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一种基于规则的滑坡易发性制图新方法。

A Novel Rule-based Approach In Mapping Landslide Susceptibility.

作者信息

Roodposhti Majid Shadman, Aryal Jagannath, Pradhan Biswajeet

机构信息

Discipline of Geography and Spatial Sciences, School of Technology, Environments and Design, University of Tasmania, Churchill Ave, Hobart, TAS 7005, Australia.

Centre for Advanced Modelling and Geospatial Information Systems (CAMGIS), University of Technology Sydney, NSW 2007, Australia.

出版信息

Sensors (Basel). 2019 May 16;19(10):2274. doi: 10.3390/s19102274.

Abstract

Despite recent advances in developing landslide susceptibility mapping (LSM) techniques, resultant maps are often not transparent, and susceptibility rules are barely made explicit. This weakens the proper understanding of conditioning criteria involved in shaping landslide events at the local scale. Further, a high level of subjectivity in re-classifying susceptibility scores into various classes often downgrades the quality of those maps. Here, we apply a novel rule-based system as an alternative approach for LSM. Therein, the initially assembled rules relate landslide-conditioning factors within individual rule-sets. This is implemented without the complication of applying logical or relational operators. To achieve this, first, Shannon entropy was employed to assess the priority order of landslide-conditioning factors and the uncertainty of each rule within the corresponding rule-sets. Next, the rule-level uncertainties were mapped and used to asses the reliability of the susceptibility map at the local scale (i.e., at pixel-level). A set of If-Then rules were applied to convert susceptibility values to susceptibility classes, where less level of subjectivity is guaranteed. In a case study of Northwest Tasmania in Australia, the performance of the proposed method was assessed by receiver operating characteristics' area under the curve (AUC). Our method demonstrated promising performance with AUC of 0.934. This was a result of a transparent rule-based approach, where priorities and state/value of landslide-conditioning factors for each pixel were identified. In addition, the uncertainty of susceptibility rules can be readily accessed, interpreted, and replicated. The achieved results demonstrate that the proposed rule-based method is beneficial to derive insights into LSM processes.

摘要

尽管近期在开发滑坡易发性制图(LSM)技术方面取得了进展,但生成的地图往往不够透明,而且易发性规则几乎没有明确说明。这削弱了对塑造局部尺度滑坡事件所涉及的条件标准的正确理解。此外,将易发性分数重新分类为不同类别时的高度主观性往往会降低这些地图的质量。在此,我们应用一种新颖的基于规则的系统作为LSM的替代方法。其中,最初组装的规则将各个规则集内的滑坡条件因素联系起来。这一过程无需应用逻辑或关系运算符的复杂性即可实现。为了做到这一点,首先,利用香农熵来评估滑坡条件因素的优先级顺序以及相应规则集内每个规则的不确定性。接下来,对规则级别的不确定性进行制图,并用于评估局部尺度(即像素级别)易发性地图的可靠性。应用一组If-Then规则将易发性值转换为易发性类别,从而保证较低的主观性水平。在澳大利亚塔斯马尼亚西北部的一个案例研究中,通过接收器操作特征曲线下面积(AUC)评估了所提出方法的性能。我们的方法表现出了良好的性能,AUC为0.934。这是基于透明规则的方法的结果,该方法确定了每个像素的滑坡条件因素的优先级和状态/值。此外,易发性规则的不确定性可以很容易地获取、解释和复制。所取得的结果表明,所提出的基于规则的方法有助于深入了解LSM过程。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a9f0/6567231/f42328632dab/sensors-19-02274-g001.jpg

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