Neural Network Based ILST Control Strategy for a DSTATCOM with Solar Photovoltaic System for Power Quality Improvement

J. Jayachandran, S. Malathi
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引用次数: 1

Abstract

The power quality compensator chosen in this paper is a DSTATCOM which integrates a three phase four leg Voltage Source Converter (VSC) with a DC capacitor (Cdc). A single stage Solar Photovoltaic (SPV) system is implemented for maintaining the DC link voltage (Vdc) of the Shunt Active Power Filter (SAPF). The system proposed, improves the Power Quality (PQ) of the utility system as well as feeds the solar energy extracted into the system. Maximum Power Point Tracking (MPPT) is implemented to excerpt solar energy. The purpose of the proposed system is to mitigate harmonics and neutral current (Isn),to compensate reactive power and to maintain power factor near unity. The SAPF improves the PQ of the proposed system. The control algorithm proposed for SAPF is Neural Network (NN) based Improved Linear Sinusoidal Tracer (ILST) algorithm. An instantaneous compensation technique controls the variations in PV power of the SPV system with fast dynamic response. The proposed system is also compared with battery operated Boost Converter (BC) SPV fed SAPF system. The battery operated SPV system boost the DC link voltage and thus improves PQ throughout the day. The NN based control strategy and the SPV system are modeled, developed and validated in MATLAB SIMULINK. The simulation results justify the effectiveness of the propounded system.
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基于神经网络的太阳能光伏系统DSTATCOM ILST控制策略
本文选择的电能质量补偿器是一个DSTATCOM,它集成了一个三相四支路电压源转换器(VSC)和一个直流电容器(Cdc)。单级太阳能光伏(SPV)系统用于维持并联有源电力滤波器(SAPF)的直流链路电压(Vdc)。所提出的系统提高了公用事业系统的电能质量(PQ),并将提取的太阳能输送到系统中。最大功率点跟踪(MPPT)用于提取太阳能。所提出的系统的目的是减轻谐波和中性电流(is),补偿无功功率并保持功率因数接近一。SAPF改进了所提出的系统的PQ。SAPF的控制算法是基于神经网络的改进线性正弦跟踪算法。瞬时补偿技术以快速动态响应控制SPV系统的光伏功率变化。该系统还与电池供电的升压转换器(BC)SPV供电的SAPF系统进行了比较。电池操作的SPV系统提高直流链路电压,从而提高全天的PQ。在MATLAB SIMULINK中对基于神经网络的控制策略和SPV系统进行了建模、开发和验证。仿真结果证明了所提系统的有效性。
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来源期刊
International Review of Automatic Control
International Review of Automatic Control Engineering-Control and Systems Engineering
CiteScore
2.70
自引率
0.00%
发文量
17
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