AI-driven green processing and life cycle assessment for sustainable perovskite solar cells
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초록

Despite rapid advances in perovskite solar cells, solvent selection remains a central determinant of safety, process robustness, and end-of-life outcomes. These constraints are multi-dimensional and involve competing trade-offs, making them challenging to resolve through experimental optimization alone. This Perspective integrates green solvent engineering with artificial intelligence (AI) and life cycle assessment (LCA) to provide a unified sustainability framework. We discuss solvent-precursor coordination and processing-window robustness as governing factors. We also highlight how AI can accelerate solvent discovery and reduce key life cycle inventory gaps, while LCA quantifies trade-offs and mitigates burden shifting. This combined lens clarifies sustainability-relevant priorities for the field.

키워드

HALIDE PEROVSKITESIONIC LIQUIDSOLVENTANTISOLVENTSECOTOXICITYEFFICIENCYWATER
제목
AI-driven green processing and life cycle assessment for sustainable perovskite solar cells
저자
Kim, Hee JungChen, WenningLee, Jae MyeongJung, Hyun Suk
DOI
10.1038/s41467-026-73255-1
발행일
2026-05-20
유형
Article
저널명
Nature Communications
17
1