State Estimation of Integrated Energy System Based on Deep Neural Network

Author(s):  
Junwei Liu ◽  
Chunyang Liu ◽  
Haoran Zhao ◽  
Hang Liu ◽  
Sixiao Xin
2021 ◽  
Vol 282 ◽  
pp. 116105
Author(s):  
Suhan Zhang ◽  
Wei Gu ◽  
Haifeng Qiu ◽  
Shuai Yao ◽  
Guangsheng Pan ◽  
...  

2020 ◽  
Vol 185 ◽  
pp. 01032
Author(s):  
Xianjun Qi ◽  
Xiwei Zheng ◽  
Qinghui Chen

The accurate forecast of integrated energy loads, which has important practical significance, is the premise of the design, operation, scheduling and management of integrated energy systems. In order to make full use of the coupling characteristics of electricity, cooling and heating loads which is difficult to deal with by traditional methods, this paper proposes a new forecast model of integrated energy system loads based on the combination of convolutional neural network (CNN) and long short term memory (LSTM). Firstly, the Pearson correlation coefficients among the electricity, cooling and heating load series of the integrated energy system are calculated, and the results show that there is a strong coupling relationship between the loads of an integrated energy system. Then, the CNN-LSTM composite model is constructed, and CNN is used to extract the characteristic quantity which reflects the load coupling characteristics of the integrated energy system. Then, the characteristic quantity is converted into the time series input to LSTM, and the excellent time series processing ability of LSTM is used for load forecasting. The results show that the CNN-LSTM composite model proposed in this paper has higher prediction accuracy than the wavelet neural network model, CNN model and LSTM model.


2020 ◽  
Vol 15 (1) ◽  
pp. 149-163
Author(s):  
Qiuyue Chen ◽  
Dechang Yang ◽  
Yaning Wang ◽  
Christian Rehtanz ◽  
Hrvoje Pandžić

2020 ◽  
Author(s):  
Jonathan Ostrometzky ◽  
Konstantin Berestizshevsky ◽  
Andrey Bernstein ◽  
Gil Zussman

2021 ◽  
Vol 2087 (1) ◽  
pp. 012016
Author(s):  
Yao Wang ◽  
Xuxia Li ◽  
Yan Liang ◽  
Yingying Hu ◽  
Xiaoming Zheng ◽  
...  

Abstract Considering the correlation and nonlinear characteristics of multiple types of loads in the integrated energy system, grey relation analysis (GRA) and long short term Memory (LSTM) neural network are selected to establish the short-term load prediction model of the integrated energy system. The model uses GRA method to analyze the coupling between multiple types of loads and the meteorological factors, and then obtains the load forecast results through the LSTM prediction model. Finally, a practical example is given to verify the validity of the model.


2021 ◽  
Vol 256 ◽  
pp. 02032
Author(s):  
Zhijie Zheng ◽  
Liang Feng ◽  
Xuan Wang ◽  
Rui Liu ◽  
Xian Wang ◽  
...  

The complex coupling, coordination and complementarity of different energy in the integrated energy system puts forward higher requirements for the technology of multi-energy load forecasting. To this end, this paper proposes a novel multi-energy load forecasting model based on bi-directional gated recurrent unit (BiGRU) multi-task neural network. Firstly, through the correlation analysis, an effective multi-energy load input data set is constructed. Secondly, the input data set is utilized to train the BiGRU and master the evolution laws of multi-energy loads. Then, multi-task learning (MTL) is used to share the information learned by BiGRU from perspectives of different load forecasting tasks, so as to fully dig the coupling relations among various energy loads. Finally, different types of load forecasting results can be obtained. Simulation results show that BiGRU can simultaneously consider the known data of the past and the future, and it can learn more characteristic information effectively. At the same time, the proposed model utilizes MTL to carry out parallel learning and information sharing for forecasting tasks of various energy loads, which can dig the complex coupling relations among different types of loads more deeply, thus improving the forecasting accuracy of multi-energy loads.


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