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首页> 外文期刊>Expert systems with applications >A Pso Method With Nonlinear Time-varying Evolution Based On Neural Network For Design Of Optimal Harmonic Filters
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A Pso Method With Nonlinear Time-varying Evolution Based On Neural Network For Design Of Optimal Harmonic Filters

机译:基于神经网络的非线性时变演化的Pso方法设计最优谐波滤波器

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摘要

A particle swarm optimization method with nonlinear time-varying evolution based on neural network (PSO-NTVENN) is proposed to design large-scale passive harmonic filters (PHF) under abundant harmonic current sources. The goal is to minimize the cost of the filters, the filters loss, and the total harmonic distortion of currents and voltages at each bus, simultaneously. In the PSO-NTVENN method, parameters are determined by using a sequential neural network approximation. Meanwhile, based on the concept of multi-objective optimization, how to define the fitness function of the PSO to include different performance criteria is also discussed. To show the feasibility of the proposed method, illustrative examples of designing optimal passive harmonic filters for a chemical plant are presented.
机译:提出了一种基于神经网络(PSO-NTVENN)的具有非线性时变演化的粒子群优化方法,设计了在谐波电流源丰富的情况下的大型无源滤波器。目的是使滤波器成本,滤波器损耗以及每条总线上电流和电压的总谐波失真同时最小化。在PSO-NTVENN方法中,通过使用顺序神经网络逼近确定参数。同时,基于多目标优化的概念,还讨论了如何定义PSO的适应度函数以包含不同的性能标准。为了说明该方法的可行性,给出了为化工厂设计最佳无源谐波滤波器的示例。

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