Large-Scale Land Subsidence Monitoring and Prediction Based on SBAS-InSAR Technology with Time-Series Sentinel-1A Satellite Data

Author:

Guo Hengliang1,Yuan Yonghao2,Wang Jinyang2,Cui Jian34,Zhang Dujuan1,Zhang Rongrong2,Cao Qiaozhuoran2,Li Jin2,Dai Wenhao2,Bao Haoming2,Qiao Baojin2ORCID,Zhao Shan2

Affiliation:

1. National Supercomputing Center in Zhengzhou, Zhengzhou University, Zhengzhou 450001, China

2. School of Geoscience and Technology, Zhengzhou University, Zhengzhou 450001, China

3. Henan Institute of Geological Survey, Zhengzhou 450001, China

4. National Engineering Laboratory Geological Remote Sensing Center for Remote Sensing Satellite Application, Zhengzhou 450001, China

Abstract

Rapid urban development in China has aggravated land subsidence, which poses a potential threat to sustainable urban development. It is imperative to monitor and predict land subsidence over large areas. To address these issues, we chose Henan Province as the study area and applied small baseline subset-interferometric synthetic aperture radar (SBAS-InSAR) technology to obtain land deformation information for monitoring land subsidence from November 2019 to February 2022 with 364 multitrack Sentinel-1A satellite images. The current traditional time-series deep learning models suffer from the problems of (1) poor results in extracting a sequence of information that is too long and (2) the inability to extract the feature information between the influence factor and the land subsidence well. Therefore, a long short-term memory-temporal convolutional network (LSTM-TCN) deep learning model was proposed in order to predict land subsidence and explore the influence of environmental factors, such as the volumetric soil water layer and monthly precipitation, on land subsidence in this study. We used leveling data to verify the effectiveness of SBAS-InSAR in land subsidence monitoring. The results of SBAS-InSAR showed that the land subsidence in Henan Province was obvious and uneven in spatial distribution. The maximum subsidence velocity was −94.54 mm/a, and the uplift velocity was 41.23 mm/a during the monitoring period. Simultaneously, the land subsidence in the study area presented seasonal changes. The rate of land subsidence in spring and summer was greater than that in autumn and winter. The prediction accuracy of the LSTM-TCN model was significantly better than that of the individual LSTM and TCN models because it fully combined their advantages. In addition, the prediction accuracies, with the addition of environmental factors, were improved compared with those using only time-series subsidence information.

Funder

Major Science and Technology Special Projects in Henan Province

Science and Technology Tackling Plan of Henan Province

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

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