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Prediction of Cable Junction Temperature in Power Transmission System based on BP Neural Network optimized by Genetic Algorithm

机译:基于遗传算法优化的BP神经网络的输电系统电缆结温预测。

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Two forward neural networks were established in this study. Training and learning of reflection factor data and prediction results were conducted respectively then the weights and thresholds of the two networks are optimized by genetic algorithm, finally the set of target values can still be predicted without reflection factor data. In order to predict the temperature of the conductor in the cable joint of a power transmission system, the genetic algorithm is used to optimize the BP neural network to establish an effective prediction model based on the analysis of the related reflection factors. This model not only has the strong learning ability of BP neural network, but also combines the excellent global searching ability of genetic algorithm. The innovation of this research is that the network 1 is used to train the reflective factor data to get the corresponding time point temperature value, and then the reflective factor data of three consecutive time points are trained by the network 2 to get the fourth time point temperature value. The whole process of solving the temperature value of the fourth time point does not need the reflective factor data of the time point.
机译:在这项研究中建立了两个正向神经网络。分别对反射因子数据和预测结果进行训练和学习,然后通过遗传算法对两个网络的权重和阈值进行优化,最终仍可以在没有反射因子数据的情况下预测目标值集。为了预测输电系统电缆接头中导体的温度,基于相关反射因子的分析,采用遗传算法对BP神经网络进行优化,建立有效的预测模型。该模型不仅具有强大的BP神经网络学习能力,而且还结合了遗传算法出色的全局搜索能力。本研究的创新之处在于,利用网络1训练反射因子数据得到相应的时间点温度值,然后由网络2训练三个连续时间点的反射因子数据得到第四个时间点。温度值。求解第四时间点温度值的整个过程不需要该时间点的反射因子数据。

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