利用物理信息神经网络进行滑坡预测

IF 6.9 1区 工程技术 Q1 ENGINEERING, GEOLOGICAL Engineering Geology Pub Date : 2025-01-01 DOI:10.1016/j.enggeo.2024.107852
Ashok Dahal, Luigi Lombardo
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引用次数: 0

摘要

几十年来,区域滑坡预测的解决方案主要依赖于数据驱动的模型,从定义上讲,这些模型与破坏机制的物理特性是脱节的。这些工具的成功和推广来自于利用代理变量的能力,而不是明确的岩土技术变量,因为后者难以在广阔的景观中获得。我们的工作实现了物理信息神经网络(PINN)方法,从而在标准数据驱动架构中添加了一个中间约束,以解决Newmark边坡稳定方法中典型的永久变形。这转化为一个神经网络,其任务是明确地从常见代理变量中检索岩土参数,然后根据可用的同震滑坡库存最小化损失函数。结果是有希望的,因为我们的模型不仅以标准敏感性输出的形式产生了出色的预测性能,而且在此过程中,还生成了区域尺度上预期的岩土力学特性图。因此,这样的架构是用来解决同震滑坡预测的,如果在其他研究中得到证实,可以开辟基于pup的近实时预测。
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Towards physics-informed neural networks for landslide prediction
For decades, solutions to regional-scale landslide prediction have primarily relied on data-driven models, which, by definition, are disconnected from the physics of the failure mechanism. The success and spread of such tools came from the ability to exploit proxy variables rather than explicit geotechnical ones, as the latter are prohibitive to acquire over broad landscapes. Our work implements a Physics Informed Neural Network (PINN) approach, thereby adding an intermediate constraint to a standard data-driven architecture to solve for the permanent deformation typical of Newmark slope stability methods. This translates into a neural network tasked with explicitly retrieving geotechnical parameters from common proxy variables and then minimizing a loss function with respect to the available coseismic landslide inventory. The results are promising because our model not only produces excellent predictive performance in the form of standard susceptibility output but, in the process, also generates maps of the expected geotechnical properties at a regional scale. Therefore, Such architecture is framed to tackle coseismic landslide prediction, which, if confirmed in other studies, could open up PINN-based near-real-time predictions.
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来源期刊
Engineering Geology
Engineering Geology 地学-地球科学综合
CiteScore
13.70
自引率
12.20%
发文量
327
审稿时长
5.6 months
期刊介绍: Engineering Geology, an international interdisciplinary journal, serves as a bridge between earth sciences and engineering, focusing on geological and geotechnical engineering. It welcomes studies with relevance to engineering, environmental concerns, and safety, catering to engineering geologists with backgrounds in geology or civil/mining engineering. Topics include applied geomorphology, structural geology, geophysics, geochemistry, environmental geology, hydrogeology, land use planning, natural hazards, remote sensing, soil and rock mechanics, and applied geotechnical engineering. The journal provides a platform for research at the intersection of geology and engineering disciplines.
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