Applying Neural Networks to Large-Scale Distribution System Analysis: an Empirical Computational Perspective

S. Doumen, R. Bernards, J. Morren, N. Paterakis
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Abstract

Research has shown that Neural Networks (NNs) are capable of accurate and quick low voltage (LV) grid analysis. Therefore, NNs could be a viable method for the middle long-term scenario tool (MLT), a tool created and used by Enexis, one of the major distribution system operator (DSO) in the Netherlands, to analyze future scenarios of LV grids. However, the tool analyzes a substantial amount of LV grids, and each would require a NN. This amount of NNs necessitates a single network architecture and training method for all NNs, which can be achieved by knowing hyperparameters beforehand, since determining hyperparameters is computationally costly. This paper estimates how long it would take to train a substantial amount of NNs, determines if hyperparameters are shareable between NNs of similar-sized LV grids and if hyperparameters are predictable based on LV grid sizes. The results of hyper-parameter sharing show comparable performance between NNs, however, differences start to occur for larger LV grids. Predicting hyperparameters based on LV grid size gives an unsatisfactory performance.
神经网络在大规模配电系统分析中的应用:经验计算视角
研究表明,神经网络具有准确、快速的低压电网分析能力。因此,神经网络可能是中长期情景工具(MLT)的一种可行方法,MLT是荷兰主要配电系统运营商之一Enexis创建并使用的工具,用于分析低压电网的未来情景。然而,该工具分析了大量的低压网格,每个网格都需要一个神经网络。这么多的神经网络需要一个单一的网络架构和所有神经网络的训练方法,这可以通过事先知道超参数来实现,因为确定超参数的计算成本很高。本文估计了训练大量神经网络所需的时间,确定了超参数在相似大小的LV网格的神经网络之间是否可共享,以及基于LV网格大小的超参数是否可预测。超参数共享的结果显示神经网络之间的性能相当,然而,对于较大的低压网格,差异开始出现。基于LV网格大小的超参数预测效果不理想。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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