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Research on line overload identification of power system based on improved neural network algorithm

机译:基于改进神经网络算法的电力系统线过载识别研究

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摘要

Due to the continuous appearance of safety fault accidents in the practice process, operation safety has become the central task of various operation and management tasks of the power grid. Therefore, to establish a line overload identification and data control model for the power system, we first defined the vulnerability of complex power systems based on the analysis of each line and node. For finding the optimal parameters of this model, we proposed an improved optimization strategy by combining the genetic algorithm and BP neural network. To verified the effectiveness of our proposed method, we conducted experiments on a simulation on the IEEE 30-node power system environment. Experimental results demonstrate that the proposed algorithms can establish an optimized overload identification model with better performance. This study can help to conduct reasonable adjustment when overload happens to the power system, and then reduce similar failure as well as enhance the operation safety.
机译:由于练习过程中安全故障事故的连续外观,操作安全已成为电网各种操作和管理任务的中心任务。因此,要为电力系统建立线路过载识别和数据控制模型,我们首先根据每个行和节点的分析定义复杂电力系统的漏洞。为了找到该模型的最佳参数,我们通过组合遗传算法和BP神经网络提出了改进的优化策略。为了验证我们提出的方法的有效性,我们对IEEE 30节点电力系统环境的模拟进行了实验。实验结果表明,所提出的算法可以建立具有更好性能的优化过载识别模型。当电力系统发生过载时,本研究可以帮助进行合理的调整,然后降低类似的故障,并提高操作安全性。

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