Juang, 2004 - Google Patents
Temporal problems solved by dynamic fuzzy network based on genetic algorithm with variable-length chromosomesJuang, 2004
View PDF- Document ID
- 17674543059443431760
- Author
- Juang C
- Publication year
- Publication venue
- Fuzzy Sets and Systems
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In this paper, a dynamic fuzzy network and its design based on genetic algorithm with variable-length chromosomes is proposed. First, the dynamic fuzzy network constituted from a series of dynamic fuzzy if–then rules is proposed. One characteristic of this network is its …
- 210000000349 Chromosomes 0 title abstract description 50
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