Integrating BIM and machine learning to predict carbon emissions under foundation materialization stage: Case study of China's 35 public buildings

IF 3.1 1区 艺术学 0 ARCHITECTURE
Haining Wang , Yue Wang , Liang Zhao , Wei Wang , Zhixing Luo , Zixiao Wang , Jinghui Luo , Yihan Lv
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引用次数: 0

Abstract

For the significant energy consumption and environmental impact, it is crucial to identify the carbon emission characteristics of building foundations construction during the design phase. This study would like to establish a process-based carbon evaluating model, by adopting Building Information Modeling (BIM), and calculated the materialization-stage carbon emissions of building foundations without basement space in China, and identifying factors influencing the emissions through correlation analysis. These five factors include the building function type, building structure type, foundation area, foundation treatment method, and foundation depth. Additionally, this study develops several machine learning-based predictive models, including Decision Tree, Random Forest, XGBoost, and Neural Network. Among these models, XGBoost demonstrates a relatively higher degree of accuracy and minimal errors, can achieve the RMSE of 206.62 and R2 of 0.88 based on testing group feedback. The study reveals a substantial variability carbon emissions per building's floor area of foundations, ranging from 100 to 2000 kgCO2e/m2, demonstrating the potential for optimizing carbon emissions during the design phase of buildings. Besides, materials contribute significantly to total carbon emissions, accounting for 78%–97%, suggesting a significant opportunity for using BIM technology in the design phase to optimize carbon reduction efforts.

整合 BIM 和机器学习,预测地基实体化阶段的碳排放:中国 35 座公共建筑案例研究
建筑地基基础施工对能源消耗和环境影响巨大,因此在设计阶段识别建筑地基基础施工的碳排放特征至关重要。本研究希望通过采用建筑信息模型(BIM),建立基于过程的碳评价模型,计算我国无地下室空间建筑地基基础物化阶段的碳排放量,并通过相关性分析找出影响碳排放量的因素。这五个因素包括建筑功能类型、建筑结构类型、地基面积、地基处理方法和地基深度。此外,本研究还开发了几种基于机器学习的预测模型,包括决策树、随机森林、XGBoost 和神经网络。在这些模型中,XGBoost 的准确度相对较高,误差最小,基于测试组反馈的 RMSE 为 206.62,R2 为 0.88。研究显示,地基每建筑面积的碳排放量变化很大,从 100 kgCO2e/m2 到 2000 kgCO2e/m2 不等,显示了在建筑设计阶段优化碳排放量的潜力。此外,材料对总碳排放量的影响很大,占 78%-97%,这表明在设计阶段使用 BIM 技术优化碳减排工作大有可为。
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来源期刊
CiteScore
6.20
自引率
2.90%
发文量
430
审稿时长
30 weeks
期刊介绍: Frontiers of Architectural Research is an international journal that publishes original research papers, review articles, and case studies to promote rapid communication and exchange among scholars, architects, and engineers. This journal introduces and reviews significant and pioneering achievements in the field of architecture research. Subject areas include the primary branches of architecture, such as architectural design and theory, architectural science and technology, urban planning, landscaping architecture, existing building renovation, and architectural heritage conservation. The journal encourages studies based on a rigorous scientific approach and state-of-the-art technology. All published papers reflect original research works and basic theories, models, computing, and design in architecture. High-quality papers addressing the social aspects of architecture are also welcome. This journal is strictly peer-reviewed and accepts only original manuscripts submitted in English.
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