4.6 Article

Analysis of Ground Subsidence Vulnerability in Urban Areas Using Spatial Regression Analysis

Journal

APPLIED SCIENCES-BASEL
Volume 13, Issue 15, Pages -

Publisher

MDPI
DOI: 10.3390/app13158603

Keywords

OLS analysis; spatial regression; SEM; SLM; ground subsidence

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In this study, the attribute information of underground utilities and history information of ground subsidence were collected to develop a prediction model. Spatial lag model (SLM) was selected as suitable for analyzing the vulnerability of ground subsidence, and the density of underground utilities was found to be the highest influencing factor. A vulnerability map of ground subsidence in the target area was prepared using the model.
Featured Application Authors are encouraged to provide a concise description of the specific application or a potential application of the work. This section is not mandatory. The main cause of ground subsidence accidents in urban areas is cavities formed by damage to underground utilities. For this reason, the attribute information of underground utilities should be used to prepare against ground subsidence accidents. In this study, attribute information (pipe age, diameter, burial depth, and density) of six types of underground utilities (water, sewer, gas, power, heating, and communication) and history information of ground subsidence were collected. A correlation analysis was conducted using the collected data, and a prediction model of vulnerability to ground subsidence was developed through the ordinary least squares (OLS) method and spatial regression analysis (spatial lag model (SLM) and spatial error model (SEM)). To do this, the target area was divided into a grid of 100 m x 100 m. Datasets were constructed using the attribute information of underground utilities included in the divided grid and the number of ground subsidence occurrences. To analyze the OLS of the constructed data, the variance inflation factor (VIF) of the attribute information of underground utilities was studied. An OLS analysis was conducted using the appropriate factors, and the results show that the spatial data were autocorrelated. Subsequently, SEM and SLM analyses, which were spatial regression analyses, were conducted. As a result, the model using SLM was selected as suitable for analyzing the vulnerability of ground subsidence, and the density of six types of underground utilities was found to be the highest influencing factor. In addition, a vulnerability map of ground subsidence in the target area was prepared using the model. The vulnerability map demonstrates that regions with frequent ground subsidence can be predicted to be highly vulnerable.

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