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ROBUST IDENTIFICATION AND PREDICTION USING WILCOXON NORM AND PARTICLE SWARM OPTIMIZATION

机译:使用Wilcoxon规范和粒子群优化的鲁棒识别和预测

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The paper introduces a novel method of robust identification of complex plants and prediction of bench mark time series. It is assumed that training samples used contain strong outliers and the cost function chosen in the proposed model is a robust norm called Wilcoxon norm. The weights of the models are updated using population based PSO technique which progressively reduces the robust norm. To demonstrate the robust performance of the proposed technique standard identification and prediction problems are simulated and the results are compared with those obtained by conventional MSE norm based minimization method. A significant improvement in performance is observed in all cases.
机译:本文介绍了一种新颖的复杂植物稳定识别方法和替补标记时间序列的预测。假设使用的培训样本包含强异常值,并且在所提出的模型中选择的成本函数是一种称为Wilcoxon Norm的强大规范。使用基于群体的PSO技术更新模型的权重,其逐步降低了稳健的规范。为了证明所提出的技术标准识别和预测问题的稳健性能,并将结果与​​基于MSE Norm基于最小化方法获得的结果进行比较。在所有情况下都观察到性能的显着改善。

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