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首页> 外文期刊>IEEE transactions on industrial informatics >Neural Network Based Conductance Estimation Control Algorithm for Shunt Compensation
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Neural Network Based Conductance Estimation Control Algorithm for Shunt Compensation

机译:基于神经网络的并联补偿电导率估计控制算法

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For mitigation of power quality problems in a distribution system, it is important to estimate effecting factors which are responsible for their origin. Main objectives of neural network application in Distribution Static Compensator (DSTATCOM) are to enhance the efficiency, robustness, tracking capability according to requirements. A control algorithm based on load conductance estimation using the neural network is implemented for DSTATCOM in a four wire distribution system. The proposed control algorithm is used for extraction of load fundamental conductance and susceptance components of distorted load currents. It is implementated for mitigation of power quality problems such as reactive power compensation, harmonics elimination, load balancing and reduction of neutral current under linearonlinear loads. Test results on a developed DSTATCOM have shown the acceptable level of performance under balanced and unbalanced loads.
机译:为了减轻配电系统中的电能质量问题,重要的是估算影响其来源的影响因素。神经网络在配电静态补偿器(DSTATCOM)中的应用的主要目标是根据要求提高效率,鲁棒性和跟踪能力。在四线配电系统中,针对DSTATCOM实现了基于负载电导估计的控制算法,该算法使用神经网络。提出的控制算法用于提取负载基本电导和畸变负载电流的电纳分量。它用于缓解电能质量问题,例如在线性/非线性负载下的无功功率补偿,谐波消除,负载平衡和零线电流的减小。在已开发的DSTATCOM上的测试结果表明,在平衡和不平衡负载下的性能都可以接受。

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