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The Method of Quantitative Analysis Based on Big Data Analysis for Explanatory Variables Containing Uncertainty of Energy Consumption in Residential Buildings - Focused on Apartment in Seoul Korea

주거용 건물의 에너지 실사용량의 불확실성을 내포한 설명변수 인자에 대한 빅데이터 분석 기반의 정량화 방법 - 서울지역의 공동주택을 중심으로

  • Choi, Jun-Woo (Division of New Business Dev. & Abroad Business, EAN Technology) ;
  • Ahn, Seung-Ho (Division of New Business Dev. & Abroad Business, EAN Technology) ;
  • Park, Byung-Hee (Division of New Business Dev. & Abroad Business, EAN Technology) ;
  • Ko, Jung-Lim (Division of New Business Dev. & Abroad Business, EAN Technology) ;
  • Shin, Jee-Woong (EAN Technology)
  • Received : 2017.05.18
  • Accepted : 2017.06.19
  • Published : 2017.06.30

Abstract

Purpose: The energy consumption of apartment units is affected by the lifestyle of the residents rather than system technology. In this study the numerical analysis of assumed energy consumption correlation factors with arbitrary value due to uncertainty. It is intended to be used as a simulation correction value which can be utilized as a predicted value of actual energy usage. The correction value of the simulation is set in the developed form of the existing process that derives the actual usage amount. The simulation results used in the existing evaluation system are used to maintain the useful value as the current system evaluation scale and predict the actual capacity. Method: The method of the study is to statistically analyze the data frames of all complexes capable of collecting the annual energy usage and to reconstruct the population by adding the variables that are expected to be correlated. Repeat the data frame configuration with variables that are assumed to be highly correlated with energy use levels. Determine whether there is correlation or not. The intensity of the external characteristics of the building equipment related to the energy consumption is presented as the quantitative value. Result: The correlation between electricity consumption and trading price since 2010 is analyzed as (Correlation coefficient 0.82). These results are higher than (Correlation coefficient 0.79), which is the correlation between residential area and trading price. This paper signifies the starting point of the methodology that broadens the field of view of verification of simulation feasibility limited to the prediction technique focused on the simulation tool and the element technology scope.The diversified phenomenon reproduction method develops the existing energy simulation method.It can be completed with a simulation methodology that can infer actual energy consumption.

Keywords

References

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Cited by

  1. Identification of Primary Factors Influencing Energy Consumption Patterns of Commercial and Residential Buildings vol.20, pp.6, 2017, https://doi.org/10.12813/kieae.2020.20.6.021
  2. Improvement Effect of Green Remodeling and Building Value Assessment Criteria for Aging Public Buildings vol.14, pp.4, 2017, https://doi.org/10.3390/en14041200