短期负荷预测方法的比较分析

A. Ogunjuyigbe, T. Ayodele, Chimeremeze Praise Lasarus, A. Yusuff, T. Mosetlhe
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摘要

电力公司的首要任务之一是准确预测用户的负荷需求需求,特别是短期负荷需求预测。鉴于此,人们提出了不同的负荷预测方法。本文采用多元线性回归(MLR)、季节性自回归综合外生变量移动平均(SARIMAX)和长短期记忆(LSTM)三种方法对尼日利亚典型大学的负荷消费进行预测比较。主要目标是确定哪种技术最能准确地模拟大学的负荷消耗模式。负荷预测是在工作日(星期一至星期五)和周末(星期六和星期日)进行的。结果表明,LSTM技术是误差最小、性能最好的模型。该技术返回的平均绝对误差(MAE)介于0.029-0.093之间,均方误差(MSE)介于0.0014-0.014之间,均方根误差的值介于0.037-0.12之间。
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Comparative Analysis of Short-Term Load Forecasting Methods
One of the primary tasks of electric utilities is to accurately predict the load demand requirements of consumers, especially for short term prediction. In view of this, different methods have been proposed for load prediction. In this paper, three methods (i.e. Multiple Linear Regression (MLR), Seasonal Auto Regressive Integrated Moving Average with Exogenous Variables (SARIMAX) and Long Short Term Memory (LSTM)) are compared to forecast load consumption in a typical Nigerian University. The main objective is to determine which of the techniques best model the load consumption pattern of the University accurately. Load forecast was made for weekdays (Monday-Friday) and weekends (Saturday and Sunday). The result showed that the LSTM technique is the best performing model achieving the least errors. The technique returns the mean absolute error (MAE) that varies between 0.029-0.093, mean square error (MSE) ranging between 0.0014-0.014 and root mean square error that has values between 0.037-0.12.
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