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Selection of target LEED credits based on project information and climatic factors using data mining techniques

机译:使用数据挖掘技术根据项目信息和气候因素选择目标LEED学分

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Developed by the United States Green Building Council, Leadership in Energy and Environmental Design (LEED) is a credit-based rating system that provides third-party verification for green buildings. Selection of target credits is important yet challenging for LEED managers because various factors such as target certification grade level and building features need to be considered on a case-by-case basis. Local climatic factors could affect the selection of green building technologies and hence the target credits, but currently there is no research suggesting target LEED credits based on climatic factors. This paper presents a methodology for the selection of target LEED credits based on project information and climatic factors. This study focuses on projects certified with LEED for Existing Buildings (LEED-EB). Information of 912 projects and their surrounding climatic circumstances was collected and studied. 55 classification models for 47 LEED-EB credits were then constructed and optimized using three classification algorithms - Random Forests, AdaBoost Decision Tree, and Support Vector Machine (SVM). The results showed that Random Forests performed the best in most of the 55 classification models. With a combination of the three algorithms, the trained classification models were used to develop a web-based decision support system for LEED credit selection. The system was tested using 20 recently certified LEED projects, and the results showed that our system had an accuracy of 82.56%.
机译:由美国绿色建筑委员会开发的能源与环境设计领导力(LEED)是一种基于信用的评级系统,可为绿色建筑提供第三方验证。目标学分的选择对LEED经理而言很重要,但也充满挑战,因为需要根据具体情况考虑各种因素,例如目标认证等级和建筑特征。当地的气候因素可能会影响绿色建筑技术的选择,从而影响目标学分,但目前尚无研究表明基于气候因素的目标LEED学分。本文提出了一种基于项目信息和气候因素选择目标LEED学分的方法。这项研究的重点是已通过LEED认证的现有建筑(LEED-EB)项目。收集并研究了912个项目及其周围气候情况的信息。然后使用三种分类算法(随机森林,AdaBoost决策树和支持向量机(SVM))构建和优化了47个LEED-EB信用的55个分类模型。结果表明,在55个分类模型中,随机森林表现最佳。结合这三种算法,将训练有素的分类模型用于开发基于Web的LEED信用选择决策支持系统。该系统使用了20个最近通过认证的LEED项目进行了测试,结果表明我们的系统的准确度为82.56%。

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