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Research on the Genetic Algorithm Simulating Human Reproduction Mode and its Blending Application with Neural Network

机译:模拟人类再生模式的遗传算法及其与神经网络混合应用的研究

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In this study, a genetic algorithm simulating human reproduction mode (HRGA) is proposed. The genetic operators of HRGA include selection operator, help operator, crossover operator and mutation operator. The sex feature, age feature and consanguinity feature of genetic individuals are considered. Two individuals with opposite sex can reproduce the next generation if they are distant consanguinity individuals and their age is allowable. Based on this genetic algorithm, an improved evolutionary neural network algorithm named HRGA-BP algorithm is formed. In HRGA-BP algorithm, HRGA is used firstly to evolve and design the structure, the initial weights and thresholds, the training ratio and momentum factor of neural network roundly. Then, training samples are used to search for the optimal solution by the evolutionary neural network. HRGA-BP algorithm is used in motor fault diagnosis. The illustrational results show that HRGA-BP algorithm is better than traditional neural network algorithms in both speed and precision of convergence, and its validity in fault diagnosis is proved.
机译:在这项研究中,遗传算法模拟人类再现模式(HRGA)提出。 HRGA的遗传操作包括选择经营者,帮助运营商,交叉和变异算。遗传个体的性别特征,年龄特征和血缘特征的考虑。两个人与异性能重现下一代,如果他们是遥远的血缘关系的个人和自己的年龄是允许的。基于此遗传算法,形成命名HRGA-BP的改进的进化神经网络算法的算法。在HRGA-BP算法,HRGA首先用于进化和全面设计的结构中,初始权值和阈值,训练比和动量因子神经网络。然后,训练样本被用于搜索由进化神经网络的最优解。 HRGA-BP算法在电动机故障诊断。该illustrational结果表明,HRGA-BP算法优于在速度和收敛精度传统的神经网络算法及其在故障诊断中的有效性证明。

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