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D. P. P. Meddage
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A novel approach to explain the black-box nature of machine learning in compressive strength predictions of concrete using Shapley additive explanations (SHAP)
IU Ekanayake, DPP Meddage, U Rathnayake
Case Studies in Construction Materials 16, e01059, 2022
5552022
Adapting cities to the surge: A comprehensive review of climate-induced urban flooding
G Dharmarathne, AO Waduge, M Bogahawaththa, U Rathnayake, ...
Results in Engineering 22, 102123, 2024
1722024
Advancing water quality assessment and prediction using machine learning models, coupled with explainable artificial intelligence (XAI) techniques like shapley additive …
RK Makumbura, L Mampitiya, N Rathnayake, DPP Meddage, S Henna, ...
Results in Engineering 23, 102831, 2024
1352024
Adapting cities to the surge: A comprehensive review of climate-induced urban flooding
G Dharmarathne, AO Waduge, M Bogahawaththa, U Rathnayake, ...
Results in Engineering, 102123, 2024
115*2024
A review of machine learning (ML) and explainable artificial intelligence (XAI) methods in additive manufacturing (3D Printing)
J Ukwaththa, S Herath, DPP Meddage
Materials Today Communications 41, 110294, 2024
1012024
Explainable Machine Learning (XML) to predict external wind pressure of a low-rise building in urban-like settings
DPP Meddage, IU Ekanayake, AU Weerasuriya, CS Lewangamage, ...
Journal of Wind Engineering and Industrial Aerodynamics 226, 105027, 2022
1012022
A novel explainable AI-based approach to estimate the natural period of vibration of masonry infill reinforced concrete frame structures using different machine learning techniques
P Thisovithan, H Aththanayake, DPP Meddage, IU Ekanayake, ...
Results in Engineering 19, 101388, 2023
882023
Evaluating expressway traffic crash severity by using logistic regression and explainable & supervised machine learning classifiers
JPSS Madushani, RMK Sandamal, DPP Meddage, HR Pasindu, ...
Transportation Engineering 13, 100190, 2023
742023
Modeling strength characteristics of basalt fiber reinforced concrete using multiple explainable machine learning with a graphical user interface
W Kulasooriya, RSS Ranasinghe, US Perera, P Thisovithan, ...
Scientific Reports 13 (1), 13138, 2023
642023
Interpretation of machine-learning-based (black-box) wind pressure predictions for low-rise gable-roofed buildings using Shapley additive explanations (SHAP)
P Meddage, I Ekanayake, US Perera, HM Azamathulla, MA Md Said, ...
Buildings 12 (6), 734, 2022
602022
A simplified mathematical formulation for water quality index (WQI): A case study in the Kelani River Basin, Sri Lanka
R Makubura, DPP Meddage, HM Azamathulla, M Pandey, U Rathnayake
Fluids 7 (5), 147, 2022
572022
Predicting transient wind loads on tall buildings in three-dimensional spatial coordinates using machine learning
DPP Meddage, D Mohotti, K Wijesooriya
Journal of Building Engineering 85, 108725, 2024
562024
Modeling streamflow in non-gauged watersheds with sparse data considering physiographic, dynamic climate, and anthropogenic factors using explainable soft computing techniques
C Madhushani, K Dananjaya, IU Ekanayake, DPP Meddage, ...
Journal of Hydrology 631, 130846, 2024
512024
Exploring the applicability of expanded polystyrene (EPS) based concrete panels as roof slab insulation in the tropics
DPP Meddage, A Chadee, MTR Jayasinghe, U Rathnayake
Case Studies in Construction Materials 17, e01361, 2022
512022
An explainable machine learning approach to predict the compressive strength of graphene oxide-based concrete
DPP Meddage, I Fonseka, D Mohotti, K Wijesooriya, CK Lee
Construction and Building Materials 449, 138346, 2024
502024
Eco-friendly mix design of slag-ash-based geopolymer concrete using explainable deep learning
RSS Ranasinghe, W Kulasooriya, US Perera, IU Ekanayake, ...
Results in Engineering 23, 102503, 2024
482024
Predicting adhesion strength of micropatterned surfaces using gradient boosting models and explainable artificial intelligence visualizations
IU Ekanayake, S Palitha, S Gamage, DPP Meddage, K Wijesooriya, ...
Materials Today Communications 36, 106545, 2023
452023
A new frontier in streamflow modeling in ungauged basins with sparse data: a modified generative adversarial network with explainable AI
U Perera, DTS Coralage, IU Ekanayake, J Alawatugoda, DPP Meddage
Results in Engineering 21, 101920, 2024
422024
Predicting bulk average velocity with rigid vegetation in open channels using tree-based machine learning: A novel approach using explainable artificial intelligence
DPP Meddage, IU Ekanayake, S Herath, R Gobirahavan, N Muttil, ...
Sensors 22 (12), 4398, 2022
402022
A novel approach to explain the black-box nature of machine learning in compressive strength predictions of concrete using Shapley additive explanations (SHAP), Case Stud …
IU Ekanayake, DPP Meddage, U Rathnayake
39*
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