电子包装中高分子材料的识别,包括防伪

Junbo Yang, Jiefeng Xu, Seungbae Park
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引用次数: 5

摘要

环氧基下填充材料被广泛应用于微电子封装中,以降低有机衬底与硅片之间的热膨胀系数(CTE)失配以及焊点上的热应力。当研究人员处理涉及各种底填体的模拟时,缺乏有关底填体材料类型及其材料特性的信息可能是一个真正的障碍。因此,正确获取下填土材料的材料特性,可以提高模拟结果的可靠性,从而获得最优解,从而显著降低实验成本和时间。本文提出了一种新型的固化下填料拼装件的识别方法。针对下填料尺寸小、不溶于有机溶剂、不易采集等问题,提出了利用傅里叶变换红外光谱显微镜衰减全反射(FT-IR microscope, ATR)检测装配式封装下填料的合适方法。选择每种材料光谱的指纹区域,应用化学计量学建立判别模型。采用类类比的软独立建模(SIMCA)方法,建立了具有较高判别能力比的分类模型。通过增加训练集的数量和置信限,SIMCA模型对UF1230、EP1641、SMT88U和SMC-375TGSF5的识别准确率接近100%,表明SIMCA模型具有较强的识别下填材料的能力,且误分类风险较低。在本研究中,还提出了从组装包中收集分配或固化的下填料数据的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of polymer materials in electronic packages including counterfeit prevention
Epoxy-based underfill materials are widely used in microelectronic packaging to reduce coefficient of thermal expansion (CTE) mismatch between the organic substrate and the silicon chip and thermal stresses on the solder joints. The lack of information about the underfill material type together with its material properties can be a real hindrance to researchers when they deal with simulations involved with various underfills. Therefore, getting the correct material properties of underfill materials can enhance the reliability of simulation results to achieve the optimal solution, which significantly reduces experiment costs and time. A novel identification method for cured underfill materials from assembled packages is presented in this paper. Because the underfill materials are tiny size, insoluble in organic solvent and hard to harvest issues, the Fourier-transform infrared spectroscopy microscope Attenuated total reflectance (FT-IR Microscope ATR) have been proposed as a proper method to detect the underfill materials from assembled package. The fingerprint region of each material spectrum is chosen to apply the chemometrics to build the discriminant models. The soft independent modeling of class analogy (SIMCA) method is used to create a classification model that exhibits a high discrimination power ratio. By increasing the number of training sets and the confidence limit, the SIMCA model showed almost 100% accuracy on identification of UF1230, EP1641, SMT88U, and SMC-375TGSF5, which indicates its superior ability to discriminate underfill material with low risk of misclassification. In this study, the method of collecting dispensed or cured underfill material data from assembled packages is also presented.
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