期刊文献+

基于ASP.NET技术的围岩分级系统开发 被引量:8

Rock Mass Classification System Based on ASP.NET
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摘要 文章介绍了开发的基于互联网的围岩分级系统。该系统以ASP.NET技术为基础,结合了数据库技术、支持向量机技术、MATLAB接口等技术,实现了掌子面围岩信息的编录存储、围岩级别的智能判别等功能,并能使设计、专家、业主等人员通过互联网就可以及时了解到掌子面的围岩状况,对围岩级别进行综合判定,提高了隧道施工的信息化程度。 An Internet-based rock mass classification system is introduced,which is based on ASP.NET and incorporates the technologies of database,Support Vector Machine and MATLAB interface.The system has the functions of storing the information of tunnel face and intelligently classifying the rock mass.Besides,the system can keep designers,experts and users informed of the rock mass situation of the tunnel face through the internet so as to determine the rock mass classes comprehensively,improving the informatization level of tunnel construction.
出处 《现代隧道技术》 EI 北大核心 2011年第1期12-16,共5页 Modern Tunnelling Technology
基金 国家自然科学基金项目(40772176) 四川省青年科技基金项目(09ZQ026-083)
关键词 ASP.NET技术 围岩分级 支持向量机 ASP.NET technique Rock mass classification Support Vector Machine
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参考文献8

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二级参考文献16

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