2021
DOI: 10.3390/rs13152898
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Position Inversion of Goafs in Deep Coal Seams Based on DS-InSAR Data and the Probability Integral Methods

Abstract: The goafs caused by coal mining cause great harm to the surface farmland, buildings, and personal safety. The existing monitoring methods cost a lot of workforce and material resources. Therefore, this paper proposes an inversion approach for establishing the locations of underground goafs and the parameters of the probability integral method (PIM), thus integrating distributed scatter interferometric synthetic aperture radar (DS-InSAR) data and the PIM. Firstly, a large amount of surface deformation observati… Show more

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Cited by 20 publications
(8 citation statements)
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References 30 publications
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“…Based on the distribution function of the two datasets, the maximum value of the absolute value of the difference is made. It is analyzed that the random variables of DS points are stable under reparameterization [41]. The discriminant formula of the KS test can be expressed as…”
Section: Ds-insarmentioning
confidence: 99%
“…Based on the distribution function of the two datasets, the maximum value of the absolute value of the difference is made. It is analyzed that the random variables of DS points are stable under reparameterization [41]. The discriminant formula of the KS test can be expressed as…”
Section: Ds-insarmentioning
confidence: 99%
“…Conventional methods cannot actually and intuitively illustrate the influence range of surface subsidence and the temporal and spatial evolution law of mining subsidence [38][39][40][41][42]. is reveals that the D-InSAR technique has the capability to reveal the minimal and large amount of land surface deformation observation data [43,44].…”
Section: Temporal and Spatial Analysismentioning
confidence: 99%
“…Additionally, the phase unwrapping (PhU) consistency index threshold (set to 0.8 in this work) is used to determine the output mask of MP and generate the deformation products [38], [40]. After determining the linear deformation, the nonlinear deformation, noise phase and atmospheric phase are separated from the residual phase by temporal-spatial filtering algorithm [41].…”
Section: Estimating Deformation At Reliable Pixelsmentioning
confidence: 99%