...
首页> 外文期刊>Natural Hazards >Combining neural network with fuzzy, certainty factor and likelihood ratio concepts for spatial prediction of landslides
【24h】

Combining neural network with fuzzy, certainty factor and likelihood ratio concepts for spatial prediction of landslides

机译:将神经网络与模糊,确定性因子和似然比概念相结合,用于滑坡的空间预测

获取原文
获取原文并翻译 | 示例
           

摘要

The landslide studies can be categorized as pre- and postdisaster studies. The predisaster studies include spatial prediction of potential landslide zones known as landslide susceptibility zonation (LSZ) mapping to identify the areas/locales susceptible to landslide hazard. The LSZ maps provide an assessment of the safety of existing habitations and infrastructural/functional elements and help plan further developmental activities in the hilly regions. Landslides are one of the natural geohazards that affect at least 15% of land area of India. Different types of landslides occur frequently in geodynamical active domains of the Himalayas. In India, various techniques have been developed and adopted for LSZ mapping of different regions. However, the technique for LSZ mapping is not yet standardized. The present research is an attempt in this direction only. In our earlier work (Kanungo et al. 2006), a detailed study on conventional, artificial neural network (ANN)- black box-, fuzzy set-based and combined neural and fuzzy weighting techniques for LSZ mapping in Darjeeling Himalayas has been documented. In this paper, other techniques such as combined neural and certainty factor concept along with combined neural and likelihood ratio techniques have been assessed in comparison with combined neural and fuzzy technique for the preparation of LSZ maps of the same study area in parts of Darjeeling Himalayas. It is observed from the present study that the LSZ map produced using combined neural and fuzzy approach appears to be the most accurate one as in this case only 2.3% of the total area is found to be categorized as very high susceptibility zone and contains 30.1% of the existing landslide area. This approach can serve as one of the key objective approaches for spatial prediction of landslide hazards in hilly terrain.
机译:滑坡研究可分为灾前研究和灾后研究。灾前研究包括对潜在滑坡带的空间预测,称为滑坡敏感性区划(LSZ)制图,以识别易受滑坡危害影响的区域/地区。 LSZ地图可评估现有居住区和基础设施/功能元素的安全性,并有助于规划丘陵地区的进一步开发活动。滑坡是影响印度至少15%土地面积的自然地质灾害之一。喜马拉雅山的地球动力学活动区域经常发生不同类型的滑坡。在印度,已开发出各种技术,并将其用于不同区域的LSZ映射。但是,用于LSZ映射的技术尚未标准化。本研究仅是朝这个方向的尝试。在我们较早的工作中(Kanungo等人,2006年),对大吉岭喜马拉雅山的LSZ映射的常规,人工神经网络(ANN),黑匣子,基于模糊集以及组合的神经和模糊加权技术进行了详细研究。在本文中,与神经网络和确定性因子的组合概念以及神经网络和似然比技术相结合的其他技术,与神经网络和模糊技术相结合,已被评估,用于在大吉岭喜马拉雅山的部分地区研究同一研究区域的LSZ地图。从本研究中观察到,使用神经和模糊方法相结合生成的LSZ图似乎是最准确的图,因为在这种情况下,仅发现总面积的2.3%被归类为极高的磁化率区域,并且包含30.1%现有滑坡区。该方法可以作为丘陵地区滑坡灾害空间预测的关键客观方法之一。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号