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首页> 外文期刊>Geomatics,Natural Hazards & Risk >Mapping earthquake-triggered landslide susceptibility by use of artificial neural network (ANN) models: an example of the 2013 Minxian (China) Mw 5.9 event
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Mapping earthquake-triggered landslide susceptibility by use of artificial neural network (ANN) models: an example of the 2013 Minxian (China) Mw 5.9 event

机译:通过使用人工神经网络(ANN)模型来绘制地震触发的滑坡易感性:2013 Minxian(中国)MW 5.9活动的一个例子

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摘要

A landslide susceptibility map, which describes the quantitative relationship between known landslides and control factors, is essential to link the theoretical prediction with practical disaster reduction measures. In this work, the artificial neural network (ANN) model, a promising tool for mapping landslide susceptibility, was adopted to evaluate the coseismic landslide susceptibility affected by the 2013 Minxian, Gansu, China, Mw5.9 earthquake. The evaluation was based on the landslide inventory of this event containing 6479 landslides, and the terrain, geological and seismic factors from database available. During the analyses, two ANN models were applied: considering the entire factors aforementioned (CS model) and excluding seismic factors above (ES model). The success and predictive rates of ANN models and the cumulative percentage curves of susceptibility maps obtained from the models all indicate that the CS model has a relatively better performance than the ES model. However, the comparison of overlapping susceptibility areas suggests that 52.8% of the very high susceptibility areas derived from the CS model coincide with the ES model; and for the very low susceptibility areas, this proportion is 73.55%. Thus, it can be concluded that the assessment based on existing earthquake-induced landslides and the ES model could provide better background information for seismic landslide susceptibility mapping and disaster prevention.
机译:滑坡敏感性图,描述了已知的山体滑坡和控制因素之间的定量关系,对于将具有实际减灾措施的理论预测联系起来是必不可少的。在这项工作中,采用了一种用于映射滑坡易感性的有前途的工具的人工神经网络(ANN)模型来评估受2013年Minxian,甘肃,中国,MW5.9地震影响的皮塞伊山脉滑坡易感性。评估基于该事件的滑坡库存,其中包含6479个山体滑坡,地形,地质和地震因素可用。在分析期间,应用了两个ANN模型:考虑上述(CS模型)的整个因素,并排除上述地震因素(ES模型)。从模型中获得的ANN模型的成功和预测率和型号的累积百分比曲线都表明CS模型的性能比ES模型相对较好。然而,重叠易感区域的比较表明,从CS模型衍生的非常高的易感区域的52.8%与ES模型一致;对于非常低的易感性区域,该比例为73.55%。因此,可以得出结论,基于现有地震诱导的滑坡和ES模型的评估可以提供更好的地震滑坡敏感性绘图和防灾的背景信息。

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