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Shunt Active Filtering with NARX Feedback Neural Networks Based Reference Current Generation

机译:基于NARX反馈神经网络的分流主动滤波基于参考电流

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This paper proposes a nonlinear autoregressive exogenous (NARX) feedback neural networks (NN) based reference current generation (RCG) scheme for 3-phase shunt active filter (SAF). NARX feedback NN is employed to implement the frequency independent RCG scheme. Usually, such schemes need to be individually implemented for each phase resulting in increased complexity. Alternately, NARX feedback NN processes the 3-phase current quantities and unit vector templates (UVT) for the estimation of fundamental active component of load current, compensating currents and consequently, reference source currents. The inputs for NARX feedback NN are the previous two sample of the estimated compensating current and fundamental active component of the load current, along with the present and the previous samples of load current and UVT. The control system ensures that the source currents match the respective reference values resulting in total harmonic distortion less than 5% and unity power factor at the supply end. Thus, with the proposed scheme, the SAF eliminates current harmonics, and compensates for the reactive power and load unbalancing. The performance of SAF with NARX feedback NN based RCG is analyzed under load variations, frequency variations, load unbalancing and distorted supply.
机译:本文提出了一种基于非线性自回转性外源性(NARX)反馈神经网络(NN)的基于参考电流产生(RCG)方案,用于3相分流有源滤波器(SAF)。使用NARX反馈NN来实现频率独立的RCG方案。通常,需要为每个阶段单独实现这样的方案,导致复杂性增加。可替换地,反馈NARX NN为负载电流的基波活性成分,补偿电流,因此,参考电流源的估计处理该3相电流的数量和单位矢量模板(UVT)。对于NARX反馈NN的输入是负载电流的估计的补偿电流和基本活性组分的前两个样品,用本和负载电流和UVT的先前样品一起。控制系统确保源电流匹配相应的参考值,导致总谐波失真小于5%和电源端的单位功率因数。因此,利用所提出的方案,SAF消除了电流谐波,并补偿了无功功率和负载不平衡。在负载变化,频率变化,负载不平衡和扭曲的电源下分析了SAF基于NARX反馈NN的RCG的SAF的性能。

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