Energies (Nov 2019)

Phase Space Reconstruction Algorithm and Deep Learning-Based Very Short-Term Bus Load Forecasting

  • Tian Shi,
  • Fei Mei,
  • Jixiang Lu,
  • Jinjun Lu,
  • Yi Pan,
  • Cheng Zhou,
  • Jianzhang Wu,
  • Jianyong Zheng

DOI
https://doi.org/10.3390/en12224349
Journal volume & issue
Vol. 12, no. 22
p. 4349

Abstract

Read online

With the refinement and intelligence of power system optimal dispatching, the widespread adoption of advanced grid applications that consider the safety and economy of power systems, and the massive access of distributed energy resources, the requirement for bus load prediction accuracy is continuously increasing. Aiming at the volatility brought about by the large-scale access of new energy sources, the adaptability to different forecasting horizons and the time series characteristics of the load, this paper proposes a phase space reconstruction (PSR) and deep belief network (DBN)-based very short-term bus load prediction model. Cross-validation is also employed to optimize the structure of the DBN. The proposed PSR-DBN very short-term bus load forecasting model is verified by applying the real measured load data of a substation. The results prove that, when compared to other alternative models, the PSR-DBN model has higher prediction accuracy and better adaptability for different forecasting horizons in the case of high distributed power penetration and large fluctuation of bus load.

Keywords