectory of material pieces being “thrown” from the end of the conveyor system 1603 onto the conveyor system 1604.
- the material pieces not classified as wrought aluminum alloy(s) e.g., cast and/or extruded alloys
- the material pieces classified as wrought aluminum alloy(s) may be conveyed past an XRF or LIBS system 1611, which may be configured to identify, classify, and distinguish between different wrought aluminum alloy(s), including with a same wrought aluminum alloy series.
- the conveyor system 1604 may be configured to operate at a sufficient speed in order to “throw” the material pieces classified as belonging to one or more specific wrought aluminum alloys onto a following inclined conveyor system 1605.
- the other wrought aluminum alloy(s) may be ejected by a sorting device 1621 onto a lower positioned conveyor system 1607.
- such a sorting device 1621 may be an air jet nozzle such as described herein, which is actuated to eject a material piece classified as belonging to one or more specific wrought aluminum alloy(s) from the normal trajectory of material pieces being “thrown” from the end of the conveyor system 1604 onto the conveyor system 1605.
- the classified material pieces may be conveyed into a bin or receptacle 1631.
- the material pieces classified as belonging to the one or more specific wrought aluminum alloy(s) may be conveyed past a sensor system 1612, which may be configured to identify and classify those material pieces that contain a threshold amount of a specific material in order to classify a specific wrought aluminum alloy that is known to contain such a specific material.
- the cast aluminum alloy(s) previously sorted out by the sorter 1620 may be conveyed by the conveyor system 1606 past an XRF system as described herein in order to classify/sort out certain specific cast alloy fractions.
- Cast aluminum alloy 319 has a single large copper peak observable in its XRF spectrum
- cast aluminum alloy 356 does not have such a large copper peak
- cast aluminum alloy 380 has both large copper and zinc peaks. These large differences can be utilized by an XRF system to sort between these cast aluminum alloys with high accuracy. Classifying/sorting of cast fractions is further disclosed in U.S. Published Patent Application No. 2021/0229133, which is hereby incorporated by reference herein.
- the conveyor systems 1605 and 1608 may be configured to operate in a similar manner as the conveyor systems 1603 and 1604, the sorter 1622 may be configured to operate in a similar manner as the sorters 1620, 1621, and the bins 1632, 1633 may be configured similarly as the bins 1630, 1631.
- system and process 1600 is not limited to one line of conveyor systems, but may be expanded to multiple lines each ejecting classified material pieces onto multiple conveyor systems (e.g., conveyor systems 1606... 1608). Likewise, one or more of the conveyor systems 1606... 1608 may be implemented with any number of additional sensor systems to further classify those material pieces.
- embodiments of the present disclosure are not limited to the sorting of aluminum alloys, but may be configured to sort any number of different classes of materials, including, but not limited to, the sorting of various metals (e.g., copper, brass, zinc, aluminum, etc.) from Zorba.
- various metals e.g., copper, brass, zinc, aluminum, etc.
- FIG. 8 a block diagram illustrating a data processing (“computer”) system 3400 is depicted in which aspects of embodiments of the disclosure may be implemented.
- the computer system 107, the automation control system 108, aspects of the sensor system(s) 120, and/or the vision system 110 may be configured similarly as the computer system 3400.
- the computer system 3400 may employ a local bus 3405 (e.g., a peripheral component interconnect (“PCI”) local bus architecture). Any suitable bus architecture may be utilized such as Accelerated Graphics Port (“AGP”) and Industry Standard Architecture (“ISA”), among others.
- AGP Accelerated Graphics Port
- ISA Industry Standard Architecture
- One or more processors 3415, volatile memory 3420, and non-volatile memory 3435 may be connected to the local bus 3405 (e.g., through a PCI Bridge (not shown)).
- An integrated memory controller and cache memory may be coupled to the one or more processors 3415.
- the one or more processors 3415 may include one or more central processor units and/or one or more graphics processor units and/or one or more tensor processing units. Additional connections to the local bus 3405 may be made through direct component interconnection or through add-in boards.
- a communication (e.g., network (LAN)) adapter 3425, an I/O (e.g., small computer system interface (“SCSI”) host bus) adapter 3430, and expansion bus interface (not shown) may be connected to the local bus 3405 by direct component connection.
- An audio adapter (not shown), a graphics adapter (not shown), and display adapter 3416 (coupled to a display 3440) may be connected to the local bus 3405 (e.g., by add-in boards inserted into expansion slots).
- the computer system 3400 may be a stand-alone system configured to be bootable without relying on some type of network communication interface, whether or not the computer system 3400 includes some type of network communication interface.
- the computer system 3400 may be an embedded controller, which is configured with ROM and/or flash ROM providing non-volatile memory storing operating system files or user-generated data.
- a computer readable storage medium may be, for example, but not limited to, an electronic, magnetic, optical, electromagnetic, infrared, biologic, atomic, or semiconductor system, apparatus, controller, or device, or any suitable combination of the foregoing, wherein the computer readable storage medium is not a transitory signal per se. More specific examples (a non-exhaustive list) of the computer readable storage medium may include the following: an electrical connection having one or more wires, a portable computer diskette, a hard disk, a random access memory (“RAM”) (e.g., RAM 3420 of FIG. 8), a read-only memory (“ROM”) (e.g., ROM 3435 of FIG.
- RAM random access memory
- ROM read-only memory
- the remote computer system may be connected to the user’s computer system through any type of network, including a local area network (“LAN”) or a wide area network (“WAN”), or the connection may be made to an external computer system (for example, through the Internet using an Internet Service Provider).
- LAN local area network
- WAN wide area network
- various aspects of the present disclosure may be configured to execute on one or more of the computer system 107, automation control system 108, the vision system 110, and aspects of the sensor system(s) 120.
- program instructions may also be stored in a computer readable storage medium that can direct a computer system, other programmable data processing apparatus, controller, or other devices to function in a particular manner, such that the instructions stored in the computer readable medium produce an article of manufacture including instructions which implement the function/act specified in the flowchart and/or block diagram block or blocks.
- the program instructions may also be loaded onto a computer, other programmable data processing apparatus, controller, or other devices to cause a series of operational steps to be performed on the computer, other programmable apparatus or other devices to produce a computer implemented process such that the instructions which execute on the computer or other programmable apparatus provide processes for implementing the functions/acts specified in the flowchart and/or block diagram block or blocks.
- Embodiments of the present disclosure provide an apparatus for handling a first mixture of materials that includes a plurality of different classes of materials, wherein the apparatus includes an image sensor configured to capture visually observed characteristics of each of the first mixture of materials; and a data processing system that includes a machine learning system implementing a neural network configured with a previously generated set of neural network parameters to classify a first plurality of materials of the first mixture as belonging to a first class of materials based on the captured visually observed characteristics, wherein the previously generated set of neural network parameters are uniquely associated with the first class of materials, wherein the plurality of materials of the first mixture classified as belonging to the first class of materials possess a chemical composition that is different from the materials within the first mixture not classified as belonging to the first class of materials.
- the previously generated set of neural network parameters uniquely associated with the first class of materials may be generated from captured visually observed characteristics of one or more samples of the first class of materials.
- the previously generated set of neural network parameters may be produced in a training stage in which an artificial intelligence system implementing a neural network processed visual images of a control set of materials representing the first class of materials.
- the previously generated set of neural network parameters may be designated to represent visually discernible characteristics that are indicative of the chemical composition possessed by the first class of materials.
- the apparatus may further include a first sorter configured to sort the classified first plurality of materials of the first mixture from the first mixture as a function of the classifying of the first plurality of materials of the first mixture, wherein the first mixture of materials includes cast aluminum alloys and wrought aluminum alloys, wherein the first class of materials is wrought aluminum alloys, wherein the classified first plurality of materials includes first and second different wrought aluminum alloys; a Laser Induced Breakdown Spectroscopy (“LIBS”) system configured to classify a second plurality of materials of the classified first plurality of materials as belonging to one of the first and second different wrought aluminum alloys; and a second sorter configured to sort the classified second plurality of materials from the classified first plurality of materials as a function of the classifying of the second plurality of materials with the LIBS system.
- LIBS Laser Induced Breakdown Spectroscopy
- the method may further includes sorting the certain ones of the first heterogeneous mixture of materials from the first heterogeneous mixture as a function of the first classification, wherein the sorting produces a second heterogeneous mixture of materials that includes the first heterogeneous mixture of materials minus the sorted certain ones of the first heterogeneous mixture of materials; assigning, with a LIBS system, a second classification to certain ones of the second heterogeneous mixture of materials as belonging to a second type of materials; and sorting the certain ones of the second heterogeneous mixture of materials from the second heterogeneous mixture as a function of the second classification.
- the method may further include sorting the certain ones of the first heterogeneous mixture of materials from the first heterogeneous mixture as a function of the first classification, wherein the sorting produces a second heterogeneous mixture of materials that includes the first heterogeneous mixture of materials minus the sorted certain ones of the first heterogeneous mixture of materials; assigning, with an XRF system, a second classification to certain ones of the second heterogeneous mixture of materials as belonging to a second type of materials; and sorting the certain ones of the second heterogeneous mixture of materials from the second heterogeneous mixture as a function of the second classification.
- the previously generated set of neural network parameters may be produced from a previously generated classification of a control sample of the first type of materials.
- the method may further include sorting the certain ones of the first heterogeneous mixture of materials from the first heterogeneous mixture as a function of the first classification, wherein the certain ones of the first heterogeneous mixture of materials includes first and second different wrought aluminum alloys, wherein the first heterogeneous mixture of materials may include cast aluminum alloys and wrought aluminum alloys, wherein the first type of materials is wrought aluminum alloys; classifying, with a LIBS system, a plurality of materials of the certain ones of the first heterogeneous mixture of materials as belonging to one of the first and second different wrought aluminum alloys; and sorting the classified plurality of materials from the certain ones of the first heterogeneous mixture of materials as a function of the classifying of the plurality of materials with the LIBS system.
- the method may further include sorting the certain ones of the first heterogeneous mixture of materials from the first heterogeneous mixture as a function of the first classification, wherein the sorting of the certain ones of the first heterogeneous mixture of materials from the first heterogeneous mixture produces a second heterogeneous mixture of materials that includes the first heterogeneous mixture minus the certain ones of the first heterogeneous mixture of materials, wherein the second heterogeneous mixture of materials includes cast aluminum material pieces containing a plurality of different cast aluminum alloys, wherein the first type of materials is wrought aluminum alloys; classifying, with an XRF system, certain ones of the second heterogeneous mixture as belonging to a first specific cast aluminum alloy as a function of spectral data produced by the XRF system; and sorting the certain ones of the second heterogeneous mixture from the second heterogeneous mixture as a function of the classifying of the certain ones of the second heterogeneous mixture by the XRF system, wherein the sorting of the certain ones of the second heterogene
- the previously generated set of neural network parameters may be produced from a previously generated classification of a control sample of the first type of materials.
- the captured characteristics may be visually observed characteristics captured by a camera, wherein the previously generated set of neural network parameters may be designated to represent visually discernible characteristics that are indicative of the chemical composition possessed by the first class of materials.
- the computer program product may further include directing sorting of the first plurality of materials of the first mixture from the first mixture as a function of the first classification, wherein the first plurality of materials includes a plurality of different cast aluminum alloys, wherein the first class of materials is cast aluminum alloys; receiving from an XRF system a second classification assigned to certain ones of the first plurality of materials as belonging to a first specific cast aluminum alloy as a function of spectral data produced by the XRF system; and directing sorting of the certain ones of the first plurality of materials from the first plurality of materials as a function of the second classification, wherein the sorting of the first plurality of materials from the first plurality of materials produces a second mixture of materials, wherein the second mixture includes materials belonging to a second specific cast aluminum alloy different from the first specific cast aluminum alloy.
- the term “or” may be intended to be inclusive, wherein “A or B” includes A or B and also includes both A and B.
- the term “and/or” when used in the context of a listing of entities refers to the entities being present singly or in combination.
- the phrase “A, B, C, and/or D” includes A, B, C, and D individually, but also includes any and all combinations and subcombinations of A, B, C, and D.
- substantially refers to a degree of deviation that is sufficiently small so as to not measurably detract from the identified property or circumstance.
- the exact degree of deviation allowable may in some cases depend on the specific context.
- the term “about,” when referring to a value or to an amount of mass, weight, time, volume, concentration or percentage is meant to encompass variations of in some embodiments ⁇ 20%, in some embodiments ⁇ 10%, in some embodiments ⁇ 5%, in some embodiments ⁇ 1%, in some embodiments ⁇ 0.5%, and in some embodiments ⁇ 0.1% from the specified amount, as such variations are appropriate to perform the disclosed method.
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Abstract
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| EP22877056.6A EP4408593A4 (en) | 2021-09-30 | 2022-02-17 | MULTI-STAGE SORTING |
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| CA (1) | CA3233146A1 (en) |
| MX (1) | MX2024003915A (en) |
| WO (1) | WO2023055418A1 (en) |
Cited By (2)
| Publication number | Priority date | Publication date | Assignee | Title |
|---|---|---|---|---|
| CN117110215A (en) * | 2023-10-18 | 2023-11-24 | 肇庆市大正铝业有限公司 | Intelligent identification method and system for aluminum alloy raw materials |
| JP7793002B1 (en) | 2024-08-30 | 2025-12-26 | 旭化成株式会社 | Prediction system, prediction method, and program |
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| US6313423B1 (en) * | 1996-11-04 | 2001-11-06 | National Recovery Technologies, Inc. | Application of Raman spectroscopy to identification and sorting of post-consumer plastics for recycling |
| US20170232479A1 (en) * | 2016-02-16 | 2017-08-17 | Schuler Pressen Gmbh | Device and method for processing metal parent parts and for sorting metal waste parts |
| US20180243800A1 (en) * | 2016-07-18 | 2018-08-30 | UHV Technologies, Inc. | Material sorting using a vision system |
| WO2021089602A1 (en) * | 2019-11-04 | 2021-05-14 | Tomra Sorting Gmbh | Neural network for bulk sorting |
| US11278937B2 (en) * | 2015-07-16 | 2022-03-22 | Sortera Alloys, Inc. | Multiple stage sorting |
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| US11964304B2 (en) * | 2015-07-16 | 2024-04-23 | Sortera Technologies, Inc. | Sorting between metal alloys |
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2022
- 2022-02-17 CN CN202280078372.9A patent/CN118401318A/en active Pending
- 2022-02-17 WO PCT/US2022/016869 patent/WO2023055418A1/en not_active Ceased
- 2022-02-17 MX MX2024003915A patent/MX2024003915A/en unknown
- 2022-02-17 JP JP2024519723A patent/JP2024540821A/en active Pending
- 2022-02-17 EP EP22877056.6A patent/EP4408593A4/en not_active Withdrawn
- 2022-02-17 KR KR1020247013953A patent/KR20240090253A/en active Pending
- 2022-02-17 CA CA3233146A patent/CA3233146A1/en active Pending
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| Publication number | Priority date | Publication date | Assignee | Title |
|---|---|---|---|---|
| US6313423B1 (en) * | 1996-11-04 | 2001-11-06 | National Recovery Technologies, Inc. | Application of Raman spectroscopy to identification and sorting of post-consumer plastics for recycling |
| US11278937B2 (en) * | 2015-07-16 | 2022-03-22 | Sortera Alloys, Inc. | Multiple stage sorting |
| US20170232479A1 (en) * | 2016-02-16 | 2017-08-17 | Schuler Pressen Gmbh | Device and method for processing metal parent parts and for sorting metal waste parts |
| US20180243800A1 (en) * | 2016-07-18 | 2018-08-30 | UHV Technologies, Inc. | Material sorting using a vision system |
| WO2021089602A1 (en) * | 2019-11-04 | 2021-05-14 | Tomra Sorting Gmbh | Neural network for bulk sorting |
Cited By (3)
| Publication number | Priority date | Publication date | Assignee | Title |
|---|---|---|---|---|
| CN117110215A (en) * | 2023-10-18 | 2023-11-24 | 肇庆市大正铝业有限公司 | Intelligent identification method and system for aluminum alloy raw materials |
| CN117110215B (en) * | 2023-10-18 | 2024-04-02 | 肇庆市大正铝业有限公司 | Intelligent identification method and system for aluminum alloy raw materials |
| JP7793002B1 (en) | 2024-08-30 | 2025-12-26 | 旭化成株式会社 | Prediction system, prediction method, and program |
Also Published As
| Publication number | Publication date |
|---|---|
| MX2024003915A (en) | 2024-04-26 |
| CA3233146A1 (en) | 2023-04-06 |
| KR20240090253A (en) | 2024-06-21 |
| EP4408593A4 (en) | 2024-12-25 |
| TW202316316A (en) | 2023-04-16 |
| CN118401318A (en) | 2024-07-26 |
| EP4408593A1 (en) | 2024-08-07 |
| JP2024540821A (en) | 2024-11-06 |
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