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Demand Forecasting Using Decomposition and Regressors of Natural Gas Delivered to Consumers in the U.S

机译:使用对美国消费者的天然气分解和回归的需求预测

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Natural gas is simple to use and easy to convert to different types of energy. Thus, its usage is increasing every year and this increase also validates itself in consumption. In this study, demand forecasting of natural gas delivered to U.S. consumers is studied. In the study, the time series decomposition method (TSD) and estimation of residuals after TSD method are performed with independent variables have been studied. Thus, more accurate model is tried to be obtained by combining residual estimates with TSD. Meteorological data, natural gas variables such as price, storage capacity and economic indicators are used in the residuals estimation. Sixteen variables are observed as effective in total thirty-eight independent variables. Residual modeling is performed by multiple linear regression where the insignificant variables are removed from the model. It is seen that standard precipitation index of 24 months (SP24), natural gas sold to commercial consumers (PNSCC), total natural gas underground storage capacity (NUSC) are effective independent variables on residual forecasting. Since the predictability is challenging, different models have been built according to whether SP24 is included in the model or not. The 24-month forecasts are made with TSD and 5% mean absolute percent error (MAPE) is obtained. The proposed models estimated 1.5% and 4.5% MAPE respectively for SP24 and not SP24 cases. The models decreased error on average 35.9%, and 15.4% respectively. The approach used in the study improved forecasting results for natural gas delivered to consumers in the U.S.
机译:天然气易于使用,易于转换为不同类型的能量。因此,它的用法每年都在增加,这一增加也验证了自己的消费。在这项研究中,研究了对美国消费者提供的天然气的需求预测。在该研究中,研究了TSD方法在用独立变量进行TSD方法之后的时间序列分解方法(TSD)和估计。因此,尝试通过将剩余估计与TSD组合来获得更准确的模型。气象数据,价格,储存能力和经济指标等天然气变量用于残留量估算。在总三十八个独立变量中观察到十六个变量有效。残余建模由多个线性回归执行,其中从模型中移除无显着变量。可以看出,在24个月(SP24),出售给商业消费者(PNSCC)天然气,天然气总地下储存容量(NUSC)标准降水指数上残留的预测有效的独立变量。由于可预测性是具有挑战性的,因此根据SP24是否包括在模型中而建立了不同的模型。 24个月的预测由TSD和5%平均值误差(MAPE)进行。对于SP24而不是SP24案例,拟议的模型分别估计了1.5%和4.5%的MAPE。模型平均下降35.9%和15.4%。该研究中使用的方法改善了对美国消费者提供的天然气的预测结果。

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