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Generalised neural network-based control algorithm for DSTATCOM in distribution systems

机译:基于广义神经网络的配电网DSTATCOM控制算法

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This study presents a new concept to control a distribution static compensator (DSTATCOM) based on generalised neural network in a three-phase power distribution system. Artificial neural network (ANN)-based controllers play the vital role in the performance improvement of DSTATCOM. However, their application is limited by the increase in complexity as well as the computational time. The proposed generalised neural network algorithm is a combination of Gaussian, sigmoidal and linear transfer functions within a layer to improve the DSTATCOM control strategy. This algorithm estimates the amplitude of the wattful and wattless current components of the load currents for harmonics elimination and reactive power compensation by the DSTATCOM. The algorithm is developed in MATLAB. The case studies validate its superiority over ANN-based control algorithms. The proposed method needs a less number of training patterns and unknown weights compared to other algorithms which reduces the complexity and the computational time. It also improves the performance of DSTATCOM estimating the weights and its learning online which is of the main merits of this algorithm. Its other inherent advantages are ease in design, robustness and its adaptivity with dynamics of load at utility end.
机译:本研究提出了一种基于广义神经网络的三相配电系统中控制配电静态补偿器(DSTATCOM)的新概念。基于人工神经网络(ANN)的控制器在改善DSTATCOM的性能中起着至关重要的作用。但是,它们的应用受到复杂性和计算时间的增加的限制。所提出的广义神经网络算法是一层内高斯,S形和线性传递函数的组合,以改进DSTATCOM控制策略。该算法估算负载电流的有功和无功电流分量的幅度,以通过DSTATCOM消除谐波并补偿无功功率。该算法是在MATLAB中开发的。案例研究证明了其优于基于ANN的控制算法。与其他算法相比,该方法需要较少数量的训练模式和未知权重,从而减少了复杂性和计算时间。它还提高了DSTATCOM估计权重的性能及其在线学习,这是该算法的主要优点。它的其他固有优点是易于设计,坚固耐用,并且在公用事业部门负载动态方面具有适应性。

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