Title :
Adaptive fuzzy systems for backing up a truck-and-trailer
Author :
Kong, S.-G. ; Kosko, Bart
Author_Institution :
Dept. of Electr. Eng., Univ. of Southern California, Los Angeles, CA, USA
fDate :
3/1/1992 12:00:00 AM
Abstract :
Fuzzy control systems and neural-network control systems for backing up a simulated truck, and truck-and-trailer, to a loading dock in a parking lot are presented. The supervised backpropagation learning algorithm trained the neural network systems. The robustness of the neural systems was tested by removing random subsets of training data in learning sequences. The neural systems performed well but required extensive computation for training. The fuzzy systems performed well until over 50% of their fuzzy-associative-memory (FAM) rules were removed. They also performed well when the key FAM equilibration rule was replaced with destructive, or `sabotage´, rules. Unsupervised differential competitive learning (DCL) and product-space clustering adaptively generated FAM rules from training data. The original fuzzy control systems and neural control systems generated trajectory data. The DCL system rapidly recovered the underlying FAM rules. Product-space clustering converted the neural truck systems into structured sets of FAM rules that approximated the neural system´s behavior
Keywords :
adaptive systems; computerised control; digital simulation; fuzzy logic; learning systems; neural nets; road vehicles; adaptive fuzzy systems; backing up; equilibration rule; fuzzy control systems; fuzzy-associative-memory; loading dock; neural-network control systems; parking lot; product-space clustering; robustness; simulated truck; supervised backpropagation learning algorithm; truck-and-trailer; unsupervised differential competitive learning; Adaptive systems; Backpropagation algorithms; Computational modeling; Control system synthesis; Fuzzy control; Fuzzy systems; Neural networks; Robustness; System testing; Training data;
Journal_Title :
Neural Networks, IEEE Transactions on