Dynamic ensemble wind speed prediction model based on hybrid deep reinforcement learning

被引:62
作者
Chen, Chao [1 ]
Liu, Hui [1 ]
机构
[1] Cent South Univ, Inst Artificial Intelligence & Robot IAIR, Key Lab Traff Safety Track, Minist Educ,Sch Traff & Transportat Engn, Changsha 410075, Hunan, Peoples R China
基金
中国国家自然科学基金;
关键词
Wind speed prediction; Dynamic ensemble; Multi-objective optimization; Deep reinforcement learning; OPTIMIZATION ALGORITHM; FORECASTING MODELS; ENERGY; DECOMPOSITION; MULTISTEP; NETWORK; BIAS; INTELLIGENT; VARIANCE;
D O I
10.1016/j.aei.2021.101290
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Prediction of wind speed can provide a reference for the reliable utilization of wind energy. This study focuses on 1-hour, 1-step ahead deterministic wind speed prediction with only wind speed as input. To consider the timevarying characteristics of wind speed series, a dynamic ensemble wind speed prediction model based on deep reinforcement learning is proposed. It includes ensemble learning, multi-objective optimization, and deep reinforcement learning to ensure effectiveness. In part A, deep echo state network enhanced by real-time wavelet packet decomposition is used to construct base models with different vanishing moments. The variety of vanishing moments naturally guarantees the diversity of base models. In part B, multi-objective optimization is adopted to determine the combination weights of base models. The bias and variance of ensemble model are synchronously minimized to improve generalization ability. In part C, the non-dominated solutions of combination weights are embedded into a deep reinforcement learning environment to achieve dynamic selection. By reasonably designing the reinforcement learning environment, it can dynamically select non-dominated solution in each prediction according to the time-varying characteristics of wind speed. Four actual wind speed series are used to validate the proposed dynamic ensemble model. The results show that: (a) The proposed dynamic ensemble model is competitive for wind speed prediction. It significantly outperforms five classic intelligent prediction models and six ensemble methods; (b) Every part of the proposed model is indispensable to improve the prediction accuracy.
引用
收藏
页数:15
相关论文
共 45 条
[1]  
[Anonymous], 2018, Global Wind Statistics 2017
[2]   An empirical investigation of bias and variance in time series forecasting: Modeling considerations and error evaluation [J].
Berardi, VL ;
Zhang, GP .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 2003, 14 (03) :668-679
[3]   Medium-term wind power forecasting based on multi-resolution multi-learner ensemble and adaptive model selection [J].
Chen, Chao ;
Liu, Hui .
ENERGY CONVERSION AND MANAGEMENT, 2020, 206
[4]   Wind speed forecasting using nonlinear-learning ensemble of deep learning time series prediction and extremal optimization [J].
Chen, Jie ;
Zeng, Guo-Qiang ;
Zhou, Wuneng ;
Du, Wei ;
Lu, Kang-Di .
ENERGY CONVERSION AND MANAGEMENT, 2018, 165 :681-695
[5]   A novel combined model based on echo state network for multi-step ahead wind speed forecasting: A case study of NREL [J].
Chen, Yanhua ;
He, Zhaoshuang ;
Shang, Zhihao ;
Li, Caihong ;
Li, Lian ;
Xu, Mingliang .
ENERGY CONVERSION AND MANAGEMENT, 2019, 179 :13-29
[6]   A new combined model based on multi-objective salp swarm optimization for wind speed forecasting [J].
Cheng, Zishu ;
Wang, Jiyang .
APPLIED SOFT COMPUTING, 2020, 92
[7]   Comparing Predictive Accuracy, Twenty Years Later: A Personal Perspective on the Use and Abuse of Diebold-Mariano Tests [J].
Diebold, Francis X. .
JOURNAL OF BUSINESS & ECONOMIC STATISTICS, 2015, 33 (01)
[8]  
Dzeroski S, 2004, MACH LEARN, V54, P255, DOI 10.1023/B.MAC.0000015881.36452.6e
[9]   FINDING STRUCTURE IN TIME [J].
ELMAN, JL .
COGNITIVE SCIENCE, 1990, 14 (02) :179-211
[10]   Examining the applicability of different sampling techniques in the development of decomposition-based streamflow forecasting models [J].
Fang, Wei ;
Huang, Shengzhi ;
Ren, Kun ;
Huang, Qiang ;
Huang, Guohe ;
Cheng, Guanhui ;
Li, Kailong .
JOURNAL OF HYDROLOGY, 2019, 568 :534-550