A Neural Ordinary Differential Equations Based Approach for Demand Forecasting within Power Grid Digital Twins

Xiang Xie, A. Parlikad, R. S. Puri
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引用次数: 16

Abstract

Over the past few years, deep learning (DL) based electricity demand forecasting has received considerable attention amongst mathematicians, engineers and data scientists working within the smart grid domain. To this end, deep learning architectures such as deep neural networks (DNN), deep belief networks (DBN) and recurrent neural networks (RNN) have been successfully applied to forecast the generation and consumption of a wide range of energy vectors. In this work, we show preliminary results for a residential load demand forecasting solution which is realized within the framework of power grid digital twin. To this end, a novel class of deep neural networks is adopted wherein the output of the network is efficiently computed via a black-box ordinary differential equation (ODE) solver. We introduce the readers to the main concepts behind this method followed by a real-world, data driven computational benchmark test case designed to study the numerical effectiveness of the proposed approach. Initial results suggest that the ODE based solutions yield acceptable levels of accuracy for wide range of prediction horizons. We conclude that the method could prove as a valuable tool to develop forecasting models within an electrical digital twin (EDT) framework, where, in addition to accurate prediction models, a time horizon independent, computationally scalable and compact model is often desired.
基于神经常微分方程的电网数字孪生需求预测方法
在过去的几年中,基于深度学习(DL)的电力需求预测受到了智能电网领域数学家、工程师和数据科学家的广泛关注。为此,深度学习架构,如深度神经网络(DNN)、深度信念网络(DBN)和递归神经网络(RNN)已经成功地应用于预测各种能量向量的产生和消耗。在这项工作中,我们展示了在电网数字孪生框架内实现的住宅负荷需求预测解决方案的初步成果。为此,采用了一类新的深度神经网络,其中网络的输出通过黑盒常微分方程(ODE)求解器有效地计算。我们向读者介绍了该方法背后的主要概念,然后是一个真实世界的、数据驱动的计算基准测试用例,旨在研究所提出方法的数值有效性。初步结果表明,基于ODE的解决方案在广泛的预测范围内产生了可接受的精度水平。我们得出的结论是,该方法可以证明是在电子数字孪生(EDT)框架内开发预测模型的有价值的工具,其中,除了准确的预测模型外,通常需要时间范围独立,计算可扩展和紧凑的模型。
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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