数据驱动的建筑环境影响评估解决方案

Qifeng Zhou, Hao Zhou, Yimin Zhu, Tao Li
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引用次数: 5

摘要

生命周期评价(LCA)作为一种评价产品环境负荷的决策支持工具,在许多领域得到了广泛的应用。然而,在建筑行业中应用LCA是昂贵且耗时的。这是由于建筑结构的复杂性以及大量高维异构建筑数据。迄今为止,建筑环境影响评价(BEIA)是一个重要但未得到充分重视的问题。本文简要介绍了BEIA的概况,并探讨了使用数据挖掘技术发现建筑材料与环境影响之间关系的潜在优势。我们将BEIA的三个重要问题归纳为一系列数据挖掘问题,并提出相应的解决方案。具体而言,首先,提出了基于实际需求和建筑特点的特征选择方法进行评价分析;其次,提出了基于约束的聚类集合选择统一框架,将环境影响评价范围从建筑层面扩展到区域层面;最后,提出了一种多异构聚类方法来帮助可持续的新建筑设计。我们希望我们的建议能够阐明数据驱动的环境影响评估方法。
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Data-driven solutions for building environmental impact assessment
Life cycle assessment (LCA) as a decision support tool for evaluating the environmental load of products has been widely used in many fields. However, applying LCA in the building industry is expensive and time consuming. This is due to the complexity of building structure along with a large amount of high-dimensional heterogeneous building data. So far building environmental impact assessment (BEIA) is an important yet under-addressed issue. This paper gives a brief survey of BEIA and investigates potential advantages of using data mining techniques to discover the relationships between building materials and environment impacts. We formulate three important BEIA issues as a series of data mining problems, and propose corresponding solution schemes. Specifically, first, a feature selection approach is proposed based on the practical demand and construction characteristics to perform assessment analysis. Second, a unified framework for solving constraint-based clustering ensemble selection is proposed to extend the environmental impact assessment range from the building level to the regional level. Finally, a multiple disparate clustering method is presented to help sustainable new buildings design. We expect our proposal would shed light on data-driven approaches for environment impact assessment.
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