4.7 Review

Coupling big data and life cycle assessment: A review, recommendations, and prospects

Journal

ECOLOGICAL INDICATORS
Volume 153, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.ecolind.2023.110455

Keywords

Big life cycle analysis; Methodological framework; Multidimensional link; Spatiotemporal variation; Multi -flow and multi -node model

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Life Cycle Assessment (LCA) is a method focused on measuring indicators and making decisions in the environmental dimension. However, it faces difficulties in identifying interconnections and interactions between multidimensions, and capturing spatiotemporal variations effectively. To address these challenges, a universal methodological framework called big life cycle analysis (BigLCA) was proposed, which integrates multidimensional links and spatiotemporal variations through a spatiotemporal reference system, a modified multi-flow and multi-node model, a multi-layer indicator system, and iterative sensitivity analysis schemes.
Life cycle assessment (LCA) is a method that focuses on measuring indicators and making decisions in the environmental dimension. However, its isolation from economic, social, and other dimensions is difficult to identify the interconnections and interactions between multidimensions; its global and static perspectives fail to capture details of spatiotemporal variations effectively. These challenges limit the application of LCA for actual complex systems with multidimensional interweaving and high spatiotemporal heterogeneity. This necessitates an approach that can well quantify multidimensional links and spatiotemporal variations to close the gap. To this end, we reviewed approximately 150 papers recorded in Web of Science and Scopus databases to present the progress in the integration of LCA with different dimensions, and the development of dynamic and spatialized LCAs, as well as identify key challenges. Based on the literature review, we introduced the implications of big data (BD) for LCA to explore a theory for the coupling of BD and LCA. We specifically proposed a universal methodological framework of big life cycle analysis (BigLCA), including four practices: (1) building a spatiotemporal reference system to represent the study object, (2) developing a spatiotemporal inventory analysis scheme based on a modified multi-flow and multi-node model to calculate and integrate massive data, (3) introducing and combining a multi-layer indicator system and system dynamics model to quantify multidimensional indicators and identify their links, and (4) providing spatiotemporal contribution analysis and iterative sensitivity analysis schemes for scientific interpretation. The approach and framework can facilitate the understanding and discussions of the use of BD in LCA, which provides a new approach to improve the accuracy of indicator measurement and the effectiveness and applicability of decision-making.

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