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Prior Day Effect in Forecasting Daily Natural Gas Flow from Monthly Data

机译:在每月数据预测日常天然气流量之前的效果

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Many needs exist in the energy industry where measurement is monthly yet daily values are required. The process of disaggregation of low frequency measurement to higher frequency values has been presented in this literature. Also, a novel method that accounts for prior-day weather impacts in the disaggregation process is presented, even though prior-day impacts are not directly recoverable from monthly data. Having initial daily weather and gas flow data, the weather and flow data are aggregated to generate simulated monthly weather and consumption data. Linear regression models can be powerful tools for parametrization of monthly/daily consumption models and will enable accurate disaggregation. Two-, three-, four-, and six-parameter linear regression models are built. RMSE and MAPE are used as means for assessing the performance of the proposed approach. Extensive comparisons between the monthly/daily gas consumption forecasts show higher accuracy of the results when the effect of prior-day weather inputs are considered.
机译:能源行业中需要许多需求,其中测量是每月日常值。本文介绍了对较高频率值的低频测量的分解过程。此外,还提出了一种占对分类过程中的前日天气影响的新方法,即使先前的影响不直接从每月数据中可以直接恢复。具有初始日常天气和气体流量数据,汇总天气和流量数据以产生模拟的月度天气和消费数据。线性回归模型可以是每月/每日消费模型的参数化的强大工具,并将实现准确的分解。构建了两个,三个,四个,四个和六参数线性回归模型。 RMSE和MAPE用作评估所提出的方法的性能的手段。每月/每日气体消耗预测之间的广泛比较显示了当考虑了先前天气投入的效果时,结果的准确性更高。

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