利用改进的基于ann的SHE技术改善简化开关MLI的电能质量

IF 2.5 4区 计算机科学 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IETE Technical Review Pub Date : 2022-11-18 DOI:10.1080/02564602.2022.2143444
Shubhajit Pal, Rubell Sen Goopta, M. V, A. Bhattacharya
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引用次数: 0

摘要

提出了一种基于交叉连接源(CCS)的多电平逆变器(MLI),用于使用非对称开关产生“9”和13电平。减小开关CCS-MLI采用低频选择性谐波消除脉宽调制(SHE-PWM)策略进行控制。利用所提出的改进的类人工神经网络(ANN)结构,通过求解SHE方程来合成开关角。神经网络可以在没有任何初始数据的情况下,从随机的初始猜测点开始求解多个超越方程。这为现有技术增加了显著的改进,现有技术由于要求解的SHE方程数量的增加而受到严重影响。为了验证改进的人工神经网络的这些独特特征,实现了具有更高级别数的CCS-MLI。神经网络性能的提高和合理的收敛速度验证了所提控制的适用性。此外,在考虑THD作为性能参数的情况下,对电阻-电感负载的CCS-MLI进行了仿真。对于不同的调制指数(MI),所提出的逆变器的电能质量得到了改善,并且对于“9”和13电平的情况,THD显著较低。给出了硬件样机的实验结果。此外,将所提出的系统实现为独立光伏系统的中央逆变器,以测试其实际可行性。
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Power Quality Improvement of a Reduced Switch MLI Using a Modified ANN-Based SHE Technique
A cross-connected source (CCS) based multilevel inverter (MLI) is proposed for the generation of “9” and 13-levels using asymmetrical switching. The reduced switch CCS-MLI is controlled with a low frequency selective-harmonic-elimination pulse-width-modulation (SHE-PWM) strategy. The switching angles are synthesized by solving SHE equations utilizing the proposed modified artificial-neural-network (ANN) like architecture. The ANN can solve multiple transcendental equations starting from random initial guess points and without any initial data. This adds a significant improvement to the existing techniques that suffer severely with an increased number of SHE equations to be solved. To verify these unique features of the modified ANN, a CCS-MLI is realized with a higher number of levels. The enhanced performance and reasonable convergence rate of the ANN validate the suitability of the proposed control. Furthermore, CCS-MLI is simulated for resistive-inductive load considering THD as a performance parameter. The power quality improvement of the proposed inverter is shown for different modulation index (MI) and significantly low THD is reported for both “9” and 13-level case. Experimental results of a hardware prototype are also illustrated. Furthermore, the proposed system is implemented as a central inverter of standalone PV system to test its practical feasibility.
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来源期刊
IETE Technical Review
IETE Technical Review 工程技术-电信学
CiteScore
5.70
自引率
4.20%
发文量
48
审稿时长
9 months
期刊介绍: IETE Technical Review is a world leading journal which publishes state-of-the-art review papers and in-depth tutorial papers on current and futuristic technologies in the area of electronics and telecommunications engineering. We also publish original research papers which demonstrate significant advances.
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