应用季节ARIMA分解法进行月度能源预测

P. Damrongkulkamjorn, P. Churueang
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引用次数: 26

摘要

本文提出了一种新的季节回归时间序列预测方法,该方法将自回归积分移动平均(ARIMA)方法应用于经典的分解技术。提出的技术首先使用乘法分解将时间序列数据分解为趋势周期和季节性成分。然后将季节自回归综合移动平均(SARIMA)应用于趋势周期部分,寻找最能描述它的模型。然后将SARIMA趋势周期与单独获得的季节分量估计值相结合,形成一系列预测值。将所提出的预测方法应用于泰国某配电公司的月度能源数据。将提出的技术的结果与标准方法的结果进行了比较,标准方法通过使用数学函数来预测趋势周期分量。比较表明,采用SARIMA趋势周期的分解预测方法效果较好
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Monthly energy forecasting using decomposition method with application of seasonal ARIMA
This paper presents a new forecasting approach for seasonal regressive time series which applies well-known autoregressive integrated moving average (ARIMA) method to classical decomposition techniques. The proposed technique starts with decomposing time series data into trend-cycle and seasonality components by using multiplicative decomposition. Then the seasonal autoregressive integrated moving average (SARIMA) is applied to the trend-cycle part to find the model that best describes it. The SARIMA trend-cycle is then combined with estimated seasonal component obtained separately to make a series of forecast values. The proposed forecasting approach is applied to monthly energy data of an electric distribution utility in Thailand. The results of the proposed technique are compared to those of the standard approach, which forecasts the trend-cycle component by projecting it using a mathematical function. The comparison shows that the decomposition forecasting with SARIMA trend-cycle is preferred
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