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A collaborative optimized genetic algorithm based on regulation mechanism of neuroendocrine-immune system

机译:基于神经内分泌免疫系统调节机制的协同优化遗传算法

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In this paper, an improved collaborative optimized genetic algorithm (CGA) inspired from the modulation mechanism of neuroendocrine-immune system is presented. The CGA has several features as follows. The first is that the parent individuals are not involved in the copy process. The second is that more excellent individuals may be produced due to the adaptive crossover and variation probability based on the hormone modulation. In order to examine its performance, firstly, two typical test functions are selected as the simulation models. Then CGA is applied to an intelligent controller based on the modulation of epinephrine (EIC). The simulation results show that the CGA has quicker convergence rate and higher searching precision than that of immune genetic algorithm and normal genetic algorithm, and the EIC optimized has satisfactory control performance
机译:本文提出了一种改进的协同优化遗传算法(CGA),其受神经内分泌免疫系统的调节机制启发。 CGA具有以下几个功能。首先是父母个人不参与复制过程。第二个是由于基于激素调节的适应性交叉和变异概率,可以生产出更优秀的个体。为了检查其性能,首先,选择两个典型的测试功能作为仿真模型。然后将CGA应用于基于肾上腺素(EIC)调制的智能控制器。仿真结果表明,与免疫遗传算法和常规遗传算法相比,CGA具有更快的收敛速度和更高的搜索精度,优化后的EIC具有令人满意的控制性能。

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