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Predicting land deformation by integrating InSAR data and cone penetration testing through machine learning techniques

机译:通过通过机器学习技术集成INSAR数据和锥形渗透测试来预测土地变形

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Built environments developed on compressible soils are susceptible to land deformation. The spatio-temporal monitoring and analysis of these deformations are necessary for sustainable development of cities. Techniques such as Interferometric Synthetic Aperture Radar (InSAR) or predictions based on soil mechanics using in situ characterization, such as Cone Penetration Testing (CPT) can be used for assessing such land deformations. Despite the combined advantages of these two methods, the relationship between them has not yet been investigated. Therefore, the major objective of this study is to reconcile InSAR measurements and CPT measurements using machine learning techniques in an attempt to better predict land deformation.
机译:在可压缩土壤上开发的建筑环境易受陆地变形的影响。 对城市可持续发展是必要的时空监测和分析这些变形。 基于原位表征的基于土壤力学的干涉性合成孔径雷达(INSAR)或预测等技术可用于评估这种陆地变形。 尽管这两种方法的合并优势,但它们之间的关系尚未调查。 因此,本研究的主要目的是使用机器学习技术来协调Insar测量和CPT测量,以便更好地预测陆地变形。

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