Data-Driven Net-Zero Carbon Monitoring: Applications of Geographic Information Systems, Building Information Modelling, Remote Sensing, and Artificial Intelligence for Sustainable and Resilient Cities

Sustainability Pub Date : 2024-07-23 DOI:10.3390/su16156285
Jilong Li, S. Shirowzhan, G. Pignatta, S. Sepasgozar
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Abstract

NZCCs aim to minimise urban carbon emissions for healthier cities in line with national and international low-carbon targets and Sustainable Development Goals (SDGs). Many countries have recently adopted Net-Zero Carbon City (NZCC) policies and strategies. While there are many studies available on NZCC cities’ definitions and policymaking, currently, research is rare on understanding the role of urban data-driven technologies such as Building Information Modelling (BIM) and Geographic Information Systems (GIS), as well as AI, for achieving the goals of NZCCs in relation to sustainable development goals (SDGs), e.g., SDGs 3, 7,11, 13, and 17. This paper aims to fill this gap by establishing a systematic review and ascertaining the opportunities and barriers of data-driven approaches, analytics, digital technologies, and AI for supporting decision-making and monitoring progress toward achieving NZCC development and policy/strategy development. Two scholarly databases, i.e., Web of Science and Scopus databases, were used to find papers based on our selected relevant keywords. We also conducted a desktop review to explore policies, strategies, and visualisation technologies that are already being used. Our inclusion/exclusion criteria refined our selection to 55 papers, focusing on conceptual and theoretical research. While digital technologies and data analytics are improving and can help in the move from net-zero carbon concepts and theories to practical analysis and the evaluation of cities’ emission levels and in monitoring progress toward reducing carbon, our research shows that these capabilities of digital technologies are not used thoroughly yet to bridge theory and practice. These studies ignore advanced tools like city digital twins and GIS-based spatial analyses. No data, technologies, or platforms are available to track progress towards a NZCC. Artificial Intelligence, big data collection, and analytics are required to predict and monitor the time it takes for each city to achieve net-zero carbon emissions. GIS and BIM can be used to estimate embodied carbon and predict urban development emissions. We found that smart city initiatives and data-driven decision-making approaches are crucial for achieving NZCCs.
数据驱动的净零碳监测:地理信息系统、建筑信息建模、遥感和人工智能在可持续和弹性城市中的应用
净零碳城市(NZCC)旨在根据国家和国际低碳目标以及可持续发展目标(SDGs),最大限度地减少城市碳排放,建设更健康的城市。许多国家最近都采用了净零碳城市(NZCC)政策和战略。虽然有许多关于净零碳城市定义和决策的研究,但目前关于了解城市数据驱动技术(如建筑信息模型(BIM)和地理信息系统(GIS)以及人工智能)在实现与可持续发展目标(SDGs)(如 SDGs 3、7、11、13 和 17)相关的净零碳城市目标方面的作用的研究还很少。本文旨在通过系统回顾和确定数据驱动方法、分析、数字技术和人工智能在支持决策和监测实现新西兰国家协调委员会发展和政策/战略制定进展方面的机遇和障碍来填补这一空白。我们使用了两个学术数据库,即 Web of Science 和 Scopus 数据库,根据我们选定的相关关键词查找论文。我们还进行了桌面审查,以探索已在使用的政策、战略和可视化技术。我们的纳入/排除标准将我们的选题细化为 55 篇论文,重点关注概念和理论研究。尽管数字技术和数据分析正在不断改进,并有助于从净零碳概念和理论到实际分析、城市排放水平评估和减碳进展监测的转变,但我们的研究表明,数字技术的这些功能尚未被彻底用于连接理论和实践。这些研究忽视了城市数字孪生和基于地理信息系统的空间分析等先进工具。没有可用的数据、技术或平台来跟踪实现 NZCC 的进展。需要人工智能、大数据收集和分析来预测和监控每个城市实现净零碳排放所需的时间。地理信息系统(GIS)和建筑信息模型(BIM)可用于估算体现碳和预测城市发展排放。我们发现,智慧城市倡议和数据驱动的决策方法对于实现净零碳排放至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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