Title :
Learning to achieve co-operation by temporal-spatial fitness sharing
Author :
Mikami, Sadayoshi ; Wada, Mitsuo ; Fogarty, Terence C.
Author_Institution :
Complex Syst. Eng., Hokkaido Univ., Sapporo, Japan
fDate :
29 Nov-1 Dec 1995
Abstract :
We propose a co-operative GA-based learning system that would make real-world heterogeneous agents feasible with the minimum amount of communication hardware. The problem is identical to a distributed GA implemented on processors connected by local and very slow communication lines. We have developed an extension of the fitness sharing method that incorporates sharing over temporally-spatially distributed populations. Restricting an agent´s task to the inter-agent conflict avoidance, this sharing is realised by exchanging estimated fitness values over all agents. The mechanism of finding conflict avoidance actions is similar to that of a self-organisation mechanism of a Kohonen-type network. Our results from simulations of a bump-avoidance task for multiple mobile robots show that it elicits a notable performance improvement compared to normal classifier systems
Keywords :
cooperative systems; genetic algorithms; learning (artificial intelligence); learning systems; search problems; self-organising feature maps; software agents; bump-avoidance task; classifier systems; communication hardware; cooperative based learning system; distributed agents; distributed genetic algorithm; fitness values; genetic algorithm; heterogeneous agents; interagent conflict avoidance; learning; multiple mobile robots; self-organising neural network; simulations; temporal-spatial fitness sharing; Collision avoidance; Data communication; Delay; Hardware; Learning systems; Mobile communication; Mobile robots; Navigation; Protocols; Robot sensing systems;
Conference_Titel :
Evolutionary Computation, 1995., IEEE International Conference on
Conference_Location :
Perth, WA
Print_ISBN :
0-7803-2759-4
DOI :
10.1109/ICEC.1995.487489