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Hybrid ARIMAX quantile regression method for forecasting short term electricity consumption in east java

机译:Hybrid ARIMAX定量回归回归方法,用于预测东爪哇短期电力消费量

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The need for energy supply, especially for electricity in Indonesia has been increasing in the last past years. Furthermore, the high electricity usage by people at different times leads to the occurrence of heteroscedasticity issue. Estimate the electricity supply that could fulfilled the community's need is very important, but the heteroscedasticity issue often made electricity forecasting hard to be done. An accurate forecast of electricity consumptions is one of the key challenges for energy provider to make better resources and service planning and also take control actions in order to balance the electricity supply and demand for community. In this paper, hybrid ARIMAX Quantile Regression (ARIMAX-QR) approach was proposed to predict the short-term electricity consumption in East Java. This method will also be compared to time series regression using RMSE, MAPE, and MdAPE criteria. The data used in this research was the electricity consumption per half-an-hour data during the period of September 2015 to April 2016. The results show that the proposed approach can be a competitive alternative to forecast short-term electricity in East Java. ARIMAX-QR using lag values and dummy variables as predictors yield more accurate prediction in both in-sample and out-sample data. Moreover, both time series regression and ARIMAX-QR methods with addition of lag values as predictor could capture accurately the patterns in the data. Hence, it produces better predictions compared to the models that not use additional lag variables.
机译:在过去几年中,对印度尼西亚的电力的需求,特别是印度尼西亚的电力。此外,不同时间的人的高电力使用导致异源性问题的发生。估计可以实现社区需求的电力供应非常重要,但异源性问题经常使电力预测难以完成。准确的电力消费预测是能源提供商以更好的资源和服务计划以及控制行动来平衡社区的供电和需求的关键挑战之一。本文提出了杂交ARIMAX量化回归(ARIMAX-QR)方法,以预测东爪哇的短期电力消耗。使用RMSE,MAPE和MDAPE标准,还将与时间序列回归进行比较。本研究中使用的数据是2015年9月至2016年9月期间每半小时数据的电力消耗。结果表明,该方法可以成为东爪哇短期电力的竞争替代方案。 ARIMAX-QR使用滞后值和虚拟变量作为预测器,在样本内和外出数据中产生更准确的预测。此外,在添加滞后值作为预测器的时间序列回归和ARIMAX-QR方法可以准确地捕获数据中的模式。因此,与不使用额外滞后变量的模型相比,它会产生更好的预测。

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