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Attributional and Consequential Life Cycle Assessments: A Practice-Oriented Framework Integrating System Boundaries and Machine Learning

Vira Valasara et al · Taylor & Francis Group · 2026

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Life cycle assessment (LCA) is critical for credible climate decisions, although practice varies contextually. This review explains when to use attributional (ALCA) versus consequential (CLCA) LCAs, consolidating guidance from ISO 14040/14044 and related standards. We map common system boundaries for products and transport fuels (e.g., well-to-wheel and well-to-wake) to interpret comparative results consistently. Additionally, we outline life-cycle sustainability assessment (LCSA) pathways and their integration with environmental techno-economic analysis (e-TEA) to link environmental impacts with cost and performance for design and scale-up. Cross-sector syntheses (transport, electricity, industry, agriculture, commercial, buildings) reveal fit-for-purpose patterns and the benefits of time-resolved background data. A practice-oriented section surveys machine-learning uses inventory gap-filling and impact characterization support for ALCA; forecasting marginal emission factors and other decision-responsive signals for CLCA; and probabilistic uncertainty analysis with global sensitivity methods. Collectively, these steps translate into practically implementing our findings, strengthening the decision relevance, reproducibility, and durability of LCA across policy, corporate disclosure, and engineering design.

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APA 7

al, V. V. E. (2026). Attributional and Consequential Life Cycle Assessments: A Practice-Oriented Framework Integrating System Boundaries and Machine Learning. https://doi.org/10.1080/00219592.2026.2662789

MLA

al, Vira Valasara et. "Attributional and Consequential Life Cycle Assessments: A Practice-Oriented Framework Integrating System Boundaries and Machine Learning." 2026. https://doi.org/10.1080/00219592.2026.2662789.

Chicago

al, Vira Valasara et. 2026. "Attributional and Consequential Life Cycle Assessments: A Practice-Oriented Framework Integrating System Boundaries and Machine Learning.". https://doi.org/10.1080/00219592.2026.2662789.

Harvard

al, V. V. E. 2026, Attributional and Consequential Life Cycle Assessments: A Practice-Oriented Framework Integrating System Boundaries and Machine Learning, Taylor & Francis Group, available at: https://doi.org/10.1080/00219592.2026.2662789 [Accessed 29 Jun. 2026].

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Título
Attributional and Consequential Life Cycle Assessments: A Practice-Oriented Framework Integrating System Boundaries and Machine Learning
Autor / colaboradores
Vira Valasara et al
Editorial
Taylor & Francis Group
Año de publicación
2026
ISSN
0021-9592
ISSN
0021-9592
Idioma
eng

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