基于自适应算子的大选择压力遗传算法调节神经控制器权值

B. Lacevic, S. Konjicija, Z. Avdagić
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引用次数: 5

摘要

本文研究了前馈神经网络对复杂物体的控制能力。神经控制器采用自适应变异和交叉概率的遗传算法进行训练。提出了一种特定的主动选择算子模型,并提出了一种交叉率和突变率协同进化的方法。同时,比较了不同的算子自适应机制对控制器性能的影响。最后,给出了测量对象(液压驱动双关节机械臂)的测量结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Great selection pressure genetic algorithm with adaptive operators for adjusting the weights of neural controller
In this paper, capabilities of a feed-forward neural network regarding control of the complex object are investigated. Neural controllers have been trained by a genetic algorithm with adaptive mutation and crossover probabilities. A specific model of aggressive selection operator is proposed along with one way of co-evolution of the crossover and mutation rates. Also, different mechanisms of operator adaptation were compared in sense of resulting controller performance. Finally, the measurement results, taken from the object (hydraulically driven two-joint robot arm) are presented.
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