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Short-term load forecasting of regional distribution network based on generalized regression neural network optimized by grey wolf optimization algorithm

机译:基于广义回归神经网络的灰狼优化算法优化区域分配网络的短期负荷预测

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摘要

Short-term load forecasting of regional distribution network is the key to the economic operation of smart distribution systems, which not only requires high accuracy and fast calculation speed, but also has a diversity of influential factors and strong randomness. This paper proposes a short-term load forecasting model for regional distribution network combining the maximum information coefficient, factor analysis, gray wolf optimization, and generalized regression neural network (MIC-FA-GWO-GRNN). To screen and decrease the dimension of the multiple-input features of the short-term load forecasting model, MIC is first used to quantify the non-linear correlation between the load and input features, and to eliminate the ineffective features, and then FA is used to reduce the dimension of the screened input features on the premise of preserving the main information of input features. After that the high-precision short-term load forecasting based on GWO-GRNN model is realized. GRNN is used to regressively analyze the input features after screening and dimension reduction, and the parameter of GRNN is optimized by using the GWO, which has strong global searching ability and fast convergence. Finally a case study of a regional distribution network in Tianjin, China verifies the accuracy and applicability of the proposed forecasting model.
机译:区域分销网络的短期负荷预测是智能配送系统经济运营的关键,不仅需要高精度和快速的计算速度,而且具有影响因素的多样性和强烈的随机性。本文提出了一个结合最大信息系数,因子分析,灰羽狼优化和广义回归神经网络的区域分布网络的短期负荷预测模型(MIC-FA-GWO-GRNN)。屏幕和减少短期负载预测模型的多输入特征的维度,首先用于量化负载和输入功能之间的非线性相关性,并消除无效特征,然后是FA用于减少屏幕输入功能的维度,以保留输入特征的主要信息。之后,实现了基于GWO-GRNN模型的高精度短期负荷预测。 GNN用于回归地分析筛选和尺寸减小之后的输入特征,并且通过使用GWO优化GRNN的参数,这具有强大的全球搜索能力和快速收敛。最后对天津区域配送网络进行了一个案例研究,验证了拟议的预测模型的准确性和适用性。

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