4.6 Article

Novel Data-Driven Models Applied to Short-Term Electric Load Forecasting

期刊

APPLIED SCIENCES-BASEL
卷 11, 期 12, 页码 -

出版社

MDPI
DOI: 10.3390/app11125708

关键词

short-term electric load forecasting; deep learning; machine learning; dynamic mode decomposition; deep learning ensemble model

资金

  1. Proyectos de I+D+i Retos investigacion, Programa Estatal de I+D+i Orientada a los Retos de la Sociedad, Plan Estatal de Investigacion Cientifica, Tecnica y de Innovacion 2017-2020, Spanish Ministry for Science, Innovation, and Universities [RTI2018-098958-B-I00]
  2. Agencia Estatal de Investigacion (AEI)
  3. Fondo Europeo de Desarrollo Regional (FEDER)

向作者/读者索取更多资源

This study compares various traditional machine learning and deep learning techniques, as well as new methods for dynamic model analysis and short-term load forecasting. It explores the impact of critical parameters in time series forecasting, including rolling window length, forecast length, and the number/nature of features used.
This work brings together and applies a large representation of the most novel forecasting techniques, with origins and applications in other fields, to the short-term electric load forecasting problem. We present a comparison study between different classic machine learning and deep learning techniques and recent methods for data-driven analysis of dynamical models (dynamic mode decomposition) and deep learning ensemble models applied to short-term load forecasting. This work explores the influence of critical parameters when performing time-series forecasting, such as rolling window length, k-step ahead forecast length, and number/nature of features used to characterize the information used as predictors. The deep learning architectures considered include 1D/2D convolutional and recurrent neural networks and their combination, Seq2seq with and without attention mechanisms, and recent ensemble models based on gradient boosting principles. Three groups of models stand out from the rest according to the forecast scenario: (a) deep learning ensemble models for average results, (b) simple linear regression and Seq2seq models for very short-term forecasts, and (c) combinations of convolutional/recurrent models and deep learning ensemble models for longer-term forecasts.

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