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17 september 2021 15:00:38

 
Remote Sensing, Vol. 13, Pages 3735: The Role of Satellite InSAR for Landslide Forecasting: Limitations and Openings (Remote Sensing)
 


The paper explores the potential of the satellite advanced differential synthetic aperture radar interferometry (A-DInSAR) technique for the identification of impending slope failure. The advantages and limitations of satellite InSAR in monitoring pre-failure landslide behaviour are addressed in five different case histories back-analysed using data acquired by different satellite missions: Montescaglioso landslide (2013, Italy), Scillato landslide (2015, Italy), Bingham Canyon Mine landslide (2013, Utah), Big Sur landslide (2017, California) and Xinmo landslide (2017, China). This paper aimed at providing a contribution to improve the knowledge within the subject area of landslide forecasting using monitoring data, in particular exploring the suitability of satellite InSAR for spatial and temporal prediction of large landslides. The study confirmed that satellite InSAR can be successful in the early detection of slopes prone to collapse; its limitations due to phase aliasing and low sampling frequency are also underlined. According to the results, we propose a novel landslide predictability classification discerning five different levels of predictability by satellite InSAR. Finally, the big step forward made for landslide forecasting applications since the beginning of the first SAR systems (ERS and Envisat) is shown, highlighting that future perspectives are encouraging thanks to the expected improvement of upcoming satellite missions that could highly increase the capability to monitor landslides` pre-failure behaviour.


 
180 viewsCategory: Geology, Physics
 
Remote Sensing, Vol. 13, Pages 3725: An Improved Method of Soil Moisture Retrieval Using Multi-Frequency SNR Data (Remote Sensing)
Remote Sensing, Vol. 13, Pages 3736: Mapping Forest Vertical Structure in Sogwang-ri Forest from Full-Waveform Lidar Point Clouds Using Deep Neural Network (Remote Sensing)
 
 
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