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Building Predictive Models for Noisy and Heterogeneous Data: An Application in Global Monitoring of Inland Water Dynamics

机译:建立噪声和异构数据的预测模型:在内陆水动力学全球监测中的应用

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Freshwater, which is only available in inland water bodies such as lakes, reservoirs, and rivers, is increasingly becoming scarce across the world and this scarcity is posing a global threat to human sustainability. A global monitoring of inland water bodies is necessary for policy-makers and the scientific community to address this problem. The promise of data-driven approaches coupled with availability of remote sensing data presents opportunities as well as challenges for global monitoring. My research aims at developing predictive models that address the challenges in analyzing remote sensing data for creating the first global monitoring system of inland water dynamics.
机译:淡水仅在内陆水域(如湖泊,水库和河流)中提供,在世界范围内越来越稀缺,这种稀缺对人类的可持续性构成了全球性威胁。对于决策者和科学界来说,对内陆水域进行全球监测对于解决这一问题是必要的。数据驱动方法的前景以及遥感数据的可用性带来了全球监测的机遇和挑战。我的研究旨在开发预测模型,以应对分析遥感数据时遇到的挑战,以创建第一个内陆水动力学全球监测系统。

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