A two-stage imputation method for enhancing urban building energy data resilience using Bayesian inference
  • Lee, Gowoon
  • Choi, Sebin
  • Choi, Youngwoong
  • Koo, Jabeom
  • Kim, Deuk-Woo
  • ... Yoon, Sungmin
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초록

As advanced techniques such as artificial intelligence and digital twins become increasingly integrated into urban systems, effective management of missing data is becoming more important in urban areas. A total of 8,603 buildings were found to have one or more missing data in their 2018 monthly electricity consumption data, out of about 440,000 buildings in Seoul. There were four types of missing data, consecutive missing type, nonconsecutive missing type, and mixed missing type and full missing type. This study proposes a two-stage imputation method, which integrates machine learning and Bayesian inference techniques. This method was applied to six real-world buildings in Seoul. The case study identified three key findings. First, the imputation results achieved CVRMSE values ranging from 3.88 % to 12.18 %. Second, the method demonstrated effectiveness across diverse types of missing data. Third, the proposed method can effectively handle cases with up to seven missing data points. This method not only enhances the integrity of urban data but also contributes to datadriven analysis and decision-making processes within urban systems.

키워드

Urban building energy modelingData imputationMissing dataMachine learningBayesian inferenceUrban digital twinCHANGE-POINTBIG DATAMODELSPATTERNS
제목
A two-stage imputation method for enhancing urban building energy data resilience using Bayesian inference
저자
Lee, GowoonChoi, SebinChoi, YoungwoongKoo, JabeomKim, Deuk-WooYoon, Sungmin
DOI
10.1016/j.enbuild.2025.116515
발행일
2025-12-15
유형
Article
저널명
Energy and Buildings
349