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An enhanced GA technique for system training and prognostics

机译:用于系统训练和预测的增强型GA技术

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The commonly used genetic algorithm (GA)-based methods have some shortcomings in applications such as time-consuming and slow convergence. A novel enhanced genetic algorithm (EGA) technique is developed in this paper to overcome these problems in classical GA methods so as to provide a more efficient technique for system training and optimization. Two approaches are proposed in the EGA technique: Firstly, a novel group-based branch crossover operator is suggested to thoroughly explore local space and speed up convergence. Secondly, an enhanced MPT (Makinen-Periaux-Toivanen) mutation operator is proposed to promote global search capability. The effectiveness of the developed EGA is verified by simulations based on a series of benchmark test problems. The EGA technique is also implemented to train a neural-fuzzy predictor for real-time gear system monitoring. Test results show that the branch crossover operator and enhanced MPT mutation operator can effectively improve the convergence speed and global search capability. The EGA technique outperforms other related GA methods with respect to convergence speed and global search capability.
机译:常用的基于遗传算法(GA)的方法在应用中存在一些缺点,例如耗时且收敛缓慢。为了克服传统遗传算法的这些问题,本文提出了一种新的增强遗传算法(EGA)技术,为系统的训练和优化提供了更为有效的技术。 EGA技术中提出了两种方法:首先,提出了一种新颖的基于组的分支交叉算子以彻底探索局部空间并加快收敛速度​​。其次,提出了一种增强的MPT(Makinen-Periaux-Toivanen)变异算子,以提高全局搜索能力。基于一系列基准测试问题的仿真验证了开发的EGA的有效性。 EGA技术还用于训练神经模糊预测器以进行实时齿轮系统监控。测试结果表明,分支交叉算子和增强型MPT变异算子可以有效提高收敛速度和全局搜索能力。在收敛速度和全局搜索能力方面,EGA技术优于其他相关的GA方法。

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