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A Gaussian Process Regression for Natural Gas Consumption Prediction Based on Time Series Data

机译:基于时间序列数据的天然气消费量预测的高斯过程回归

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For several economical, financial and operational reasons, forecasting energy demand becomes a key instrument in energy system management. This paper develops a natural gas forecasting approach, which consists of two major phases: 1) it classifies the natural gas consumption daily pattern sequences into different groups with similar attributes. 2) the design and training of multiple autoregressive Gaussian Process models phase is carried out using the Algerian natural gas market data together with exogenous inputs consisting in weather (temperature) and calendar (day of the week, hour indicator) factors. The main novelty in this work consists of the investigation of multiple different clustering techniques for better analysis and clustering of natural gas consumption data. The impact of the obtained clusters, by each technique, is then summarized and evaluated with respect to the prediction accuracy.
机译:出于多种经济,财务和运营原因,预测能源需求已成为能源系统管理中的关键工具。本文开发了一种天然气预测方法,该方法包括两个主要阶段:1)将天然气消耗日模式序列分为具有相似属性的不同组。 2)多个自回归高斯过程模型阶段的设计和训练是使用阿尔及利亚天然气市场数据以及包括天气(温度)和日历(星期几,小时指示器)因素的外来输入进行的。这项工作的主要新颖之处在于对多种不同聚类技术的研究,以更好地分析和聚类天然气消耗数据。然后,通过每种技术总结所获得的群集的影响,并就预测准确性进行评估。

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