Wu Sitao, Chow Tommy W S
Department of Electronic Engineering, City University of Hong Kong, Kowloon SAR, Hong Kong.
IEEE Trans Neural Netw. 2007 Mar;18(2):385-96. doi: 10.1109/TNN.2006.887556.
A self-organizing and self-evolving agents (SOSENs) neural network is proposed. Each neuron of the SOSENs evolves itself with a simulated annealing (SA) algorithm. The self-evolving behavior of each neuron is a local improvement that results in speeding up the convergence. The chance of reaching the global optimum is increased because multiple SAs are run in a searching space. Optimum results obtained by the SOSENs are better in average than those obtained by a single SA. Experimental results show that the SOSENs have less temperature changes than the SA to reach the global minimum. Every neuron exhibits a self-organizing behavior, which is similar to those of the self-organizing map (SOM), particle swarm optimization (PSO), and self-organizing migrating algorithm (SOMA). At last, the computational time of parallel SOSENs can be less than the SA.
提出了一种自组织自进化智能体(SOSENs)神经网络。SOSENs的每个神经元都通过模拟退火(SA)算法进行自我进化。每个神经元的自我进化行为是一种局部改进,从而加快了收敛速度。由于在搜索空间中运行多个SA,因此增加了达到全局最优的机会。SOSENs获得的最优结果平均比单个SA获得的结果更好。实验结果表明,SOSENs在达到全局最小值时的温度变化比SA小。每个神经元都表现出一种自组织行为,这与自组织映射(SOM)、粒子群优化(PSO)和自组织迁移算法(SOMA)的行为相似。最后,并行SOSENs的计算时间可以比SA少。