基于K-Means算法的多项式回归机器学习模型在先进封装可靠性预测中的研究

H. H. Liao, K. Chiang
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引用次数: 0

摘要

本文将聚类分析与回归算法相结合,研究更有效的包装可靠性预测方法。观察晶圆级芯片规模封装(WLCSP)经历加速热循环测试(ACTC)。在确定故障情况后,通过验证的有限元模型建立各种尺寸的数据库。接下来,介绍机器学习技术。选择多项式回归(PR)算法对不同包装的可靠性进行预测,具有精度高和计算时间短的优点。结合K-Means分析得到最优结果是目标。
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Research on Polynomial Regression Machine Learning Model with K-Means Algorithm for Predicting Advanced Packaging Reliability
This study focuses on the more efficient packaging reliability prediction by considering cluster analysis and regression algorithm simultaneously. The Wafer Level Chip Scale Packaging (WLCSP) experiencing Accelerated Thermal Cycling Test (ACTC) is observed. After confirming what the failure situation is, database with various dimensions is built through validated finite element models. Next, machine learning technique is introduced. One of algorithms, Polynomial Regression(PR), is selected to predict the reliabilities of different packaging because of its accuracy and advantage in calculation time. Moreover, that combining K-Means analysis obtains optimal result is the goal.
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