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A BIM-Driven Dynamic LCA Framework for Net Carbon Accounting of Buildings: A Case Study in Hot-Summer Region of China

BIM駆動型動的LCAフレームワークによる建物の正味炭素会計:中国暑熱地域のケーススタディ (AI 翻訳)

Qinghe Liu, Shushan Li, Zujun Liu, Hongmei Li

Sustainability📚 査読済 / ジャーナル2026-05-08#炭素会計Origin: CN
DOI: 10.3390/su18104682
原典: https://doi.org/10.3390/su18104682

🤖 gxceed AI 要約

日本語

本研究は、BIMとLCAを統合した建物のライフサイクル炭素会計の自動化フレームワークを提案。中国南寧のオフィスビルを対象としたケーススタディでは、運用段階と建材生産段階が主要排出源であり、グリッド排出係数や主要材料係数が炭素排出量に大きな影響を与えることを示した。実用的な低炭素設計ツールとしての価値がある。

English

This study proposes an automated BIM-driven LCA framework for building lifecycle carbon accounting. A case study in Nanning, China, shows that operational and material production stages are major emission sources, and sensitivity analysis identifies grid emission factor and key material factors as critical variables. The framework offers a real-time data feedback tool for low-carbon building design and a transparent methodological reference.

Unofficial AI-generated summary based on the public title and abstract. Not an official translation.

📝 gxceed 編集解説 — Why this matters

日本のGX文脈において

日本でも建築物のライフサイクル炭素評価の重要性が高まっており、BIMとLCAの統合手法は、日本の建設業界における効率的な炭素会計の参考になる。ただし、中国固有の排出係数データベースに依存している点に注意。

In the global GX context

This paper contributes to global building carbon accounting literature by demonstrating a practical BIM-LCA integration with localized emission factors. The methodology aligns with lifecycle thinking in disclosure frameworks like TCFD and ISSB, though the data is specific to China. It highlights the potential for automated carbon tracking in building design.

👥 読者別の含意

🔬研究者:Provides a replicable BIM-LCA integration method and sensitivity analysis that can inform building carbon accounting research.

🏢実務担当者:Offers a tool for real-time carbon feedback during building design, aiding low-carbon optimization in engineering practice.

🏛政策担当者:Demonstrates a transparent accounting approach that could support building carbon reporting standards and regulations.

📄 Abstract(原文)

Addressing the prevalent issues of scattered data sources, reliance on multi-software collaboration, and low integration efficiency between Building Information Modeling (BIM) and Life Cycle Assessment (LCA) in current building life cycle carbon emission accounting, this study aims to construct a BIM-driven, data-traceable automated method for building life cycle carbon accounting. This paper proposes a life cycle carbon accounting framework based on Revit secondary development. By defining unified data mapping rules and constructing a scalable localized carbon emission factor database, this framework achieves a seamless workflow from BIM model information extraction and intelligent factor matching to phased accounting and report generation. Taking an office building in Nanning as an empirical case study, the results indicate that the operational stage and the building material production stage are the primary emission sources, accounting for 78.82% and 24.13% of the total emissions, respectively; the transportation stage accounts for 1.68%; the construction stage accounts for 0.40%; and the demolition and recycling stage exhibits negative emissions of –3.53% due to material recovery benefits. The accounting results of the developed plugin exhibit a relative error of 6.67% compared to traditional methods, and the robustness of the accounting framework is verified through uncertainty analysis. Sensitivity analysis further reveals that the grid emission factor, key material factors, and building design service life are the core variables affecting carbon emissions. The contribution of this study lies in proposing an operable and scalable BIM-LCA integrated solution. Its practical value resides in providing a real-time data feedback tool for low-carbon optimization during the building design stage, as well as offering a highly transparent methodological reference for carbon accounting in engineering practice, thereby supporting data-driven decision-making in the pursuit of sustainable urban development.

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