...
首页> 外文期刊>Journal of manufacturing science and engineering: Transactions of the ASME >Online Monitoring of Functional Electrical Properties in Aerosol Jet Printing Additive Manufacturing Process Using Shape-From-Shading Image Analysis
【24h】

Online Monitoring of Functional Electrical Properties in Aerosol Jet Printing Additive Manufacturing Process Using Shape-From-Shading Image Analysis

机译:使用形状从阴影图像分析在线监测气溶胶喷射印刷添加剂制造工艺的功能电性能

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

The goal of this research is online monitoring of functional electrical properties, e.g., resistance, of electronic devices made using aerosol jet printing (AJP) additive manufacturing (AM) process. In pursuit of this goal, the objective is to recover the cross-sectional profile of AJP-deposited electronic traces (called lines) through shape-from-shading (SfS) analysis of their online images. The aim is to use the SfS-derived cross-sectional profiles to predict the electrical resistance of the lines. An accurate characterization of the cross section is essential for monitoring the device resistance and other functional properties. For instance, as per Ohm’s law, the electrical resistance of a conductor is inversely proportional to its cross-sectional area (CSA). The central hypothesis is that the electrical resistance of an AJP-deposited line estimated online and in situ from its SfS-derived cross-sectional area is within 20% of its offline measurement. To test this hypothesis, silver nanoparticle lines were deposited using an Optomec AJ-300 printer at varying sheath gas flow rate (ShGFR) conditions. The four-point probes method, known as Kelvin sensing, was used to measure the resistance of the printed structures offline. Images of the lines were acquired online using a charge-coupled device (CCD) camera mounted coaxial to the deposition nozzle of the printer. To recover the cross-sectional profiles from the online images, three different SfS techniques were tested: Horn’s method, Pentland’s method, and Shah’s method. Optical profilometry was used to validate the SfS cross section estimates. Shah’s method was found to have the highest fidelity among the three SfS approaches tested. Line resistance was predicted as a function of ShGFR based on the SfS-estimates of line cross section using Shah’s method. The online SfS-derived line resistance was found to be within 20% of offline resistance measurements done using the Kelvin sensing technique.
机译:该研究的目标是在线监测功能电性能,例如电阻,使用气溶胶喷射印刷(AJP)添加剂制造(AM)工艺制造的电子设备。在追求这一目标中,目的是通过他们在线图像的形状从阴影(SFS)分析来恢复AJP沉积的电子迹线(称为线)的横截面轮廓。目的是使用SFS衍生的横截面轮廓来预测线路的电阻。横截面的精确表征对于监测器件电阻和其他功能性质来说是必不可少的。例如,根据欧姆的法律,导体的电阻与其横截面积(CSA)成反比。中央假设是,在线估计的AJP沉积线的电阻来自其SFS衍生的横截面积,在其离线测量的20%以内。为了测试该假设,使用Optomec AJ-300打印机以不同的鞘气流速率(SHGFR)条件,沉积银纳米颗粒系。使用称为keelvin感应的四点探针方法用于测量印刷结构的电阻离线。使用电荷耦合器件(CCD)相机在线在线获取线路的图像,该电荷耦合装置连接到打印机的沉积喷嘴。为了从在线图像中恢复横截面谱,测试了三种不同的SFS技术:Horn的方法,Pentland的方法和Shah的方法。光学轮廓测量法用于验证SFS横截面估计。发现Shah的方法在测试的三种SFS方法中具有最高的保真度。基于使用Shah方法的线横截面的SFS估计,预测线电阻是SHGFR的函数。发现在线SFS导出的线路电阻是在使用Kelvin传感技术完成离线电阻测量的20%以内。

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