地震地质 ›› 2006, Vol. 28 ›› Issue (3): 430-440.

• 研究论文 • 上一篇    下一篇

应用径向基概率神经网络研究地震滑坡

陈晓利1, 赵健2, 叶洪1   

  1. 1. 中国地震局地质研究所, 北京, 100029;
    2. 北京大学地球与空间科学学院, 北京, 100871
  • 收稿日期:2005-11-04 修回日期:2006-04-17 出版日期:2006-09-14 发布日期:2009-08-27
  • 作者简介:陈晓利,女,1969年生,1996年在北京大学地质学系获得硕士学位,现为中国地震局地质研究所助理研究员,主要从事工程地震、GIS应用研究,电话:010-62009056,E-mail:04chxl@sina.com.
  • 基金资助:
    科技部科技基础性工作专题项目(2001DEB30078)资助。

APPLICATION OF RBPNN IN THE RESEARCH OF EARTHQUAKE-INDUCED LANDSLIDE

CHEN Xiao-li1, ZHAO Jian2, YE Hong1   

  1. 1. Institute of Geology, China Earthquake Administration, Beijing 100029, China;
    2. Department of Geology, Peking University, Beijing 100871, China
  • Received:2005-11-04 Revised:2006-04-17 Online:2006-09-14 Published:2009-08-27

摘要: 地震滑坡是一种有着严重危害的次生地震灾害形式,形成机制复杂,涉及因素较多。地震滑坡在空间上不是完全随机分布的,换言之,地震滑坡的影响因素和它的分布规律之间存在着相关性。利用径向基概率神经网络自学习的特性,通过对样本训练、检测,得到一个稳定可靠的模式识别网络,并用其对工作区进行潜在地震滑坡危险性区划,通过结果对比,在本例中识别精度达到89.9%以上,显示是一次有效的尝试。

关键词: 径向基概率神经网络, 地震滑坡, GIS, 危险性预测

Abstract: As we know, the landslide caused by earthquake does not distribute at random but has its destinations. This means that there are some inner relationships between the distribution and the factors which affect the happening of the landslide. But due to the complex mechanism of the earthquake-induced landslide, it's difficult to describe the relationship clearly. For expressing the non-linear relationship, we create the artificial network with the Radial Basis Probabilistic Neural Network Algorithm by using the toolbox of MATLAB. At first, we select fault, river, rock, slope angle, earthquake intensity as the landslide affecting factors after studying the research results of other scholars, then use GIS to model the research area and grid it. From the cells, we select neural network training samples and testing samples. After repeated training, the neural network reaches its steadiness. Then we use this network to simulate the whole research area. In this paper, the studying area is between 98.5°~99.0°E, 24.2°~24.9°N, where 2 strong earthquakes took place in 1976 and caused many landslides. We selected two different sets of training samples from the research area, and by contrasting the result of RBPNN with the facts, we find that the predicted hazard area is generally in accordance with the fact in the distribution of earthquake-induced landslide. In conclusion, we think RBPNN is a useful method for the research of earthquake-induced landslide, especially for the regional earthquake-induced landslide zoning.

Key words: Radial Basis Probabilistic Neural Network(RBPNN), earthquake-induced landslide, GIS, hazard predication

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