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Autores principales: Emer, Lorenzo, Mina, Andrea, Vandin, Andrea
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2509.10109
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author Emer, Lorenzo
Mina, Andrea
Vandin, Andrea
author_facet Emer, Lorenzo
Mina, Andrea
Vandin, Andrea
contents Artificial intelligence (AI) is a key enabler of innovation against climate change. In this study, we investigate the intersection of AI and climate adaptation and mitigation technologies through patent analyses of a novel dataset of approximately 63 000 Green AI patents. We analyze patenting trends, corporate ownership of the technology, the geographical distributions of patents, their impact on follow-on inventions and their market value. We use topic modeling (BERTopic) to identify 16 major technological domains, track their evolution over time, and identify their relative impact. We uncover a clear shift from legacy domains such as combustion engines technology to emerging areas like data processing, microgrids, and agricultural water management. We find evidence of growing concentration in corporate patenting against a rapidly increasing number of patenting firms. Looking at the technological and economic impact of patents, while some Green AI domains combine technological impact and market value, others reflect weaker private incentives for innovation, despite their relevance for climate adaptation and mitigation strategies. This is where policy intervention might be required to foster the generation and use of new Green AI applications.
format Preprint
id arxiv_https___arxiv_org_abs_2509_10109
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle The anatomy of Green AI technologies: structure, evolution, and impact
Emer, Lorenzo
Mina, Andrea
Vandin, Andrea
General Economics
Economics
Artificial intelligence (AI) is a key enabler of innovation against climate change. In this study, we investigate the intersection of AI and climate adaptation and mitigation technologies through patent analyses of a novel dataset of approximately 63 000 Green AI patents. We analyze patenting trends, corporate ownership of the technology, the geographical distributions of patents, their impact on follow-on inventions and their market value. We use topic modeling (BERTopic) to identify 16 major technological domains, track their evolution over time, and identify their relative impact. We uncover a clear shift from legacy domains such as combustion engines technology to emerging areas like data processing, microgrids, and agricultural water management. We find evidence of growing concentration in corporate patenting against a rapidly increasing number of patenting firms. Looking at the technological and economic impact of patents, while some Green AI domains combine technological impact and market value, others reflect weaker private incentives for innovation, despite their relevance for climate adaptation and mitigation strategies. This is where policy intervention might be required to foster the generation and use of new Green AI applications.
title The anatomy of Green AI technologies: structure, evolution, and impact
topic General Economics
Economics
url https://arxiv.org/abs/2509.10109