E3S Web of Conferences (Jan 2021)

Long-term load combination forecasting method considering the periodicity and trend of data

  • Jingying Yang,
  • Minglei Jiang,
  • Xin Li,
  • Xin She,
  • Haokuo Xin,
  • Lin Zhou,
  • Chang Liu

DOI
https://doi.org/10.1051/e3sconf/202125201057
Journal volume & issue
Vol. 252
p. 01057

Abstract

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In order to solve the problems of insufficient accuracy of long-term power load forecasting and poor applicability of the model, this paper considers the coupling of a number of macro indicators, such as regional economic development and social development indicators, with the time series data of regional power load. BP neural network and Autoregressive integrated moving average model (ARIMA) are used to integrate and improve the forecasting model, so as to improve the trend forecasting ability of annual load forecasting model. The non parametric function method is used to forecast the periodic load data in the monthly load data, the annual load forecast is combined with the monthly load forecast to improve the overall forecasting accuracy of the model. Finally, through the comparison of grey prediction and other models and the verification of MAPE error analysis method, the prediction accuracy of the model method considering the combination of data periodicity and trend is significantly improved, which is suitable for the long-term prediction of regional power load.