A systematic review of GIS-based landslide Hazard Mapping on Determinant Factors from International Databases

Sevar Neamat, H. Karimi
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引用次数: 7

Abstract

The landslide could severely affect infrastructure, irrigation systems, soil fertility, river and streams, and settlements. Both human-made and natural phenomena contribute to landslide hazards, and therefore a comprehensive assessment of landslide susceptibility is essential to its mitigation actions. Nowadays, geographical information systems and remote sensing in combination with modeling techniques have widely been used for assessment and mapping the susceptibility of the landslide. This study contains a review of 20 scientific articles on the spatial-statistical analysis of landslide susceptibility in the last ten years. The papers were reviewed for the locations of the case study, effective parameters used, and the results' validation. The review indicates the case studies were mostly for Asian countries, and this point was obtained that some vulnerable regions had sufficiently been studied. Various causative factors were used for spatial analysis and modeling of landslide susceptibility assessment where slope, lithology, curvature, and distance to rivers were used in most studies. This review concludes that for spatial dimension evaluation of the landslide, it is important to study a comprehensive set of both natural and anthropogenic factors. This review also provides useful information that can help future studies and serve as a resource for understanding the techniques used to manage this important natural hazard.
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基于gis的国际数据库决定性因素滑坡危险性制图系统综述
滑坡可能严重影响基础设施、灌溉系统、土壤肥力、河流和溪流以及定居点。人为和自然现象都是造成滑坡灾害的原因,因此,对滑坡易感性进行全面评估对采取减灾行动至关重要。目前,地理信息系统和遥感技术与模拟技术相结合已被广泛用于滑坡易感性的评估和制图。本文对近十年来滑坡易感性空间统计分析的20篇科学论文进行了综述。本文对案例研究的地点、使用的有效参数和结果的验证进行了审查。审查表明,案例研究主要针对亚洲国家,并得出这一点,即一些脆弱地区得到了充分的研究。在滑坡易感性评价的空间分析和建模中,主要采用了坡度、岩性、曲率和与河流的距离等因素。本文认为,滑坡的空间维度评价必须综合考虑自然因素和人为因素。这篇综述还提供了有用的信息,可以帮助未来的研究,并作为了解用于管理这一重要自然灾害的技术的资源。
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