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Fault diagnosis of power transformer based on improved differential evolution-neural network

机译:基于改进差分进化神经网络的电力变压器故障诊断

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The proposed model combining improved differential evolution(IDE) algorithm with BP algorithm is applied to fault diagnosis of power transformer in the paper. Despite for its simplicity and high-efficiency, differential evolution (DE) algorithm has the problem of parameters difficult to dynamical adjustment. Based on it, IDE algorithm adopts adaptive control parameters according to swarms' distribution condition. It has a strong global searching capability and can quickly find the global optimal point. The algorithm can effectively overcome defects of conventional BP algorithm, such as the slow convergence of weight and threshold learning, premature result. And it achieves the two kinds of algorithms from each other. Its application in power transformer fault diagnosis is simulated, Comparing with other algorithms. Results show that the proposed method possesses following advantages of good convergence performance, good robustness and high classification accuracy.
机译:将改进的差分进化算法(IDE)与BP算法相结合的模型在电力变压器故障诊断中的应用。尽管具有简单性和高效性,但差分进化(DE)算法仍存在难以动态调整参数的问题。在此基础上,IDE算法根据群体分布情况采用自适应控制参数。它具有强大的全局搜索能力,可以快速找到全局最优点。该算法可以有效克服传统BP算法的缺点,如权重和阈值学习收敛较慢,结果过早。并且它们彼此实现了两种算法。与其他算法进行了比较,模拟了其在电力变压器故障诊断中的应用。结果表明,该方法具有收敛性能好,鲁棒性好和分类精度高的优点。

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