Neural learning algorithm based power quality enhancement for three phase three wire distribution system utilizing shunt active power filter strategy

A. Kumar, P. Raj
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引用次数: 11

Abstract

This paper explores the application of artificial intelligence on solving the power quality problems by using the shunt active power filter strategy for three phase three wire distribution system. The unit vector template generation control technique is modeled as current controller for the shunt active power filter strategy. The proportional and integral (PI) controller is designed to minimize error between the actual and the reference DC voltage of shunt active power filter strategy. The transient period and peak overshoot of DC bus voltage using a PI controller is observed to be higher in initial and load change conditions. The artificial neural network is a powerful tool used to generate the current signal with very low oscillation and faster settling time. In this paper, a new neural learning algorithm (NAL) is proposed for the current controller of the shunt active power filter strategy. The performance of the proposed neural learning algorithm is extensively analyzed of diode rectifier RL non linear load with respect to two different operating conditions. The proposed system is designed with MATLAB/Simulink environment.
基于神经学习算法的三相三线配电网并联有源滤波电能质量增强
本文探讨了人工智能在三相三线制配电系统中采用并联有源电力滤波策略解决电能质量问题中的应用。将单位矢量模板生成控制技术建模为并联有源电力滤波器的电流控制器。为了减小并联有源电力滤波策略的实际直流电压与参考直流电压之间的误差,设计了比例积分(PI)控制器。在初始和负载变化条件下,使用PI控制器的直流母线电压的瞬态时间和峰值超调量都更高。人工神经网络是一种强大的工具,可以产生振荡小、稳定时间快的电流信号。本文提出了一种新的神经学习算法(NAL)用于并联有源电力滤波器策略的电流控制器。针对二极管整流器RL非线性负载在两种不同工况下的性能进行了分析。该系统是在MATLAB/Simulink环境下设计的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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