首页> 外文期刊>Computational Materials Science >Application of materials informatics to vapor-grown carbon nanofiber/vinyl ester nanocomposites through self-organizing maps and clustering techniques
【24h】

Application of materials informatics to vapor-grown carbon nanofiber/vinyl ester nanocomposites through self-organizing maps and clustering techniques

机译:材料信息学通过自组织地图和聚类技术在汽化碳纳米纤维/乙烯基酯纳米复合材料中的应用

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

Data mining and knowledge discovery techniques were employed herein to acquire new information on the viscoelastic, flexural, compressive, and tensile properties of vapor-grown carbon nanofiber (VGCNF)/vinyl ester (VE) nanocomposites. Formulation and processing factors (curing environment, presence or absence of dispersing agent, mixing method, VGCNF weight fraction, VGCNF type, high-shear mixing time, and sonication time) and testing temperature were utilized as inputs and the true ultimate strength, true yield strength, engineering elastic modulus, engineering ultimate strength, flexural modulus, flexural strength, storage modulus, loss modulus, and tan delta were selected as outputs. The data mining and knowledge discovery algorithms used in this study include self-organizing maps (SOMs) and clustering techniques. SOMs demonstrated that temperature and tan delta had the most significant effects on the output responses followed by the VGCNF high-shear mixing time, and sonication time. SOMs were also used to produce optimal responses using certain combination(s) of inputs. Fuzzy C-means algorithm (FCM) was also applied to discover patterns in the nanocomposite behavior subsequent to a principal component analysis (PCA), which is a dimensionality reduction technique. Utilizing these techniques, the nanocomposite specimens were separated into different clusters based on the testing temperature (30 degrees C and 120 degrees C being the most dominant responses), tan delta, high-shear mixing time, and sonication time. Furthermore, the VGCNF/VE specimens were separated into a cluster based on their viscoelastic responses (storage and loss moduli) at the same temperature. The FCM results indicate that, while all nanocomposite properties in the new framework are essential, the viscoelastic responses of the VGCNF/VE specimens are the most significant. This work highlights the utility of data mining and knowledge discovery techniques in the context of materials informatics f
机译:在本文中使用数据挖掘和知识发现技术来获取有关汽化碳纳米纤维(VGCNF)/乙烯基酯(Ve)纳米复合材料的粘弹性,弯曲,压缩和拉伸性能的新信息。配方和处理因子(固化环境,分散剂的存在或不存在,混合方法,VGCNF重量级分,VGCNF型,高剪切混合时间和超声处理时间)和测试温度被用作输入和真正的极限强度,真正的产量选择强度,工程弹性模量,工程极限强度,弯曲模量,抗弯强度,储存模量,损耗模量和TAN DELTA作为输出。本研究中使用的数据挖掘和知识发现算法包括自组织地图(SOM)和聚类技术。 SOM证明,温度和TAN DELTA对输出响应的影响最大,然后是VGCNF高剪切混合时间和超声时间。 SOM也用于使用某些输入组合产生最佳响应。模糊C型算法(FCM)也应用于在主成分分析(PCA)之后的纳米复合作用行为中的模式,这是一种维数减少技术。利用这些技术,基于测试温度(30摄氏度为最大响应的30摄氏度,高剪切混合时间和超声时间,将纳米复合试样分离成不同的簇。此外,基于相同温度的粘弹性响应(储存和损失模量)将VGCNF / VE样本分离成簇。 FCM结果表明,虽然新框架中的所有纳米复合性能至关重要,但VGCNF / VE样本的粘弹性反应是最重要的。这项工作突出了数据挖掘和知识发现技术的实用性在材料信息学的背景下

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号