数据科学在建筑碳足迹管理中的应用:系统的文献综述

I. Sandaruwan, Jab Janardana, K. Waidyasekara
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引用次数: 0

摘要

建筑对气候变化有重大影响。建筑行业是世界上最大的能源消耗者,建筑的运行占其生命周期总能耗的80-90%。由于数据科学领域的快速发展和运营建筑数据可用性的扩展,用于建筑物碳足迹管理的数据驱动解决方案具有巨大的潜力。因此,本研究的目的是调查数据科学在建筑碳足迹管理中的潜在应用。本研究采用系统的文献回顾法作为研究方法。因此,使用内容分析技术审查了31份出版物。研究显示,数据科学在楼宇碳足迹管理方面的主要应用包括:促进楼宇运行数据的预处理、楼宇故障检测和诊断、楼宇废物管理、楼宇能源表现建模、在设计阶段进行参数分析、楼宇设计的能源效率评估、基准评估、控制优化和改造分析。此外,该研究建议对自动化和构建可操作的数据预处理任务进行更多的研究,为所有可能的错误操作收集足够的标记数据,并应用现代大数据管理工具和先进的分析技术,以改善数据科学在建筑环境中的应用。这项研究的结果为建筑业界、资讯科技业界、学术人士、非政府机构和其他有关当局提供了更好的指导,以利用数据科学应用解决建筑物的碳足迹问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data science applications for carbon footprint management in buildings: a systematic literature review
Buildings have a significant impact on climate change. The building industry is the world’s biggest energy consumer and the building's operation accounts for 80–90% of its total energy consumption over its lifetime. Data-driven solutions for the management of carbon footprint in buildings have great potential due to the data science field's rapid growth and the expansion of operational building data availability. Therefore, this study's aim is set as to investigate the potential applications of data science for the management of carbon footprint in buildings. The study adopted a systematic literature review as a research methodology. Accordingly, 31 publications were reviewed using the content analysis technique. The study revealed that facilitating pre-process of the operational data of buildings, fault detection and diagnosis, implementing waste management in buildings, conducting the building energy performance modelling, conducting the parametric analysis at the design phase, evaluating the energy efficiency of building designs, benchmarking evaluation, control optimisation and retrofitting analysis are the major applications of data science to the management of carbon footprint in buildings. Moreover, the study suggested carrying more studies should be done on automating and building operational data pre-processing tasks, gathering sufficient labelled data for all possible faulty operations and applying modern big data management tools and advanced analytics techniques lead to improve the applications of data science in the built environment. The results from this study provide better guidance to building sector stakeholders, information technology sector stakeholders, academic persons, non-governmental organisations (NGOs) and other relevant authorities to address the carbon footprint in buildings using data science applications.
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