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Backtracking search optimization heuristics for nonlinear Hammerstein controlled auto regressive auto regressive systems

机译:非线性Hammerstein控制自动回归自累加系统的回溯搜索优化启发式

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In this work, novel application of evolutionary computational heuristics is presented for parameter identification problem of nonlinear Hammerstein controlled auto regressive auto regressive (NHCARAR) systems through global search competency of backtracking search algorithm (BSA), differential evolution (DE) and genetic algorithms (GAs). The mean squared error metric is used for the fitness function of NHCARAR system based on difference between actual and approximated design variables. Optimization of the cost function is conducted with BSA for NHCARAR model by varying degrees of freedom and noise variances. To verify and validate the worth of the presented scheme, comparative studies are carried out with its counterparts DE and GAs through statistical observations by means of weight deviation factor, root of mean squared error, and Thiel's inequality coefficient as well as complexity measures. (C) 2019 ISA. Published by Elsevier Ltd. All rights reserved.
机译:在这项工作中,通过全球搜索竞争力,差分演进(DE)和遗传算法(GAS )。 平均平方误差度量用于基于实际和近似设计变量之间的差异的NHCarar系统的健身功能。 通过不同程度的自由度和噪声差异,用BSA进行成本函数的优化。 为了验证和验证所提出的方案的价值,通过统计观察通过重量偏差因子,平均平均误差的根源以及避免的不等式系数以及复杂性措施,通过统计观察来进行比较研究。 (c)2019 ISA。 elsevier有限公司出版。保留所有权利。

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