Mitigating Grand Challenges in Life Cycle Inventory Modeling through the Applications of Large Language Models
Qingshi Tu,
Jing Guo,
Nan Li
et al.
Abstract:The accuracy of life cycle assessment (LCA) studies is often questioned due to the two grand challenges of life cycle inventory (LCI) modeling: (1) missing foreground flow data and (2) inconsistency in background data matching. Traditional mechanistic methods (e.g., process simulation) and existing machine learning (ML) methods (e.g., similarity-based selection methods) are inadequate due to their limitations in scalability and generalizability. The large language models (LLMs) are well-positioned to address t… Show more
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