A Short-Term Load Forecasting Model of LSTM Neural Network considering Demand Response
As one of the key technologies for accelerating the construction of the ubiquitous Internet of Things, demand response (DR) not only guides users to participate in power market operations but also increases the randomness of grid operations and the difficulty of load forecasting. In order to solve t...
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Format: | Article |
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Wiley
2021-01-01
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Series: | Complexity |
Online Access: | http://dx.doi.org/10.1155/2021/5571539 |
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author | Xifeng Guo Qiannan Zhao Shoujin Wang Dan Shan Wei Gong |
author_facet | Xifeng Guo Qiannan Zhao Shoujin Wang Dan Shan Wei Gong |
author_sort | Xifeng Guo |
collection | DOAJ |
description | As one of the key technologies for accelerating the construction of the ubiquitous Internet of Things, demand response (DR) not only guides users to participate in power market operations but also increases the randomness of grid operations and the difficulty of load forecasting. In order to solve the problem of rough feature engineering processing and low prediction accuracy, a short-term load forecasting model of LSTM neural network considering demand response is proposed. First of all, in view of the strong randomness and complexity of input features, the weighted method is used to process multiple input features to strengthen the contribution of effective features and tap the potential value of features. Secondly, an improved genetic algorithm (IGA) is used to obtain the best LSTM parameters; finally, the special gate structure of the LSTM model is used to selectively control the influence of input variables on the model parameters and perform load forecasting. The experimental results show that the research has high prediction accuracy and application value and provides a new way for the development of power load forecasting. |
format | Article |
id | doaj-art-3345dcc81d0e41aa99134a1a8c01e68c |
institution | Kabale University |
issn | 1076-2787 1099-0526 |
language | English |
publishDate | 2021-01-01 |
publisher | Wiley |
record_format | Article |
series | Complexity |
spelling | doaj-art-3345dcc81d0e41aa99134a1a8c01e68c2025-02-03T05:52:27ZengWileyComplexity1076-27871099-05262021-01-01202110.1155/2021/55715395571539A Short-Term Load Forecasting Model of LSTM Neural Network considering Demand ResponseXifeng Guo0Qiannan Zhao1Shoujin Wang2Dan Shan3Wei Gong4Information & Control Engineering Faculty, Shenyang Jianzhu University, Shenyang 110168, ChinaInformation & Control Engineering Faculty, Shenyang Jianzhu University, Shenyang 110168, ChinaInformation & Control Engineering Faculty, Shenyang Jianzhu University, Shenyang 110168, ChinaInformation & Control Engineering Faculty, Shenyang Jianzhu University, Shenyang 110168, ChinaInformation & Control Engineering Faculty, Shenyang Jianzhu University, Shenyang 110168, ChinaAs one of the key technologies for accelerating the construction of the ubiquitous Internet of Things, demand response (DR) not only guides users to participate in power market operations but also increases the randomness of grid operations and the difficulty of load forecasting. In order to solve the problem of rough feature engineering processing and low prediction accuracy, a short-term load forecasting model of LSTM neural network considering demand response is proposed. First of all, in view of the strong randomness and complexity of input features, the weighted method is used to process multiple input features to strengthen the contribution of effective features and tap the potential value of features. Secondly, an improved genetic algorithm (IGA) is used to obtain the best LSTM parameters; finally, the special gate structure of the LSTM model is used to selectively control the influence of input variables on the model parameters and perform load forecasting. The experimental results show that the research has high prediction accuracy and application value and provides a new way for the development of power load forecasting.http://dx.doi.org/10.1155/2021/5571539 |
spellingShingle | Xifeng Guo Qiannan Zhao Shoujin Wang Dan Shan Wei Gong A Short-Term Load Forecasting Model of LSTM Neural Network considering Demand Response Complexity |
title | A Short-Term Load Forecasting Model of LSTM Neural Network considering Demand Response |
title_full | A Short-Term Load Forecasting Model of LSTM Neural Network considering Demand Response |
title_fullStr | A Short-Term Load Forecasting Model of LSTM Neural Network considering Demand Response |
title_full_unstemmed | A Short-Term Load Forecasting Model of LSTM Neural Network considering Demand Response |
title_short | A Short-Term Load Forecasting Model of LSTM Neural Network considering Demand Response |
title_sort | short term load forecasting model of lstm neural network considering demand response |
url | http://dx.doi.org/10.1155/2021/5571539 |
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