Forecasting performance of time series and regression in modeling electricity load demand

M. H. Jifri, E. E. Hassan, N. Miswan
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引用次数: 14

Abstract

Electricity load demand modelling is considered as one of the important area among researchers since electricity are evolving throughout the time. There is a lot of technique to analyze the load demand such as by using classical method or conventional methods. However, most of the techniques only consider univariate data sets. The purpose of the current study is to evaluate the performance of time series and regression in load demand forecasting. Time series models are considered univariate data sets while regression model considered both univariate and multivariate data sets. Time series models considered in this study are Exponential Smoothing (ES) state space, Autoregressive Integrated Moving Average (ARIMA), Autoregressive Autoregressive (ARAR), and Autoregressive Moving Average Error, Trends and Seasonal Components (TBATS) while for regression model, Stepwise Multiple Regression will be considered by using Root Mean Square Error (RMSE) as a forecasting accuracy criteria, the study concludes that the Stepwise Multiple Regression method is more appropriate model.
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电力负荷需求建模中时间序列与回归的预测性能
随着电力的不断发展,电力负荷需求建模一直被认为是一个重要的研究领域。负荷需求分析的方法有经典方法和常规方法等。然而,大多数技术只考虑单变量数据集。本研究的目的是评估时间序列和回归在负荷需求预测中的性能。时间序列模型被认为是单变量数据集,而回归模型同时考虑单变量和多变量数据集。本研究考虑的时间序列模型有指数平滑(ES)状态空间、自回归综合移动平均(ARIMA)、自回归自回归(ARAR)和自回归移动平均误差、趋势和季节成分(TBATS),而回归模型将考虑逐步多元回归,以均方根误差(RMSE)作为预测精度标准,研究表明逐步多元回归方法是更合适的模型。
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