用人工神经网络控制并联混合有源电力滤波器对配电系统进行电力调节

J. Somlal, M. Venu Gopala Rao
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引用次数: 8

摘要

研究了一种基于人工神经网络(ANN)控制器的并联混合有源电力滤波器(SHAPF),用于配电网谐波补偿。为了提高传统控制器(滞环控制器)的性能,并充分利用智能控制器的优势,在并联有源滤波器中引入了一种基于反向传播算法的前馈型人工神经网络技术,以产生IGBT逆变器所需的控制脉冲。该方法主要利用电容储能的原理维持并联滤波器直流链路电压,从而减少负载突变时的瞬态响应时间。在MATLAB中建立了该滤波技术的完整电力系统集模型。所开发的控制算法非常简单。利用MATLAB对该方案进行了仿真,结果表明,采用人工神经网络控制滤波器后,系统的THD %由29.71%降低到2.27%。仿真实验结果表明,该控制方法不仅易于计算和实现,而且在降低谐波方面取得了很好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power conditioning in distribution systems using ANN controlled Shunt Hybrid Active Power Filter
This paper focuses on an Artificial Neural Network (ANN) controller based Shunt Hybrid Active Power Filter (SHAPF) for compensating the harmonics of the distribution system. To enhance the performance of the conventional controller (Hysteresis controller) and to take advantage of intelligent controllers, a back propagation algorithm based feed forward-type ANN technique is implemented in shunt active power filter for producing the controlled pulses required for IGBT inverter. The proposed approach mainly work on the principle of energy stored by capacitor to maintain the DC link voltage of a shunt connected filter and thus reduces the transient response time when there is abrupt variation in the load. The complete power system set model of the proposed filter technique has been developed in MATLAB. The control algorithm developed is very simple. Simulations are carried out for the proposed scheme by using MATLAB, it is noticed that the %THD is reduced to 2.27% from 29.71% by ANN controlled filter. The simulated experimental results also show that the novel control method is not only easy to be computed and implemented, but also very successful in reducing harmonics.
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