| Energy Reports | |
| Electric load forecasting based on Long-Short-Term-Memory network via simplex optimizer during COVID-19 | |
| Yiqin Wang1  Guibo Ma1  Xiaole Li1  Xin Chen1  Bo Yang2  Qianxiang Shen2  | |
| [1] Fuxin Electric Power Supply Company, State Grid Liaoning Electric Power Co. Ltd, Fuxin, Liaoning 123000, China;Shenyang EPIC Technology Co., Ltd, Shenyang, liaoning 110004, China; | |
| 关键词: Electric load forecasting; Long-Short-Term-Memory network; Simplex optimizer; Data processing; COVID-19; | |
| DOI : | |
| 来源: DOAJ | |
【 摘 要 】
Electric load forecasting is a challenging research, which is of great significance to the safe and stable operation of power grid in epidemic period. In this paper, Long-Short-Term-Memory (LSTM) model with simplex optimizer is proposed to forecast the electric load for an enterprise during the COVID-19 pandemic. The forecasting process consists of data processing, LSTM network construction and optimization. Firstly, some data processing steps includes information quantifying, electric load data cleaning, correlation-coefficient-based medical data filtering, clustering-based medical data and electric load data filling. Then LSTM-based electric load forecasting model of enterprise is established during the COVID-19 pandemic. On this basis, LSTM network is trained and parameters are optimized via simplex optimizer. Finally, an example of the electric load forecasting of an enterprise during the COVID-19 pandemic is investigated. The forecasting results show that the reduced number of iterations is about 25% and the improved forecasting accuracy is about 5.6%. These results can be used as a reference for resuming production of enterprises and planning of electric grid.
【 授权许可】
Unknown