期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
洞室声波测试及数据处理技术 被引量:3
1
作者 程武伟 沈方铝 《物探化探计算技术》 CAS CSCD 2010年第1期18-26,共9页
洞室声波测试是为获得准确、详细的岩体物理学参数,而在洞室内进行的一系列声波测试方法,通过计算和观察岩体声波速度的量值变化和分布规律,对岩体工程特性进行了评价,并了解洞壁岩体因施工开挖引起的松弛状况,还可以与岩体变形试验成... 洞室声波测试是为获得准确、详细的岩体物理学参数,而在洞室内进行的一系列声波测试方法,通过计算和观察岩体声波速度的量值变化和分布规律,对岩体工程特性进行了评价,并了解洞壁岩体因施工开挖引起的松弛状况,还可以与岩体变形试验成果结合建立起动静态弹性模量之间的对比关系。 展开更多
关键词 声波测试 单孔声波 穿透声波 距离量取 数据处理 色谱图 松弛厚度 松弛声速 原位声速 动静对比
下载PDF
Research on Thermodynamic Properties of Polybrominated Diphenylamine by Neural Network 被引量:19
2
作者 堵锡华 庄文昌 +1 位作者 史小琴 冯长君 《Chinese Journal of Chemical Physics》 SCIE CAS CSCD 2015年第1期59-64,I0001,I0002,共8页
Based on the location of bromine substituents and conjugation matrix, a new substituent po- sition index ~X not only was defined, but also molecular shape indexes Km and electronega- tivity distance vectors Mm of diph... Based on the location of bromine substituents and conjugation matrix, a new substituent po- sition index ~X not only was defined, but also molecular shape indexes Km and electronega- tivity distance vectors Mm of diphenylamine and 209 kinds of polybrominated diphenylamine (PBDPA) molecules were calculated. Then the quantitative structure-property relationships (QSPR) among the thermodynamic properties of 210 organic pollutants and 0X, K3, M29, M36 were founded by Leaps-and-Bounds regression. Using the four structural parameters as input neurons of the artificial neural network, three satisfactory QSPR models with network structures of 4:21:1, 4:24:1, and 4:24:1 respectively, were achieved by the back-propagation algorithm. The total correlation coefficients R were 0.9999, 0.9997, and 0.9995 respectively and the standard errors S were 1.036, 1.469, and 1.510 respectively. The relative mean deviation between the predicted value and the experimental value of Sθ, AfHe and △fGθ- were 0.11%, 0.34% and 0.24% respectively, which indicated that the QSPR models had good stability and superior predictive ability. The results showed that there were good nonlinear correlations between the thermodynamic properties of PBDPAs and the four structural pa- rameters. Thus, it was concluded that the ANN models established by the new substituent position index were fully applicable to predict properties of PBDPAs. 展开更多
关键词 Polybrominated diphenylamine Neural networks Molecular shape index Elec-tronegativity distance vector Substituent position index Thermodynamic properties
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部