Ecology with artificial intelligence and machine learning in Asia: A historical perspective and emerging trends

IF 1.7 4区 环境科学与生态学 Q3 ECOLOGY Ecological Research Pub Date : 2023-10-11 DOI:10.1111/1440-1703.12425
Masahiro Ryo
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Abstract

The use of artificial intelligence (AI) and machine learning (ML) has significantly enhanced ecological research in Asia by improving data processing, analysis, and pattern extraction. Analyzing 1550 articles, I show an overview of the use of AI and ML for Asian ecological research. Following the last 20 year trend, I found that the topics in Asian ecological research have transitioned from technical perspectives to more applied issues, focusing on biodiversity conservation, climate change, land use change, and societal impacts. Non-Asian countries, on the other hand, have focused more on theoretical understanding and ecological processes. The difference between Asian and non-Asian regions may have emerged due to the ecological challenges faced by Asian countries, such as rapid economic growth, land development, and climate change impacts. In both regions, deep learning related technology has been emerging (e.g., big data collection including image and movement). Within Asia, China has been the Asia-leading country for AI/ML applications followed by Korea, Japan, India, and Iran. The number of computer science education programs in China has been increasing 3.5× times faster than that in the United States, indicating that a nationwide strategy for computer science development is key for ecological science with AI. Overall, the adoption of AI and ML technologies in ecological studies in Asia has propelled the field forward and opened new avenues for innovative research and conservation practices.

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亚洲的人工智能和机器学习生态:历史视角与新兴趋势
通过改进数据处理、分析和模式提取,人工智能(AI)和机器学习(ML)的使用极大地促进了亚洲的生态研究。通过分析 1550 篇文章,我展示了亚洲生态研究使用人工智能和机器学习的概况。根据过去 20 年的趋势,我发现亚洲生态研究的主题已从技术角度过渡到更多的应用问题,重点关注生物多样性保护、气候变化、土地利用变化和社会影响。而非亚洲国家则更注重理论理解和生态过程。亚洲和非亚洲地区之间出现的差异可能是由于亚洲国家面临的生态挑战,如经济快速增长、土地开发和气候变化影响。在这两个地区,与深度学习相关的技术不断涌现(如包括图像和运动在内的大数据收集)。在亚洲,中国在人工智能/移动学习应用方面一直处于领先地位,其次是韩国、日本、印度和伊朗。中国计算机科学教育项目数量的增长速度是美国的 3.5 倍,这表明全国性的计算机科学发展战略是人工智能生态科学的关键。总之,人工智能和 ML 技术在亚洲生态研究中的应用推动了该领域的发展,并为创新研究和保护实践开辟了新途径。
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来源期刊
Ecological Research
Ecological Research 环境科学-生态学
CiteScore
4.40
自引率
5.00%
发文量
87
审稿时长
5.6 months
期刊介绍: Ecological Research has been published in English by the Ecological Society of Japan since 1986. Ecological Research publishes original papers on all aspects of ecology, in both aquatic and terrestrial ecosystems.
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