Deep Learning Based Densely Connected Network for Load Forecasting

被引:78
作者
Li, Zhuoling [1 ]
Li, Yuanzheng [1 ]
Liu, Yun [2 ]
Wang, Ping [3 ]
Lu, Renzhi [1 ]
Gooi, Hoay Beng [4 ]
机构
[1] Huazhong Univ Sci & Technol, Key Lab Image Proc & Intelligence Control, Minist Educ, Sch Artificial Intelligence & Automat, Wuhan 430074, Peoples R China
[2] South China Univ Technol, Sch Elect Power Engn, Guangzhou 510641, Peoples R China
[3] York Univ, Lassonde Sch Engn, Dept Elect Engn & Comp Sci, Toronto, ON M3J 1P3, Canada
[4] Nanyang Technol Univ, Sch Elect & Elect Engn, Singapore 639798, Singapore
基金
中国国家自然科学基金;
关键词
Deep learning; densely connected network; load forecasting; quantile regression; unshared convolution; DISTRIBUTION-SYSTEM; NEURAL-NETWORKS; MODEL; ALGORITHM;
D O I
10.1109/TPWRS.2020.3048359
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
Load forecasting is of crucial importance for operations of electric power systems. In recent years, deep learning based methods are emerging for load forecasting because their strong nonlinear approximation capabilities can provide more forecasting precision than conventional statistical methods. However, they usually suffer from some problems, e.g., the gradient vanishment and over-fitting. In order to address these problems, an unshared convolution based deep learning model with densely connected network is proposed. In this model, the backbone is the unshared convolutional neural network and a densely connected structure is adopted, which could alleviate the gradient vanishment. What is more, we use a regularization method named clipped L-2 -norm to overcome over-fitting, and design a trend decomposition strategy to address the possible distribution differences between the training and validation data. Finally, we conduct five case studies to verify the outperformance of our proposed deep learning model for deterministic and interval load forecasting. Two high-voltage and an medium-voltage real load datasets from Australia, Germany and America are used for model training and validation, respectively. Results show that the proposed model can achieve higher load forecasting accuracy, compared with other existing methods including the popular conventional methods such as naive forecast and generalized additive model, and deep learning methods, e.g., long short-term memory network, convolutional neural network, fully connected network, etc.
引用
收藏
页码:2829 / 2840
页数:12
相关论文
共 57 条
[51]  
Srivastava N, 2014, J MACH LEARN RES, V15, P1929
[52]   Conditional Residual Modeling for Probabilistic Load Forecasting [J].
Wang, Yi ;
Chen, Qixin ;
Zhang, Ning ;
Wang, Yishen .
IEEE TRANSACTIONS ON POWER SYSTEMS, 2018, 33 (06) :7327-7330
[53]   An Ensemble Forecasting Method for the Aggregated Load With Subprofiles [J].
Wang, Yi ;
Chen, Qixin ;
Sun, Mingyang ;
Kang, Chongqing ;
Xia, Qing .
IEEE TRANSACTIONS ON SMART GRID, 2018, 9 (04) :3906-3908
[54]   Multiple Kernel Learning-Based Transfer Regression for Electric Load Forecasting [J].
Wu, Di ;
Wang, Boyu ;
Precup, Doina ;
Boulet, Benoit .
IEEE TRANSACTIONS ON SMART GRID, 2020, 11 (02) :1183-1192
[55]   A hybrid model based on modified multi-objective cuckoo search algorithm for short-term load forecasting [J].
Wu, Zhuochun ;
Zhao, Xiaochen ;
Ma, Yuqing ;
Zhao, Xinyan .
APPLIED ENERGY, 2019, 237 :896-909
[56]   A Data-Driven Bottom-Up Approach for Spatial and Temporal Electric Load Forecasting [J].
Ye, Chengjin ;
Ding, Yi ;
Wang, Peng ;
Lin, Zhenzhi .
IEEE TRANSACTIONS ON POWER SYSTEMS, 2019, 34 (03) :1966-1979
[57]   An Improved Quantile Regression Neural Network for Probabilistic Load Forecasting [J].
Zhang, Wenjie ;
Quan, Hao ;
Srinivasan, Dipti .
IEEE TRANSACTIONS ON SMART GRID, 2019, 10 (04) :4425-4434