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Machine Learning: New Potential for Local and Regional Deep-Seated Landslide Nowcasting

机译:机器学习:本地和区域深层滑坡临近预报的新潜力

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摘要

Nowcasting and early warning systems for landslide hazards have been implemented mostly at the slope or catchment scale. These systems are often difficult to implement at regional scale or in remote areas. Machine Learning and satellite remote sensing products offer new opportunities for both local and regional monitoring of deep-seated landslide deformation and associated processes. Here, we list the key variables of the landslide process and the associated satellite remote sensing products, as well as the available machine learning algorithms and their current use in the field. Furthermore, we discuss both the challenges for the integration in an early warning system, and the risks and opportunities arising from the limited physical constraints in machine learning. This review shows that data products and algorithms are available, and that the technology is ready to be tested for regional applications.
机译:滑坡灾害的临近预报和预警系统主要是在斜坡或集水规模上实施的。这些系统通常难以在区域规模或偏远地区实施。机器学习和卫星遥感产品为深部滑坡变形及相关过程的本地和区域监测提供了新的机会。在这里,我们列出了滑坡过程和相关卫星遥感产品的关键变量,以及可用的机器学习算法及其在该领域的当前使用。此外,我们既讨论了集成到预警系统中的挑战,也讨论了机器学习中有限的物理约束所带来的风险和机遇。这篇评论显示数据产品和算法可用,并且该技术已准备好进行区域应用测试。

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