Abstract
When researching the energy consumption of residential buildings, it is becoming increasingly important to consider how residents use energy. With the advancement of computing power and data analysis techniques, it is now possible to analyze user information using big data techniques. Here, we endeavored to integrate user information with the physical characteristics of residential buildings to analyze how these elements impact energy consumption. Regression analysis was conducted to accurately identify the impact of each element on energy consumption. It was found that six elements were influential in all seasons: the number of exterior walls, housing direction, housing area, number of years occupied, number of household members, and the occupation of the household head. The elements that had an impact in each period were then derived. Based on the results of the regression analysis, input variables for the training of an artificial neural network (ANN) model were selected for each period, and residential energy consumption prediction models were implemented based on actual consumption. The elements identified as those affecting energy consumption, through regression analysis, can be used for implementing prediction models with advanced forms. This study is significant in that we derived influential elements from an integrative perspective.
Highlights
In 2019, the World Green Building Council reported that the energy used by buildings accounted for 30% of the world’s total energy consumption, with residential buildings representing the highest proportion (22%) [1]
Regional variables were applied to the analysis to use them as proxy variables that represent the geographic characteristics, social atmosphere, economic characteristics, and annual weather of each region
An increasing number of studies have been conducted on the energy consumption of residential buildings
Summary
In 2019, the World Green Building Council reported that the energy used by buildings accounted for 30% of the world’s total energy consumption, with residential buildings representing the highest proportion (22%) [1]. This demonstrates the necessity of preparing energy-saving measures for residential buildings [2]. To reduce energy consumption in buildings, various systems for managing energy have been introduced (e.g., the building energy management system (BEMS)), and energy-saving measures have been prepared (e.g., improving physical performances related to building energy). It is necessary to effectively conduct sustainable energy utilization by preparing an energy reduction plan that considers user features
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