基于gis的知识驱动和数据驱动方法在碎屑滑动敏感性制图中的应用

IF 0.3 Q4 GEOGRAPHY
Raja Das, A. Nandi, T. Joyner, I. Luffman
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引用次数: 2

摘要

碎片滑坡是发生在包括大烟山国家公园(GRSM)在内的阿巴拉契亚地区的快速移动山体滑坡。利用过去滑动的空间分布和相关因素的各种知识和数据驱动方法可用于估计该地区的碎屑滑动敏感性。利用GIS中的知识驱动和数据驱动两种方法,建立了GRSM的滑坡敏感性模型。分析中使用了6个引起泥石流的因素(坡度曲率、高程、土壤质地、土地覆盖、年降雨量和基岩不连续)和256个已知的泥石流位置。进行了知识驱动的加权叠加和数据驱动的二元频率比分析。这两种模式都很有用;然而,每一种方法在复杂性、时间依赖性和分析人员的经验方面都有其优点和缺点。敏感性图对规划人员、开发商和工程师维护公园的基础设施和划定区域进行进一步详细的地质技术调查很有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of GIS-Based Knowledge-Driven and Data-Driven Methods for Debris-Slide Susceptibility Mapping
Debris-slides are fast-moving landslides that occur in the Appalachian region including the Great Smoky Mountains National Park (GRSM). Various knowledge and data-driven approaches using spatial distribution of the past slides and associated factors could be used to estimate the region's debris-slide susceptibility. This study developed two debris-slide susceptibility models for GRSM using knowledge-driven and data-driven methods in GIS. Six debris-slide causing factors (slope curvature, elevation, soil texture, land cover, annual rainfall, and bedrock discontinuity), and 256 known debris-slide locations were used in the analysis. Knowledge-driven weighted overlay and data-driven bivariate frequency ratio analyses were performed. Both models are helpful; however, each come with a set of advantages and disadvantages regarding degree of complexity, time-dependency, and experience of the analyst. The susceptibility maps are useful to the planners, developers, and engineers for maintaining the park's infrastructures and delineating zones for further detailed geo-technical investigation.
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来源期刊
CiteScore
1.20
自引率
0.00%
发文量
22
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