Abstract

The Interferometric Synthetic Aperture Radar (InSAR) technique has been widely used to obtain the ground surface deformation of geohazards (e.g., mining subsidence and landslides). As one of the inherent errors in the interferometric phase, the digital elevation model (DEM) error is usually estimated with the help of an a priori deformation model. However, it is difficult to determine an a priori deformation model that can fit the deformation time series well, leading to possible bias in the estimation of DEM error and the deformation time series. In this paper, we propose a method that can construct an adaptive deformation model, based on a set of predefined functions and the hypothesis testing theory in the framework of the small baseline subset InSAR (SBAS-InSAR) method. Since it is difficult to fit the deformation time series over a long time span by using only one function, the phase time series is first divided into several groups with overlapping regions. In each group, the hypothesis testing theory is employed to adaptively select the optimal deformation model from the predefined functions. The parameters of adaptive deformation models and the DEM error can be modeled with the phase time series and solved by a least square method. Simulations and real data experiments in the Pingchuan mining area, Gaunsu Province, China, demonstrate that, compared to the state-of-the-art deformation modeling strategy (e.g., the linear deformation model and the function group deformation model), the proposed method can significantly improve the accuracy of DEM error estimation and can benefit the estimation of deformation time series.

Highlights

  • IntroductionWhen integrating multi-temporal SAR images with advanced time series Interferometric Synthetic Aperture Radar (InSAR) (TS-InSAR) methods (e.g., persistent scatter (PS), small baseline subset (SBAS), and mixed PS/SBAS methods) [13,14,15,16,17], the inherent errors in a single interferogram (e.g., decorrelation noise and atmospheric delay) can be effectively mitigated, and simultaneously, the deformation time series of the study area can be obtained, which is of great significance for understanding the evolution process and mechanism of geohazards

  • To tackle the aforementioned problem, relative to the deformation model, we propose a method to construct adaptive deformation models for estimating digital elevation model (DEM) error based on hypothesis testing in the framework of the SBAS-Interferometric Synthetic Aperture Radar (InSAR) method

  • Since one of the key steps of the proposed method is to group observations, we verified the rationality of this grouping strategy based on the simulation of four kinds of mining subsidence deformations and simultaneously determined the time span of each group in the grouping process

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Summary

Introduction

When integrating multi-temporal SAR images with advanced time series InSAR (TS-InSAR) methods (e.g., persistent scatter (PS), small baseline subset (SBAS), and mixed PS/SBAS methods) [13,14,15,16,17], the inherent errors in a single interferogram (e.g., decorrelation noise and atmospheric delay) can be effectively mitigated, and simultaneously, the deformation time series of the study area can be obtained, which is of great significance for understanding the evolution process and mechanism of geohazards. It is acknowledged that the interferometric phase includes the interested deformation component, and undesirable noise components (e.g., decorrelation noise, atmospheric delay, and digital elevation model (DEM) error) [18]. Decorrelation noise can be suppressed by multi-looking operation or the spatial filter [15]; stratified atmospheric delay can be mitigated by an elevation-dependent model [19,20]

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