长江科学院院报 ›› 2015, Vol. 32 ›› Issue (12): 82-86.DOI: 10.11988/ckyyb.20140543

• 岩土工程 • 上一篇    下一篇

基于C4.5决策树算法的土质边坡稳定性评价研究

胡 杰,綦春明,孙 冰,聂春龙   

  1. 南华大学 城市建设学院,湖南 衡阳 421001
  • 收稿日期:2014-07-01 出版日期:2015-12-20 发布日期:2015-12-11
  • 通讯作者: 綦春明(1966-),男,湖南衡阳人,教授,主要从事岩土工程理论与工程管理方面的研究,(电话)13975499366(电子信箱)qcm108100@sina.com。
  • 作者简介:胡 杰(1988-),男,湖南株洲人,硕士研究生,主要从事岩土工程数值模拟方面的研究,(电话)15573417532
  • 基金资助:

    国家自然科学基金资助项目(51204098)

Study on Stability Evaluation of Soil Slope Based on C4.5 DecisionTree Algorithm

HU Jie,QI Chun-ming,SUN Bing,NIE Chun-long   

  1. School of Urban Construction,University of South China,Hengyang 421001,China
  • Received:2014-07-01 Published:2015-12-20 Online:2015-12-11

摘要:

采用神经网络进行土质边坡稳定性评价时,差异性较大的训练样本往往会使评价结果不太理想。针对这一问题引入C4.5决策树算法,采用多个土质边坡工程的实测数据,运用信息增益率进行分类属性的选择,并对建立好的树体结构进行剪枝操作,建立基于决策树的土质边坡稳定性评价模型。将该模型与BP神经网络和LVQ(Learning Vector Quantization,学习向量量化)神经网络进行对比分析,结果显示决策树模型分类正确率最高,达到90%,模型所用时间为2.24 s,表明把决策树用于土质边坡稳定性评价是合理的。

关键词: 土质边坡, 稳定性预测, 决策树, BP神经网络, LVQ神经网络

Abstract:

When the soil slope stability is evaluated by neural network model,varieties of training samples always make the evaluation result unsatisfactory.In order to solve the problem,we introduce the C4.5 decision tree algorithm,build an evaluation model of soil slope stability based on decision tree classifier,and prune the tree structure established.Furthermore,we adopt measured data in several soil slope projects and select classification attributes according to gain ratio of information in this model.Compared with BP neural network and LVQ(Learning Vector Quantization) neural network,the result shows that decision tree algorithm has the highest accuracy for classification,up to 90%,and the computation time of this model is 2.24 seconds.Finally,it is feasible to introduce decision tree algorithm for stability evaluation in soil slope.

Key words: soil slope, stability prediction, decision tree, BP neural network, LVQ neural network

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