Panel Quantile Regression Neural Network For Electricity Consumption Forecasting In China: A New Framework

ENERGY SOURCES PART B-ECONOMICS PLANNING AND POLICY(2021)

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摘要
Accurate electricity consumption forecasting (ECF) is challenging due to its complexity, and it is more challenging for a provincial ECF in China when it comes to the great heterogeneity among provinces. To depict and predict electricity consumption, a new framework, the panel quantile regression neural network (PQRNN), is developed by adding an artificial neural network structure to a panel quantile regression model. The PQRNN can account for the complex nonlinear relationship and the latent provincial heterogeneity simultaneously. In addition, a differential approximation of the quantile loss function and a quasi-Newton optimization based on the backpropagation algorithm is developed. The prediction accuracy is evaluated by an empirical analysis of the provincial panel dataset from 1999 to 2017 in China, which shows that the ECF based on the PQRNN performs well. Finally, the provincial electricity consumptions over the next 5 years (2018-2022) are predicted by utilizing the PQRNN model.
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关键词
Panel quantile regression neural network, panel data, electricity consumption forecasting, penalized QR, artificial neural network, PQRNN
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