Short-term electricity grid maximum demand forecasting with the ARIMAX-SVR Machine Learning Hybrid Model

Q2 Engineering
H. F. Chow
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引用次数: 0

Abstract

This paper proposes and discusses the viability of a short-term grid maximum demand forecasting model combining autoregressive integrated moving average with regressors (ARIMAX) and support vector regression (SVR). Grid demand forecasting is essential to generation unit scheduling, maintenance planning and system security. Traditionally, grid demand is forecasted using multivariate linear regression models with parameters adjusted to past data. A disadvantage of the linear regression model is that the parameters require regular adjustment, otherwise the prediction accuracy will deteriorate over time. With recent advances in the field of machine learning and lower computational costs, the usage of machine learning in the power industry becomes increasingly practicable. The proposed model is a machine learning model that combines ARIMAX and SVR to exploit their respective effectiveness in predicting linear and non-linear data. In contrast to linear regression models, the machine learning model automatically updates itself when new data is included. The hybrid model is benchmarked against other forecasting models and demonstrated a marked improvement in accuracy, achieving RMSE of 67.7MW and MAPE of 1.32% in a seven-day forecast.
基于ARIMAX-SVR机器学习混合模型的短期电网最大需求预测
本文提出并讨论了一种结合自回归综合移动平均与回归(ARIMAX)和支持向量回归(SVR)的短期电网最大需求预测模型的可行性。电网需求预测对发电机组调度、维护计划和系统安全至关重要。传统上,电网需求是使用多变量线性回归模型预测的,参数根据过去的数据进行调整。线性回归模型的缺点是参数需要定期调整,否则预测精度将随着时间的推移而恶化。随着机器学习领域的最新进展和计算成本的降低,机器学习在电力行业的应用变得越来越可行。所提出的模型是一种结合ARIMAX和SVR的机器学习模型,以利用它们在预测线性和非线性数据方面的各自有效性。与线性回归模型相比,当包含新数据时,机器学习模型会自动更新自己。该混合模型与其他预测模型进行了对比,并证明了其准确性的显著提高,在七天的预测中实现了67.7MW的RMSE和1.32%的MAPE。
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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来源期刊
Transactions Hong Kong Institution of Engineers
Transactions Hong Kong Institution of Engineers Engineering-Engineering (all)
CiteScore
2.70
自引率
0.00%
发文量
22
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