基于上下文向量的ES-dRNN短期负荷预测

Q. Ain, Sohail Iqbal
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引用次数: 0

摘要

电力负荷预测是电力系统规划、运行和控制的重要组成部分。准确的负荷预测有助于制定发电、可靠性分析、发电调度等各种运行决策。然而,由于负荷时间序列具有多重季节性和非线性趋势的复杂性,短期负荷预测是困难的。在本文中,我们提出了一种新的混合层次深度学习预测模型的扩展,该模型包含了多个季节性。最初开创性的混合预测模型是由Smyl开发的。本文提出的模型是一种基于积分指数平滑的扩展递归神经网络(EScdRNN)。指数平滑进行自适应时间序列处理,而使用上下文向量的扩展递归神经网络则有助于交叉学习。这有助于选择有用的输入信息,从而提高准确性。将提出的方法的结果与不同的统计机器学习方法进行了比较,这些方法显示了我们提出的方法在提高准确性方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Short-Term Load Forecasting using ES-dRNN with Context Vector
Electrical load forecasting is an integral part of power system planning, operation, and control. Accurate load forecasting is beneficial for making various operational decisions such as energy generation, reliability analysis, and dispatch scheduling of generated energy. However, short-term load fore-casting is difficult due to the complexity posed by the nature of load time series as it expresses multiple seasonality and nonlinear trend. In this paper, we propose an extension of a novel hybrid hierarchical deep learning-based forecast model which incorporates multiple seasonality. The original groundbreaking hybrid forecasting model is developed by Smyl. The model presented in this paper is based on a dilated recurrent neural network with a context vector by integrating exponential smoothing (EScdRNN). Exponential smoothing performs the adaptive time series processing whereas dilated recurrent neural network using context vector helps in cross-learning. This helps in the selection of useful input information which leads to improved accuracy. The results of the proposed methodology are compared with different statistical machine learning methods which show the potential of our proposed approach in terms of increased accuracy.
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