4.5 Article

Composite Subsidence Vulnerability Assessment Based on an Index Model and Index Decomposition Method

期刊

HUMAN AND ECOLOGICAL RISK ASSESSMENT
卷 19, 期 3, 页码 674-698

出版社

TAYLOR & FRANCIS INC
DOI: 10.1080/10807039.2012.691405

关键词

subsidence vulnerability assessment; vulnerability factor; vulnerability indicators; SVI; contribution rate weight method; decomposition presentation

资金

  1. [2009843616]

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The threat of damage to buildings and other infrastructures resulting from land subsidence associated with groundwater pumping in urbanized areas is an ongoing problem requiring assessment. An important goal of subsidence vulnerability assessment is to construct a composite subsidence vulnerability index (SVI) that is represented by a set of indicators that focuses on four different thematic factors: physical, social, economic, and environmental vulnerability. These indicators are evaluated on the basis of indicator selection principles and then weighted by their contribution rate to the overall index. The weights reflect different measures assigned to the township-specific conditions. A complete and composite subsidence vulnerability assessment is developed in which future vulnerability management decision-making processes can be readily made. The vulnerability assessment includes not only the construction of the SVI, which involves selecting, assigning value to, weighting, and aggregating the vulnerability indicators, but also the presentation of the SVI decomposition. Research results demonstrate that a composite subsidence vulnerability assessment method can be made by first constructing and then decomposition-presenting the overall SVI. This allows for the relative comparison of subsidence vulnerability and the identification of the main vulnerable indicators; thus providing subsidence risk, which represents an important step toward vulnerability management of water resources.

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