Climate Changes through Data Science: Understanding and Mitigating Environmental Crisis

Ahmed Hussein Ali, Rahul Thakkar
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Abstract

Climate change represents an urgent environmental crisis with far-reaching risks to ecosystems and human communities worldwide. Rapid development of mitigation strategies and solutions is imperative but relies profoundly on advancements in detection, attribution, and prediction derived from climate data analytics. This paper examines the growing role of data science in not only quantifying anthropogenic climate change but also informing impact assessment and targeted intervention across climate-sensitive sectors. First, we survey established and emerging techniques for climate characterization, including machine learning applications on Earth systems data. Next, we discuss how sophisticated climate models alongside statistical analysis of multi-domain datasets—from migration patterns to crop yields—deepens scientific comprehension of climate change repercussions. Building on these insights, we spotlight data-enabled solution paradigms enabling smart climate action, ranging from high-resolution climate risk mapping, emissions reductions via optimized renewable energy infrastructure, to global warming suppression via solar radiation management. However, we also carefully examine the practical limitations hindering deployment and the ethical concerns posed by certain climate intervention proposals. Ultimately, while data science delivers powerful tools for climate change detection, attribution, and response, this paper underscores how continued climate data gathering alongside cross-disciplinary collaboration is vital to overcome analytical uncertainties, implementation barriers, and moral objections as we work to avert profound environmental breakdown.
通过数据科学了解气候变化:了解和缓解环境危机
气候变化是一场紧迫的环境危机,对全球生态系统和人类社区具有深远的风险。迅速制定缓解战略和解决办法势在必行,但这在很大程度上取决于气候数据分析在探测、归因和预测方面取得的进展。本文探讨了数据科学在量化人为气候变化方面日益增长的作用,而且还为气候敏感部门的影响评估和有针对性的干预提供了信息。首先,我们调查了已建立的和新兴的气候表征技术,包括机器学习在地球系统数据上的应用。接下来,我们将讨论复杂的气候模型与多领域数据集(从移民模式到作物产量)的统计分析如何加深对气候变化影响的科学理解。在这些见解的基础上,我们重点介绍了实现智能气候行动的数据驱动解决方案范例,包括高分辨率气候风险绘图、通过优化可再生能源基础设施减少排放,以及通过太阳辐射管理抑制全球变暖。然而,我们也仔细研究了阻碍部署的实际限制和某些气候干预建议所带来的伦理问题。最终,虽然数据科学为气候变化检测、归因和响应提供了强大的工具,但本文强调,在我们努力避免深刻的环境破坏时,持续的气候数据收集以及跨学科合作对于克服分析不确定性、实施障碍和道德反对至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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