Remaining Useful Life Estimation using a combined Physics of Failure and Deep Learning-based approach on SAC305 Solder PCBs subjected to Thermo-Mechanical Vibration Loads

P. Lall, Tony Thomas, J. Suhling, K. Blecker
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Abstract

This paper focuses on the real-time remaining useful life (RUL) estimation of SAC305, SAC105 and SnPb solder alloy PCBs subjected to combined temperature and vibration loads. The RUL estimation of the packages on the PCB were carried out using a combined physics of failure and deep learning approaches for different operating conditions. The test boards used in this study are of same configuration for all the three solder materials and it consists of a multilayer FR4 configuration with JEDEC standard dimensions. The failure predictions and feature vector identifications are carried out using the strain gauge signals attached at the back of the PCB. The strain signals are analyzed both in the time and frequency domain to identify the different feature vectors that can predict failure of the packages as the number of drop increases. Principal component analysis is used as the pattern recognition and data reduction technique for the time and frequency domain data of the strain signals. Frequency components including and excluding the natural frequency of the test boards were used to identify the different patterns of before and after failure strain signals. The remaining useful life estimations are very useful in improving the efficiency and proactively helps to schedule maintenance effectively. The use of deep learning helps to models complex systems with multiple parameters involving nonlinear behaviors. In this paper the feature vectors identified from different operating conditions are modelled using a combined physics of failure and deep learning-based approach to estimate the remaining useful life of the packages. The changes in the material characteristics of the solders with different operating conditions are also modelled to the Long Short-term Memory (LSTM) deep learning model with the feature vectors to predict the failure of the packages. A regression model to predict the failure is also modelled to predict the failure based on the loading and material characteristics of the solders. LSTM models for each solder materials for multiple use-cases are modeled, and combined models involving different acceleration levels are also modeled.
基于故障物理和深度学习方法的SAC305焊料pcb热机械振动载荷剩余使用寿命估算
本文主要研究了SAC305、SAC105和SnPb焊料合金pcb在温度和振动复合载荷作用下的实时剩余使用寿命(RUL)估算。在不同的操作条件下,使用故障物理和深度学习方法对PCB上的封装进行RUL估计。本研究中使用的测试板对于所有三种焊料都具有相同的配置,并且由具有JEDEC标准尺寸的多层FR4配置组成。故障预测和特征向量识别是使用附着在PCB背面的应变片信号进行的。在时域和频域对应变信号进行分析,以确定不同的特征向量,这些特征向量可以预测随着液滴数量的增加包装的失效。采用主成分分析作为应变信号时频域数据的模式识别和数据约简技术。利用包括和不包括试验板固有频率的频率分量来识别失效前后应变信号的不同模式。剩余使用寿命估计在提高效率和主动帮助有效地安排维护方面非常有用。深度学习的使用有助于对包含非线性行为的多个参数的复杂系统进行建模。在本文中,使用故障物理和基于深度学习的方法对从不同操作条件中识别的特征向量进行建模,以估计包的剩余使用寿命。将不同操作条件下焊料材料特性的变化建模到具有特征向量的长短期记忆(LSTM)深度学习模型,以预测封装的失效。建立了基于钎料载荷和材料特性的失效预测回归模型。对多种用例中每种焊料的LSTM模型进行建模,并对涉及不同加速级别的组合模型进行建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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