Back to Search Start Over

A hybrid algorithm for driving behavioral decision-making: integrating fuzzy classification with neural networks.

Authors :
Li, H. L.
Xu, Y.
Huang, Y. X.
Zeng, X. K.
Xu, W.
Xia, H. Y.
Source :
Advances in Transportation Studies; Jul2024, Vol. 63, p133-142, 10p
Publication Year :
2024

Abstract

In addressing challenges associated with behavioural decision-making in intelligent driving, a hybrid algorithm, merging fuzzy classification with neural networks (termed the FC-NN Decision-Making methodology), has been introduced. Features from the driving environment, such as vehicle speed and relative distance, were systematically extracted. Using established traffic rules and vehicular performance metrics, a database linking the driving environment to decision outcomes was formulated. Through defined classification rules, fuzzy categorisation was applied, upon which training was subsequently conducted via NNs. This led to the design of an efficient Fuzzy-NN Decision-maker. Analyses demonstrated that the introduced method yielded an accuracy rate of 94%, markedly surpassing the accuracies of both the RBF NN decision-making at 56% and the direct NN approach at 76%. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
18245463
Volume :
63
Database :
Complementary Index
Journal :
Advances in Transportation Studies
Publication Type :
Academic Journal
Accession number :
177054094