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Application of time series models for heating degree day forecasting

机译:时间序列模型在加热度日预测中的应用

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This study aims at constructing short-term forecast models by analyzing the patterns of the heating degree day (HDD). In this context, two different time series analyses, namely the decomposition and Box–Jenkins methods, were conducted. The monthly HDD data in France between 1974 and 2017 were used for analyses. The multiplicative model and 79 SARIMA models were constructed by the decomposition and Box–Jenkins method, respectively. The performance of the SARIMA models was assessed by the adjusted R ~(2)value, residual sum of squares, the Akaike Information Criteria, the Schwarz Information Criteria, and the analysis of the residuals. Moreover, the mean absolute percentage error, mean absolute deviation, and mean squared deviation values were calculated to evaluate the performance of both methods. The results show that the decomposition method yields more acceptable forecasts than the Box–Jenkins method for supporting short-term forecasting of the HDD.
机译:本研究旨在通过分析加热度日(HDD)的图案来构建短期预测模型。在这种情况下,进行了两种不同的时间序列分析,即分解和箱子 - 詹金斯方法。 1974年至2017年间法国的每月HDD数据用于分析。乘法模型和79种Sarima模型分别由分解和箱詹金斯方法构建。 Sarima模型的性能由调整后的R〜(2)值,剩余的正方形,Akaike信息标准,Schwarz信息标准以及残留物的分析来评估。此外,计算了平均绝对百分比误差,平均绝对偏差和平均平方偏差值以评估两种方法的性能。结果表明,分解方法产生比箱子 - 詹金斯方法更加可接受的预测,用于支持HDD的短期预测。

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