A Deep Learning Method for Dynamic Process Modeling of Real Landslides Based on Fourier Neural Operator
Chen, Yanglong2,3; Ouyang, Chaojun2,3; Xu, Qingsong1; Yang, Weibin2,3
刊名EARTH AND SPACE SCIENCE
2024-03-01
卷号11期号:3页码:13
关键词deep learning landslide dynamic process Fourier neural operator data-driven method
ISSN号2333-5084
DOI10.1029/2023EA003417
英文摘要

The conventional numerical solvers for partial differential equations encounter a formidable challenge, as their computational efficiency and accuracy are heavily contingent on grid size. Recently, machine learning (ML) has exhibited substantial promise in addressing partial differential equations. Nevertheless, substantial hurdles persist in practical applications. In this work, we endeavor to establish a deep learning framework founded on the Fourier neural operator (FNO) for resolving the intricacies of simulating real landslide dynamic processes. Our findings demonstrate that the current FNO approach adeptly replicates landslide dynamic processes and boasts exceptional computational efficiency. Additionally, it is noteworthy that this data-driven ML methodology can seamlessly incorporate data from other experimental sources or numerical simulation techniques. Consequently, this work underscores the significant potential of utilizing ML methodologies to supplant conventional numerical simulation methods. There are great challenges involved in leveraging machine learning methods to learn realistic physical dynamic processes. When it comes to the real landslide movement across intricate terrains, it is meaningful to validate the capacities of machine learning in tackling the complicated problem. This study aims to propose an innovative solution of modeling of landslide dynamic processes from a machine learning perspective. Here, we introduce a data-driven framework based on Fourier neural operator to predict the dynamic behavior of actual landslides. Following an exhaustive assessment, the superior performance of our suggested model in real landslide situations and its versatility in adapting to landslides across various geographical regions have been confirmed. This study explores a new approach to modeling landslide dynamic processes and highlights the great potential of data-driven approaches to address dynamic process challenges present in real physical world. The data-driven deep learning method based on FNO can achieve fast prediction of real landslide accumulation process The proposed data-driven method for predicting landslide dynamic processes can be extended to new areas after transfer learning We provide numerical datasets of landslide dynamics, which can serve as the foundational resources for ML-based landslide forecasting tasks

资助项目Excellent Young Scientists Fund[42022054] ; Excellent Young Scientists Fund[41925030] ; NSFC[XDA23090303] ; Strategic Priority Research Program of CAS[2022YFS0543] ; Sichuan Science and Technology Program
WOS关键词JINSHA RIVER ; ALGORITHM
WOS研究方向Astronomy & Astrophysics ; Geology
语种英语
出版者AMER GEOPHYSICAL UNION
WOS记录号WOS:001181731300001
资助机构Excellent Young Scientists Fund ; NSFC ; Strategic Priority Research Program of CAS ; Sichuan Science and Technology Program
内容类型期刊论文
源URL[http://ir.imde.ac.cn/handle/131551/57933]  
专题成都山地灾害与环境研究所_山地灾害与地表过程重点实验室
通讯作者Ouyang, Chaojun
作者单位1.Tech Univ Munich, Data Sci Earth Observat, D-80333 Munich, Germany
2.Univ Chinese Acad Sci, Beijing, Peoples R China
3.Chinese Acad Sci, Inst Mt Hazards & Environm, Key Lab Mt Hazards & Earth Surface Proc, Chengdu, Peoples R China
推荐引用方式
GB/T 7714
Chen, Yanglong,Ouyang, Chaojun,Xu, Qingsong,et al. A Deep Learning Method for Dynamic Process Modeling of Real Landslides Based on Fourier Neural Operator[J]. EARTH AND SPACE SCIENCE,2024,11(3):13.
APA Chen, Yanglong,Ouyang, Chaojun,Xu, Qingsong,&Yang, Weibin.(2024).A Deep Learning Method for Dynamic Process Modeling of Real Landslides Based on Fourier Neural Operator.EARTH AND SPACE SCIENCE,11(3),13.
MLA Chen, Yanglong,et al."A Deep Learning Method for Dynamic Process Modeling of Real Landslides Based on Fourier Neural Operator".EARTH AND SPACE SCIENCE 11.3(2024):13.
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