Electrical line fault prediction using a novel grey wolf optimization algorithm based on multilayer perceptron

Yufei Zhang
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Abstract

Grey wolf optimization algorithm (GWO) has achieved great results in the optimization of neural network parameters. However, it has some problems such as insufficient precision, poor robustness, weak searching ability and easy to fall into local optimal solution. Therefore, a grey wolf optimization algorithm combining Levy flight and nonlinear inertia weights (LGWO) is proposed in this paper. The combination of Levy flight and nonlinear inertia weight is to improve the search efficiency and solve the problem that the search ability is weak and it is easy to fall into the local optimal solution. In summary, LGWO solves the problems of insufficient precision, poor robustness, weak searching ability and easy to fall into local optimal. This paper uses Congress on Evolutionary Computation benchmark function and combines algorithms with neural network for power line fault classification prediction to verify the effectiveness of each strategy improvement in LGWO and its comparison with other excellent algorithms (sine cosine algorithm, tree seed algorithm, wind driven optimization, and gravitational search algorithm). In the combination of neural networks and optimization algorithms, the accuracy of LGWO has been improved compared to the basic GWO, and LGWO has achieved the best performance in multiple algorithm comparisons.

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使用基于多层感知器的新型灰狼优化算法预测电气线路故障
灰狼优化算法(GWO)在优化神经网络参数方面取得了很好的效果。然而,它也存在精度不够、鲁棒性差、搜索能力弱、易陷入局部最优解等问题。因此,本文提出了一种结合列维飞行和非线性惯性权重的灰狼优化算法(LGWO)。利维飞行和非线性惯性权重的结合提高了搜索效率,解决了搜索能力弱和容易陷入局部最优解的问题。总之,LGWO 解决了精度不够、鲁棒性差、搜索能力弱和容易陷入局部最优的问题。本文利用进化计算基准函数大会,将算法与神经网络相结合进行电力线路故障分类预测,验证了 LGWO 中各策略改进的有效性,并与其他优秀算法(正弦余弦算法、树种算法、风驱动优化算法、引力搜索算法)进行了比较。在神经网络与优化算法的结合中,LGWO 的准确性比基本 GWO 有所提高,并且在多种算法比较中 LGWO 取得了最佳性能。
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