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Quantum-behaved particle swarm optimization -ANN based identification method for typical power quality disturbance

机译:基于量子行为的粒子群算法-ANN的典型电能质量扰动识别方法

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This paper proposes an improved algorithm based on quantum-behaved particle swarm optimization (QPSO) to improve artificial neural network (ANN) training for the identification of typical power quality disturbance (PQD). Two sub networks which are used to identify the continual and break PQ disturbance respectively form the recognizer. Characteristic of PQ disturbance acting as the input of sub networks is obtained by projection pursuit regression, dynamic computing and fractal technique. QPSO with study factors, gather and speed factor added is applied to optimize the parameters' computing method, so as to improve the neural network training. Six types of typical spot PQ disturbance are included in the experiment. The result shows that the proposed algorithm compared with that of which is based on the standard back propagation training with momentum factor added, is superior to the other algorithm with a better astringency and stability.
机译:本文提出了一种基于量子行为粒子群优化(QPSO)的改进算法,以改进人工神经网络(ANN)训练,以识别典型电能质量扰动(PQD)。用来识别连续和中断PQ干扰的两个子网分别构成识别器。通过投影寻踪回归,动态计算和分形技术获得了作为子网络输入的PQ扰动的特征。结合学习因子,聚集因子和速度因子的QPSO被应用来优化参数的计算方法,从而改善神经网络的训练。实验中包括六种典型的点PQ干扰。结果表明,与基于增加运动量因子的标准反向传播训练的算法相比,该算法具有更好的收敛性和稳定性。

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