IET Generation, Transmission & Distribution (Oct 2021)

A per‐unit curve rotated decoupling method for CNN‐TCN based day‐ahead load forecasting

  • Shengtao He,
  • Canbing Li,
  • Xubin Liu,
  • Xinyu Chen,
  • Mohammad Shahidehpour,
  • Tao Chen,
  • Bin Zhou,
  • Qiuwei Wu

DOI
https://doi.org/10.1049/gtd2.12214
Journal volume & issue
Vol. 15, no. 19
pp. 2773 – 2786

Abstract

Read online

Abstract The existing load forecasting method based on the per‐unit curve static decoupling (PCSD) would easily lead to the deviation and translation of forecasting results. To tackle this challenge, a per‐unit curve rotated decoupling (PCRD) method is proposed for day‐ahead load forecasting with convolutional neural network and temporal convolutional network framework. The PCRD method decomposes the load into three parts: the rotated per‐unit load curve, the 0 AM load, and the daily average load. The shape feature of the load curve is extracted by CNN, the temporal features of the 0 AM load and daily average load are extracted by TCN. The rotation operation is to rotate the per‐unit load curve at the midpoint of the curve until the first load point is aligned to the same point, in order to improve the similarity of per‐unit load curves and to alleviate the deflection of forecasting results. The 0 AM load can verify the accuracy of the daily average load, which alleviates the translation of forecasting results. Several experimental results show that the proposed method has higher accuracy and stability than the existing PCSD method. After repeated experiments on multiple data sets, the generalization ability of the model is also verified.

Keywords