Power Load Forecast Based on CS-LSTM Neural Network

Author:

Han Lijia1,Wang Xiaohong1,Yu Yin2,Wang Duan3

Affiliation:

1. Institute of Information and Computation, School of Mathematics and Physics, North China Electric Power University, Beijing 102206, China

2. Nanjing Laisi Information Technology Co., Ltd., Nanjing 210014, China

3. Department of Mathematics, Nuclear Industry College, Beijing 102413, China

Abstract

Load forecast is the foundation of power system operation and planning. The forecast results can guide the power system economic dispatch and security analysis. In order to improve the accuracy of load forecast, this paper proposes a forecasting model based on the combination of the cuckoo search (CS) algorithm and the long short-term memory (LSTM) neural network. Load data are specific data with time series characteristics and periodicity, and the LSTM algorithm can control the information added or discarded through the forgetting gate, so as to realize the function of forgetting or memorizing. Therefore, the use of the LSTM algorithm for load forecast is more effective. The CS algorithm can perform global search better and does not easily fall into local optima. The CS-LSTM forecasting model, where CS algorithm is used to optimize the hyper-parameters of the LSTM model, has a better forecasting effect and is more feasible. Simulation results show that the CS-LSTM model has higher forecasting accuracy than the standard LSTM model, the PSO-LSTM model, and the GA-LSTM model.

Funder

等离子体物理中几类非线性发展方程的数学研究

Publisher

MDPI AG

Reference32 articles.

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