An Evolutionary Computing Model Based on Parallel Architecture
we propose a Parallel evolutionary computing model, called CLA-EC, in this paper. In this new model, each genome is assigned to a cell of cellular learning automata to each of which a set of learning automata is assigned. The set of actions selected by the set of automata associated to a cell determines the genomes string for that cell. Based on a local rule, a reinforcement signal vector is generated and given to the set learning automata residing in the cell. Based on the received signal, each learning automaton updates its internal structure according to a learning algorithm. The process of action selection and updating the internal structure is repeated until a predetermined criterion is met. This model can be used to solve optimization problems. To show the effectiveness of the proposed model it has been used to solve several optimization problems such as real valued function optimization and clustering problems. Computer simulations have shown the effectiveness of this model.
Evolutionary Computing Genetic Algorithm Parallel Architecture
Xiaogang Wang Yan Bai Yue Li
Wuhan University of Science and Engineering Wuhan City, Hubei Province, China 430073
国际会议
成都
英文
416-419
2010-06-12(万方平台首次上网日期,不代表论文的发表时间)