Research on Deep Learning Energy Consumption Prediction Based on Generating Confrontation Network

被引:13
作者
Fan, Shilong [1 ]
机构
[1] Jilin Normal Univ, Sch Educ Sci, Changchun 10203, Peoples R China
关键词
Energy consumption forecasting; deep learning; generating confrontation networks; spatial domain reconstruction; ELECTRICITY CONSUMPTION; MODELS; SYSTEM;
D O I
10.1109/ACCESS.2019.2949030
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
In the context of increasingly tight energy supply and rising prices, it is of great significance to carry out research on energy consumption prediction models with energy conservation as the goal. In order to improve energy efficiency, it is not only necessary to conduct statistics and analysis on energy historical data, but also to predict future energy data. In this paper, Bicubic interpolation algorithm and convolutional neural network are used to spatially predict energy consumption. The model framework structure for energy consumption prediction is given, and the two models are experimentally analyzed. The results show that the convolutional neural network is better than the Bicubic interpolation method, and the prediction result is closer to the actual value. For the high spatial complexity of energy consumption data, the definition and framework of the RessNetGAN model are first given. Secondly, the specific structure of the generator is given. How to extract the spatial eigenvalue of energy consumption through 3D convolution operation is introduced, and the experiment is carried out by changing the pooling parameters of the energy consumption to be predicted. The results show that the RessNetGAN model with generated confrontation structure has better prediction performance than the convolutional neural network model, and when the input energy consumption data is very low precision, there will be no serious distortion of the prediction result.
引用
收藏
页码:165143 / 165154
页数:12
相关论文
共 26 条
[1]   Supervised based machine learning models for short, medium and long-term energy prediction in distinct building environment [J].
Ahmad, Tanveer ;
Chen, Huanxin ;
Huang, Ronggeng ;
Guo Yabin ;
Wang, Jiangyu ;
Shair, Jan ;
Akram, Hafiz Muhammad Azeem ;
Mohsan, Syed Agha Hassnain ;
Kazim, Muhammad .
ENERGY, 2018, 158 :17-32
[2]  
Ahmed DA, 2017, MIDDLE EAST DEV J, V9, P127, DOI 10.1080/17938120.2017.1293361
[3]   Virtual Budget: Integration of electricity load and price anticipation for load morphing in price-directed energy utilization [J].
Alamaniotis, Miltiadis ;
Gatsis, Nikolaus ;
Tsoukalas, Lefteri H. .
ELECTRIC POWER SYSTEMS RESEARCH, 2018, 158 :284-296
[4]   Robust ensemble learning framework for day-ahead forecasting of household based energy consumption [J].
Alobaidi, Mohammad H. ;
Chebana, Fateh ;
Meguid, Mohamed A. .
APPLIED ENERGY, 2018, 212 :997-1012
[5]   Statistical Approaches to Forecasting Domestic Energy Consumption and Assessing Determinants: The Case of Nordic Countries [J].
Ardakani S.R. ;
Hossein S.M. ;
Aslani A. .
Strategic Planning for Energy and the Environment, 2018, 38 (01) :26-71
[6]   Electricity consumption forecasting for Turkey with nonhomogeneous discrete grey model [J].
Ayvaz, Berk ;
Kusakci, Ali Osman .
ENERGY SOURCES PART B-ECONOMICS PLANNING AND POLICY, 2017, 12 (03) :260-267
[7]   Energy-Aware Adaptive Restore Schemes for MLC STT-RAM Cache [J].
Chen, Xunchao ;
Khoshavi, Navid ;
DeMara, Ronald F. ;
Wang, Jun ;
Huang, Dan ;
Wen, Wujie ;
Chen, Yiran .
IEEE TRANSACTIONS ON COMPUTERS, 2017, 66 (05) :786-798
[8]  
Eder L V., 2017, Studies on Russian Economic Development, V28, P423, DOI DOI 10.1134/S1075700717040049
[9]   Forecasting performance of time series models on electricity spot markets [J].
Guertler, Marc ;
Paulsen, Thomas .
INTERNATIONAL JOURNAL OF ENERGY SECTOR MANAGEMENT, 2018, 12 (04) :617-640
[10]   Forecasting the daily electricity consumption in the Moscow region using artificial neural networks [J].
Ivanov V.V. ;
Kryanev A.V. ;
Osetrov E.S. .
Physics of Particles and Nuclei Letters, 2017, 14 (4) :647-657