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Advancements of large language models for enhancing carbon capture technologies:A comprehensive review
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作者 yangyimin Xue Manying Liu +4 位作者 Kuiyuan Wang yuwan yang Yongqiang Cheng Xinhui Ma Yuanting Qiao 《Chain》 2025年第2期131-147,共17页
This paper reviews the current research status,challenges,and prospects of applying large language models(LLMs)in carbon capture technologies.The review emphasizes the importance of interdisciplinary research,integrat... This paper reviews the current research status,challenges,and prospects of applying large language models(LLMs)in carbon capture technologies.The review emphasizes the importance of interdisciplinary research,integrating AI into chemistry,engineering,and environmental science to address complex challenges in carbon capture.It provides a detailed analysis of how LLMs can be utilized across various stages of carbon capture,from experimental design to industry implementation,showcasing their potential to accelerate innovation.It also reveals the use of LLMs to support gathering and analyzing sustainable information,such as carbon tax,carbon footprint,and social analysis.LLMs not only show great potential in designing and discovering materials for carbon capture technologies but also are promising to accelerate the whole industry's development through their powerful data processing and pattern recognition capabilities.In addition,the review paper also discusses challenges in the application of LLMs for carbon capture technologies and future directions and prospects. 展开更多
关键词 large language models carbon capture artificial intelligence machine learning
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