An electricity load forecasting model for Integrated Energy System based on BiGAN and transfer learning

Integrated Energy System (IES) is able to collaborate various energy systems and boost energy supply efficiency. To further facilitate the energy scheduling in IES, load forecasting model of the system is required to describe the conditions continuously on a future time span. While the IES is a serv...

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Main Authors: Dengji Zhou, Shixi Ma, Jiarui Hao, Dong Han, Dawen Huang, Siyun Yan, Taotao Li
Format: Article
Language:English
Published: Elsevier 2020-11-01
Series:Energy Reports
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S235248472031711X
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spelling doaj-4fd60a8b19d84dd195d0279f26a9ec832020-12-23T05:02:53ZengElsevierEnergy Reports2352-48472020-11-01634463461An electricity load forecasting model for Integrated Energy System based on BiGAN and transfer learningDengji Zhou0Shixi Ma1Jiarui Hao2Dong Han3Dawen Huang4Siyun Yan5Taotao Li6The Key Laboratory of Power Machinery and Engineering of Education Ministry, Shanghai Jiao Tong University, Shanghai 200240, PR China; Corresponding author.The Key Laboratory of Power Machinery and Engineering of Education Ministry, Shanghai Jiao Tong University, Shanghai 200240, PR ChinaThe Key Laboratory of Power Machinery and Engineering of Education Ministry, Shanghai Jiao Tong University, Shanghai 200240, PR ChinaDepartment of Electrical Engineering, University of Shanghai for Science and Technology, Shanghai 200093, PR ChinaThe Key Laboratory of Power Machinery and Engineering of Education Ministry, Shanghai Jiao Tong University, Shanghai 200240, PR ChinaThe Key Laboratory of Power Machinery and Engineering of Education Ministry, Shanghai Jiao Tong University, Shanghai 200240, PR ChinaThe Key Laboratory of Power Machinery and Engineering of Education Ministry, Shanghai Jiao Tong University, Shanghai 200240, PR ChinaIntegrated Energy System (IES) is able to collaborate various energy systems and boost energy supply efficiency. To further facilitate the energy scheduling in IES, load forecasting model of the system is required to describe the conditions continuously on a future time span. While the IES is a service model with frequent in-and-out users which are always dynamically changed, thus the dataset for some new users is always not enough sufficient to build the predicting model. Most of present researches focus on model refinement and accuracy boosting but rarely consider such data lack problem in IES. To tackle this issue, an integrated load forecasting model based on Bidirectional Generative Adversarial Networks (BiGAN) data augmentation and transfer learning techniques is proposed in this paper. Ten different types of data-driven models including the proposed model have been compared on two cases, resident and commercial users, in order to carry out the ablation and contrast experiment. Accuracy with the presented model is 2.08% and 1.50% higher than the original model averagely on resident and commercial users respectively, proving the effectiveness of the new model. And impact of sample size is analyzed and disclosed the effect patterns of the two modules. Result shows that the two modules can flexibly couple with different predictive models and boost their efficiency on both resident and commercial cases on data missing problem. And load forecasting becomes feasible for users with fewer samples or even zero samples when adopting the proposed framework.http://www.sciencedirect.com/science/article/pii/S235248472031711XIntegrated energy systemDeep learningLoad forecastBidirectional Generative Adversarial NetworksTransfer learning
collection DOAJ
language English
format Article
sources DOAJ
author Dengji Zhou
Shixi Ma
Jiarui Hao
Dong Han
Dawen Huang
Siyun Yan
Taotao Li
spellingShingle Dengji Zhou
Shixi Ma
Jiarui Hao
Dong Han
Dawen Huang
Siyun Yan
Taotao Li
An electricity load forecasting model for Integrated Energy System based on BiGAN and transfer learning
Energy Reports
Integrated energy system
Deep learning
Load forecast
Bidirectional Generative Adversarial Networks
Transfer learning
author_facet Dengji Zhou
Shixi Ma
Jiarui Hao
Dong Han
Dawen Huang
Siyun Yan
Taotao Li
author_sort Dengji Zhou
title An electricity load forecasting model for Integrated Energy System based on BiGAN and transfer learning
title_short An electricity load forecasting model for Integrated Energy System based on BiGAN and transfer learning
title_full An electricity load forecasting model for Integrated Energy System based on BiGAN and transfer learning
title_fullStr An electricity load forecasting model for Integrated Energy System based on BiGAN and transfer learning
title_full_unstemmed An electricity load forecasting model for Integrated Energy System based on BiGAN and transfer learning
title_sort electricity load forecasting model for integrated energy system based on bigan and transfer learning
publisher Elsevier
series Energy Reports
issn 2352-4847
publishDate 2020-11-01
description Integrated Energy System (IES) is able to collaborate various energy systems and boost energy supply efficiency. To further facilitate the energy scheduling in IES, load forecasting model of the system is required to describe the conditions continuously on a future time span. While the IES is a service model with frequent in-and-out users which are always dynamically changed, thus the dataset for some new users is always not enough sufficient to build the predicting model. Most of present researches focus on model refinement and accuracy boosting but rarely consider such data lack problem in IES. To tackle this issue, an integrated load forecasting model based on Bidirectional Generative Adversarial Networks (BiGAN) data augmentation and transfer learning techniques is proposed in this paper. Ten different types of data-driven models including the proposed model have been compared on two cases, resident and commercial users, in order to carry out the ablation and contrast experiment. Accuracy with the presented model is 2.08% and 1.50% higher than the original model averagely on resident and commercial users respectively, proving the effectiveness of the new model. And impact of sample size is analyzed and disclosed the effect patterns of the two modules. Result shows that the two modules can flexibly couple with different predictive models and boost their efficiency on both resident and commercial cases on data missing problem. And load forecasting becomes feasible for users with fewer samples or even zero samples when adopting the proposed framework.
topic Integrated energy system
Deep learning
Load forecast
Bidirectional Generative Adversarial Networks
Transfer learning
url http://www.sciencedirect.com/science/article/pii/S235248472031711X
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