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X-ray强度计算程序的全新研制
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作者 胡正西 吕俊霞 +2 位作者 凌留 胡肥龙 庄应烘 《中国测试技术》 CAS 2004年第3期72-73,63,共3页
该程序是应用VB 6 .0语言开发的一个实例 (以下简称leisure程序 ) ,VB应用程序有良好的界面 ,使得输入变得更加容易。计算结果表明它符合x -ray的强度计算的要求 ,减轻了实验者的工作负担 ,极大地提高了工作效率。
关键词 leisure程序 合金 化合物 粉末法分析 多晶衍射 X-ray强度计算程序
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Parametric optimization of dry sliding wear loss of copper-MWCNT composites
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作者 K.SOORYAPRAKASH TITUSTHANKACHAN R.RADHAKRISHNAN 《Transactions of Nonferrous Metals Society of China》 SCIE EI CAS CSCD 2017年第3期627-637,共11页
The wear behavior of multi-walled carbon nano-tubes(MWCNTs)reinforced copper metal matrix composites(MMCs)processed through powder metallurgy(PM)route was focused on and further investigated for varying MWCNT quantity... The wear behavior of multi-walled carbon nano-tubes(MWCNTs)reinforced copper metal matrix composites(MMCs)processed through powder metallurgy(PM)route was focused on and further investigated for varying MWCNT quantity viaexperimental,statistical and artificial neural network(ANN)techniques.Microhardness increases with increment in MWCNTquantity.Wear loss against varying load and sliding distance was analyzed as per L16orthogonal array using a pin-on-disctribometer.Process parameter optimization by Taguchi’s method revealed that wear loss was affected to a greater extent by theintroduction of MWCNT;this wear resistant property of newer composite was further analyzed and confirmed through analysis ofvariance(ANOVA).MWCNT content(76.48%)is the most influencing factor on wear loss followed by applied load(12.18%)andsliding distance(9.91%).ANN model simulations for varying hidden nodes were tried out and the model yielding lower MAE valuewith3-7-1network topology is identified to be reliable.ANN model predictions with R value of99.5%which highly correlated withthe outcomes of ANOVA were successfully employed to investigate individual parameter’s effect on wear loss of Cu?MWCNTMMCs. 展开更多
关键词 COPPER multi-walled carbon nano-tube (MWCNT) powder metallurgy WEAR Taguchi method analysis of variance(ANOVA) artificial neural network
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