A multi-source transfer learning model based on LSTM and domain adaptation for building energy prediction

被引:52
作者
Lu, Huiming [1 ]
Wu, Jiazheng [1 ]
Ruan, Yingjun [1 ]
Qian, Fanyue [1 ]
Meng, Hua [1 ]
Gao, Yuan [2 ]
Xu, Tingting [1 ]
机构
[1] Tongji Univ, Coll Mech & Energy Engn, Shanghai 200092, Peoples R China
[2] Univ Tokyo, Grad Sch Engn, Dept Architecture, Tokyo, Japan
关键词
Building energy prediction; Transfer learning; Multi; -source; Energy consumption; Domain adaptation; LOAD;
D O I
10.1016/j.ijepes.2023.109024
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Transfer learning can use the knowledge learned from the operating data of other buildings to facilitate the energy prediction of a target building. However, most of the current research focuses on the transfer of a single source building of the same type or from the same region. A single source domain produces domain shift due to the difficulty of aligning the distribution with the target domain. To address this problem, this paper proposes a novel multi-source transfer learning energy prediction model based on long short-term memory (LSTM) and multi-kernel maximum mean difference (MK-MMD) domain adaptation. This model was used for the short-term energy prediction of different types of buildings lacking historical data. In addition, dynamic time warping (DTW) was used to select the source domain. Multiple multi-source models and corresponding single-source models were compared on a collection of buildings in the Higashida area of Fukuoka Prefecture, Japan. On the experimental datasets, the results showed that DTW relatively accurately measured the similarity between building energy consumption datasets. Compared with the results of the single-source transfer learning models, the multi-source transfer learning models achieved better average prediction performance, and their mean ab-solute percentage error (MAPE) improved the prediction accuracy by 6.88-15.37%.
引用
收藏
页数:18
相关论文
共 48 条
[1]   Short-term hourly load forecasting using time-series modeling with peak load estimation capability [J].
Amjady, N .
IEEE TRANSACTIONS ON POWER SYSTEMS, 2001, 16 (04) :798-805
[2]  
[Anonymous], 2012, Advances in neural information processing systems
[3]  
[Anonymous], 2010, Proceedings of the Thirteenth International Conference on Artificial Intelligence and Statistics, PMLR
[4]   Day-ahead building-level load forecasts using deep learning vs. traditional time-series techniques [J].
Cai, Mengmeng ;
Pipattanasomporn, Manisa ;
Rahman, Saifur .
APPLIED ENERGY, 2019, 236 :1078-1088
[5]  
China Building Energy Conservation Association, 2021, Build. Energy Effic, P1, DOI DOI 10.3969/J.ISSN.2096-9422.2021.02.001
[6]  
Cuturi M, 2017, PR MACH LEARN RES, V70
[7]   Artificial Neural Networks to assess energy and environmental performance of buildings: An Italian case study [J].
D'Amico, A. ;
Ciulla, G. ;
Traverso, M. ;
Lo Brano, V. ;
Palumbo, E. .
JOURNAL OF CLEANER PRODUCTION, 2019, 239
[8]  
Dai W., 2007, P 24 INT C ICML 2007, P20, DOI [10.1145/1273496.1273521, DOI 10.1145/1273496.1273521]
[9]   A survey on ensemble learning [J].
Dong, Xibin ;
Yu, Zhiwen ;
Cao, Wenming ;
Shi, Yifan ;
Ma, Qianli .
FRONTIERS OF COMPUTER SCIENCE, 2020, 14 (02) :241-258
[10]   Data-centric or algorithm-centric: Exploiting the performance of transfer learning for improving building energy predictions in data-scarce context [J].
Fan, Cheng ;
Lei, Yutian ;
Sun, Yongjun ;
Piscitelli, Marco Savino ;
Chiosa, Roberto ;
Capozzoli, Alfonso .
ENERGY, 2022, 240