马来西亚高峰日负荷预测

F. A. Razak, A. Hashim, I. Abidin, Mahendran Shitan
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引用次数: 2

摘要

时间序列分析已被广泛而复杂地应用于建模和预测生物、物理和环境现象中的许多问题。这一事实说明了利用时间序列分析预测系统日峰值负荷的基本工程问题。ARMA和带有ARMA误差模型的回归是考虑的时间序列模型之一。为了比较,还讨论了神经网络的混合模型ANFIS。预测的主要兴趣包括对每日数据提前三天至七天的预测。目标是找到一个合适的模型来预测马来西亚的每日电力需求高峰。与其他ARMA模型相比,阶数为2或AR(2)的纯自回归模型的AIC统计值最小。AR(2)模型记录的2005年1月1日至3日3天预报的平均绝对百分比误差(MAPE)为1.27%。除AR(2)模型外,具有ARMA误差的回归模型和ANFIS模型是工作日的最佳预测模型,MAPE值为0.1% ~ 3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Malaysian peak daily load forecasting
Time series analysis has been applied intensively and sophisticatedly to model and forecast many problems in the biological, physical and environmental phenomena of interest. This fact accounts for the basic engineering problem in forecasting the daily peak system load to use time series analysis. ARMA and Regression with ARMA errors models are among the times series models considered. ANFIS, a hybrid model from neural network is also discussed as for comparison purposes. The main interest of the forecasts consists of three days up to seven days ahead predictions for daily data. The objective is to find an appropriate model for forecasting the Malaysian peak daily demand of electricity. The pure autoregressive model with an order 2 or AR (2) has the minimum AIC statistic value compared with other ARMA models. AR (2) model recorded the value for the mean absolute percentage error (MAPE) as 1.27 % for the prediction of 3 days ahead from Jan 1 to 3, 2005. Besides AR(2) model, Regression model with ARMA errors and ANFIS were found to be among the best forecasting models for weekdays with MAPE value from 0.1 % to 3 %.
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