Producing landslide-susceptibility maps for regional planning in data-scarce regions

被引:0
|
作者
Jerome V. De Graff
H. Charles Romesburg
Rafi Ahmad
James P. McCalpin
机构
[1] USDA Forest Service,Department of Environment and Society
[2] Utah State University,Mona Geoinformatics Institute, Unit for Disaster Studies
[3] University of the West Indies,undefined
[4] GEO-HAZ Consulting,undefined
[5] Inc.,undefined
来源
Natural Hazards | 2012年 / 64卷
关键词
Landslide-susceptibility; Mapping; Regional planning; Matrix assessment; Validation; Caribbean;
D O I
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中图分类号
学科分类号
摘要
In many of the lesser developed areas of the world, regional development planning is increasingly important for meeting the needs of current and future inhabitants. Expansion of economic capability, infrastructure, and residential capacity requires significant investment, and so efforts to limit the negative effect of landslides and other natural hazards on these investments are crucial. Many of the newer approaches to identifying and mapping relative landslide susceptibility within a developing area are hindered by insufficient data in the places where it is most needed. An approach called matrix assessment was specifically designed for regional development planning where data may be limited. Its application produces a landslide-susceptibility map suitable for use with other planning data in a Geographical Information System (GIS) environment. Its development also encourages collecting basic landslide inventory data suitable for site-specific studies and for refining landslide hazard assessments in the future. This paper illustrates how matrix assessment methodology was applied to produce a landslide-susceptibility map for the Commonwealth of Dominica, an island nation in the eastern Caribbean, and how with a follow up study the relative landslide-susceptibility mapping was validated. A second Caribbean application on Jamaica demonstrates how this methodology can be applied in a more geologically complex setting. A validated approach to mapping landslide susceptibility which does not require extensive input data offers a significant benefit to planning in lesser developed parts of the world.
引用
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页码:729 / 749
页数:20
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