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A fuzzy neural approach for vehicle guidance in real2013time



In recent years, neural network has allured much attention of transportation studies due to its competence of addressing traffic complexity. However, design and implementation of such system remains intractable in terms of its opaqueness. Instead, adopting a knowledge-based approach, which can automatically generate a set of expert rules to model the problems, could be a possible solution. To this extent, we devised a fuzzy neural network strategy to optimize the route decision on urban roads in this paper. Our scheme works on an evolutionarily weighted network model, whose resource requirements are adequately alleviated. We also introduced a GA (Genetic Algorithm)-based learning algorithm to obtain the weights of fuzzy system and validated its performance by agent-based modeling.



Total Pages: 7
Pages: 13-19


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Volume: 23
Issue: 1
Year: 2016

Cite this document


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ISSN PRINT: 1079-8587
ISSN ONLINE: 2326-005X
DOI PREFIX: 10.31209
10.1080/10798587 with T&F
IMPACT FACTOR: 0.652 (2017/2018)
Journal: 1995-Present


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