Multitemporal time series analysis using machine learning models for ground deformation in the Erhai region, China

被引:0
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作者
Yahui Guo
Shunqiang Hu
Wenxiang Wu
Yuyi Wang
J. Senthilnath
机构
[1] University of Sanya,Academician Workstation of Zhai Mingguo
[2] Beijing Normal University,Beijing Key Laboratory of Urban Hydrological Cycle and Sponge City Technology, College of Water Sciences
[3] Capital Normal University,College of Resource Environment and Tourism
[4] Chinese Academy of Sciences (CAS),CAS Center for Excellence in Tibetan Plateau Earth Sciences
[5] Institute for Infocomm Research,undefined
[6] Agency for Science,undefined
[7] Technology and Research (A*STAR),undefined
关键词
Land subsidence; PSO-LSSVM; SBAS-InSAR; Remote sensing;
D O I
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中图分类号
学科分类号
摘要
Ground deformation (GD) has been widely reported as a global issue and is now an ongoing problem that will profoundly endanger the public safety. GD is a complex and dynamic problem with many contributing factors that occur over time. In the literature, there are only a few methods that can effectively monitor GD. Microwave remote sensing data such as interferometric synthetic aperture radar (InSAR) are mostly adopted to assess GD. These data can reveal the surface deforming areas with great precision, mapping GD results at a large scale. In this study, the effects of GD and the influencing factors, such as the building area, the water level, the cumulative precipitation, and the cumulative temperature, are modeled in the Erhai region with small baseline subset interferometric SAR (SBAS-InSAR) data that are applied using machine learning (ML) methods. The ML methods, namely, multiple linear regression (MLR), multilayer perceptron backpropagation (MLP-BP), least squares support vector machine (LSSVM), and particle swarm optimization (PSO)-LSSVM, are used to predict GD, and the results are compared. Particularly, the PSO-LSSVM method has obtained the least root mean square error (RMSE) and mean relative error (MRE) of 11.448 and 0.112, respectively. Therefore, the results have proven that the proposed PSO-LSSVM is very efficient in analyzing GD.
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