利用人工智能对气候变化影响进行预测建模:公平治理和可持续成果综述。

IF 5.8 3区 环境科学与生态学 0 ENVIRONMENTAL SCIENCES
Kingsley Ukoba, Oluwatayo Racheal Onisuru, Tien-Chien Jen, Daniel M. Madyira, Kehinde O. Olatunji
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引用次数: 0

摘要

气候变化的加速给全球生态系统和人类社会带来了前所未有的挑战。作为回应,本研究回顾了人工智能(AI)在开发先进的预测模型以评估气候变化的多方面影响方面的能力。该研究使用PRISMA框架来查找、评估和结合使用人工智能预测气候变化影响的研究。将人工智能技术(如机器学习算法和预测分析)集成到气候建模中,为理解和预测与全球气候变化相关的复杂动态提供了一个强大的框架。这些模型在数据收集、分析复杂模式和集成(包括它们在数据集中的关系)方面表现出很高的能力。它们能够快速准确地预测未来的气候情景、情景测试、历史事件、它们的大小和适应能力。然而,具有挑战性的问题,如数据差距,特别是在相互关联的系统,如大气,是相关的。此外,将人工智能洞察力转化为政策制定者可识别的可操作建议,包括道德使用,是一个新兴的问题。因此,规避这些问题的进一步进展将包括将人工智能与物理模型集成,开发混合模型,以及生成合成气候数据集,以提高数据质量和缩小差距。此外,正在开发人工智能工具,以帮助政策整合的决策。基于人工智能的预测建模正在重构并通过人工智能模型开发对气候变化的理解和方法带来革命性的变化。人工智能通过赋予科学家、政策制定者和社区权力的可持续方法,保证了一个持久的计划和一个有弹性的未来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive modeling of climate change impacts using Artificial Intelligence: a review for equitable governance and sustainable outcome

The accelerating pace of climate change poses unprecedented challenges to global ecosystems and human societies. In response, this study reviews the power of Artificial Intelligence (AI) to develop advanced predictive models for assessing the multifaceted impacts of climate change. The study used the PRISMA framework to find, assess, and combine research on using AI in predicting climate change impacts. Integrating AI techniques, such as machine learning algorithms and predictive analytics, into climate modeling provides a robust framework for understanding and projecting the complex dynamics associated with global climate change. These models exhibit a high capacity for data collection, analyzing intricate patterns and integration, including their relationships within the datasets. They enable quick and accurate predictions of future climate scenarios, scenarios testing, historical eventualities, their magnitude, and adaptation. However, challenging issues like data gaps, especially in interconnected systems such as the atmosphere, are associated. Also, AI insight translation into an actionable recommendation recognizable by the policymakers, including ethical usage, is an emerging concern. Therefore, further advances to circumvent these will include the integration of AI with physical models, developing hybrid models, and generating synthetic climatic datasets to enhance data quality and gaps. Also, AI tools are being developed to aid decision-making for policy integration. AI-based predictive modeling is restructuring and bringing reformative change to the understanding of and approach toward climatic change through AI model development. AI guarantees an unfailing plan and a resilient future with sustainable approaches that empower scientists, policymakers, and communities.

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来源期刊
CiteScore
8.70
自引率
17.20%
发文量
6549
审稿时长
3.8 months
期刊介绍: Environmental Science and Pollution Research (ESPR) serves the international community in all areas of Environmental Science and related subjects with emphasis on chemical compounds. This includes: - Terrestrial Biology and Ecology - Aquatic Biology and Ecology - Atmospheric Chemistry - Environmental Microbiology/Biobased Energy Sources - Phytoremediation and Ecosystem Restoration - Environmental Analyses and Monitoring - Assessment of Risks and Interactions of Pollutants in the Environment - Conservation Biology and Sustainable Agriculture - Impact of Chemicals/Pollutants on Human and Animal Health It reports from a broad interdisciplinary outlook.
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