期刊文献+

改进的LM神经网络工程地质综合评价模型 被引量:3

Comprehensive evaluation model of engineering geology adopted improved Levenberg- Marquardt neural network
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摘要 以可靠的遥感地质信息为基础,采用步长自适应调整的Levenberg-Marquardt神经网络建立了工程地质灾害综合评价模型,实现对地质条件和地质灾害危险性的有效评价。通过对地质灾害危险性评价单元进行分析量化,将评价结果集成在三维地理环境中,实现了评价结果的三维可视化,实现对地质条件进行直观分析和评价。实例验证表明,基于步长自适应调整的LM神经网络具有准确度高、速度快的优点,是一种较为理想的工程地质综合评价方法。 On the reliable remote sensing geological information,it establishes the evaluation and forecast model of railway route geological hazard using the adaptive adjustment learning step Levenberg-Marquardt neural network.It achieves effective assessment and prediction of engineering geological conditions and geological hazard.It studies the LM neural network’s building,training and simulation methods.Through the quantitative analysis of the evaluation unit,evaluation results are integrated into three-dimensional geographical environment of railway location system and implement the evaluation results visualization.It helps the engineers achieve the visual geological analysis and evaluation.Theoretical analysis and case study show, the Levenberg-Marquardt neural network based on the adaptive adjustment learning step has high accuracy and speed advantages,is an ideal geological hazard assessment method.
出处 《计算机工程与应用》 CSCD 北大核心 2011年第36期234-237,共4页 Computer Engineering and Applications
基金 河北省科技支撑计划项目(No.10217114D)
关键词 列文伯格-马夸尔特神经网络 工程地质 预测评价 步长自适应调整 Levenberg-Marquardt neural network engineering geology prediction and evaluation step adaptive adjustment
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