OPTIMIZATION OF BUILDING MATERIAL SELECTION FOR ENERGY SAVING IN COMMERCIAL BUILDINGS IN DIFFERENT CLIMATIC CONDITIONS

IF 0.7 4区 艺术学 0 ARCHITECTURE Journal of Green Building Pub Date : 2022-06-01 DOI:10.3992/jgb.17.3.89
Juntae Jake Son, Byeongjoon Noh, Hansaem Park
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Abstract

Most engineers predict future building energy consumption via simulation programs in the pre-design phase. In this process, many simulation steps have to be repeated to predict building energy consumption. The authors in this article proposed another way to select optimal building materials for saving commercial building energy in the U.S. using soft computing methods. To achieve the research goal, reliable public data that is provided by the U.S. Energy Information Administration was used. The data contain numerous energyrelated characteristics of buildings including gas, electricity, types of materials, and climate conditions of 6,700 commercial buildings located in the U.S. This study utilized two methods to find out optimal building materials for saving energy. First, the Principle Component Analysis was used to determine which building characteristics among over 400 characteristics have the greatest impact on gas and electricity consumption. Second, Association Rule Mining was used to extract combinations of optimal building materials. Since a building consists of a combination of various materials, energy simulation should predict for multiple factors rather than a single factor. The use of these methods would greatly reduce resources, such as limited budget and time, during the simulation process.
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不同气候条件下商业建筑节能用材的优化选择
大多数工程师在预设计阶段通过模拟程序预测未来建筑的能耗。在这个过程中,许多模拟步骤必须重复来预测建筑能耗。本文作者提出了另一种使用软计算方法来选择最优建筑材料以节省美国商业建筑能源的方法。为了实现研究目标,使用了美国能源信息管理局提供的可靠公共数据。这些数据包含了美国6700座商业建筑的许多与能源相关的特征,包括燃气、电力、材料类型和气候条件。本研究利用两种方法来寻找节能的最佳建筑材料。首先,使用主成分分析来确定400多个特征中的哪些建筑特征对燃气和电力消耗影响最大。其次,采用关联规则挖掘方法提取最优建筑材料组合;由于建筑物由多种材料组合而成,因此能源模拟应该预测多种因素,而不是单一因素。使用这些方法将大大减少模拟过程中有限的预算和时间等资源。
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来源期刊
CiteScore
2.30
自引率
7.10%
发文量
36
期刊介绍: The purpose of the Journal of Green Building is to present the very best peer-reviewed research in green building design, construction, engineering, technological innovation, facilities management, building information modeling, and community and urban planning. The Research section of the Journal of Green Building publishes peer-reviewed articles in the fields of engineering, architecture, construction, construction management, building science, facilities management, landscape architecture, interior design, urban and community planning, and all disciplines related to the built environment. In addition, the Journal of Green Building offers the following sections: Industry Corner that offers applied articles of successfully completed sustainable buildings and landscapes; New Directions in Teaching and Research that offers guidance from teachers and researchers on incorporating innovative sustainable learning into the curriculum or the likely directions of future research; and Campus Sustainability that offers articles from programs dedicated to greening the university campus.
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