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Article: A bi-directional missing data imputation scheme based on LSTM and transfer learning for building energy data

TitleA bi-directional missing data imputation scheme based on LSTM and transfer learning for building energy data
Authors
KeywordsDeep learning
Electric power
Building energy
Bi-directional estimation
Transfer learning
Missing data
Issue Date2020
Citation
Energy and Buildings, 2020, v. 216, article no. 109941 How to Cite?
Abstract© 2020 Elsevier B.V. Improving the energy efficiency of the buildings is a worldwide hot topic nowadays. To assist comprehensive analysis and smart management, high-quality historical data records of the energy consumption is one of the key bases. However, the energy data records in the real world always contain different kinds of problems. The most common problem is missing data. It is also one of the most frequently reported data quality problems in big data/machine learning/deep learning related literature in energy management. However, limited studied have been conducted to comprehensively discuss different kinds of missing data situations, including random missing, continuous missing, and large proportionally missing. Also, the methods used in previous literature often rely on linear statistical methods or traditional machine learning methods. Limited study has explored the feasibility of advanced deep learning and transfer learning techniques in this problem. To this end, this study proposed a methodology, namely the hybrid Long Short Term Memory model with Bi-directional Imputation and Transfer Learning (LSTM-BIT). It integrates the powerful modeling ability of deep learning networks and flexible transferability of transfer learning. A case study on the electric consumption data of a campus lab building was utilized to test the method. Results show that LSTM-BIT outperforms other methods with 4.24% to 47.15% lower RMSE under different missing rates.
Persistent Identifierhttp://hdl.handle.net/10722/287023
ISSN
2023 Impact Factor: 6.6
2023 SCImago Journal Rankings: 1.632
ISI Accession Number ID

 

DC FieldValueLanguage
dc.contributor.authorMa, Jun-
dc.contributor.authorCheng, Jack C.P.-
dc.contributor.authorJiang, Feifeng-
dc.contributor.authorChen, Weiwei-
dc.contributor.authorWang, Mingzhu-
dc.contributor.authorZhai, Chong-
dc.date.accessioned2020-09-07T11:46:17Z-
dc.date.available2020-09-07T11:46:17Z-
dc.date.issued2020-
dc.identifier.citationEnergy and Buildings, 2020, v. 216, article no. 109941-
dc.identifier.issn0378-7788-
dc.identifier.urihttp://hdl.handle.net/10722/287023-
dc.description.abstract© 2020 Elsevier B.V. Improving the energy efficiency of the buildings is a worldwide hot topic nowadays. To assist comprehensive analysis and smart management, high-quality historical data records of the energy consumption is one of the key bases. However, the energy data records in the real world always contain different kinds of problems. The most common problem is missing data. It is also one of the most frequently reported data quality problems in big data/machine learning/deep learning related literature in energy management. However, limited studied have been conducted to comprehensively discuss different kinds of missing data situations, including random missing, continuous missing, and large proportionally missing. Also, the methods used in previous literature often rely on linear statistical methods or traditional machine learning methods. Limited study has explored the feasibility of advanced deep learning and transfer learning techniques in this problem. To this end, this study proposed a methodology, namely the hybrid Long Short Term Memory model with Bi-directional Imputation and Transfer Learning (LSTM-BIT). It integrates the powerful modeling ability of deep learning networks and flexible transferability of transfer learning. A case study on the electric consumption data of a campus lab building was utilized to test the method. Results show that LSTM-BIT outperforms other methods with 4.24% to 47.15% lower RMSE under different missing rates.-
dc.languageeng-
dc.relation.ispartofEnergy and Buildings-
dc.subjectDeep learning-
dc.subjectElectric power-
dc.subjectBuilding energy-
dc.subjectBi-directional estimation-
dc.subjectTransfer learning-
dc.subjectMissing data-
dc.titleA bi-directional missing data imputation scheme based on LSTM and transfer learning for building energy data-
dc.typeArticle-
dc.description.naturelink_to_subscribed_fulltext-
dc.identifier.doi10.1016/j.enbuild.2020.109941-
dc.identifier.scopuseid_2-s2.0-85081932131-
dc.identifier.volume216-
dc.identifier.spagearticle no. 109941-
dc.identifier.epagearticle no. 109941-
dc.identifier.isiWOS:000530656800001-
dc.identifier.issnl0378-7788-

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