首页> 外文会议>Thermal and Thermomechanical Phenomena in Electronic Systems (ITherm), 2012 13th IEEE Intersociety Conference on >Classification of multiple failure modes in package-on-package (PoP) assemblies using feature vectors for progression of accrued damage
【24h】

Classification of multiple failure modes in package-on-package (PoP) assemblies using feature vectors for progression of accrued damage

机译:使用特征向量对应累及的损害进行分类的堆叠式包装(PoP)组装中的多种故障模式

获取原文
获取原文并翻译 | 示例

摘要

Miniaturization of electronic products has resulted in proliferation of package-on-package (PoP) architectures in portable electronics. In this study, daisy-chained double-stack PoP components have been used for early-identification of drop-shock impact damage. Time-spectral feature vector based damage pre-cursors have been identified and measured under applied shock stimulus. Experimental strain data has been acquired using strain sensors, digital image correlation. Continuity has been measured suing high-speed instrumentation for identification of failure in the PoP assemblies. The time-evolution of spectral content of the damage pre-cursors has been studied using joint time frequency analysis (JTFA). The Karhunen-Loéve transform (KLT) has been used for feature reduction and de-correlation of the feature vectors for input to an artificial neural network. The artificial neural net has been trained for failure-mode identification using simulated data-sets created from error-seeded models with specific failure modes. The neural net has then been used to identify and classify the failure modes experimentally observed in tested board assemblies. Supervised learning of multilayer neural net in conjunction with parity has been used to identify the hard-separation boundaries between failure mode clusters in the de-correlated feature space. Pre-failure feature space has been classified for different fault modes in PoP assemblies subjected to drop and shock.
机译:电子产品的小型化已导致便携式电子产品中的层叠封装(PoP)架构激增。在这项研究中,菊花链式双栈PoP组件已用于跌落冲击冲击损伤的早期识别。基于时间谱特征向量的损伤前体已被识别并在施加的冲击刺激下进行了测量。实验应变数据已使用应变传感器,数字图像关联获取。已使用高速仪器测量了连续性,以识别PoP组件中的故障。使用联合时频分析(JTFA)研究了损伤前体的光谱含量随时间的变化。 Karhunen-Loéve变换(KLT)已用于特征向量的特征约简和去相关,以输入到人工神经网络。人工神经网络已经使用从具有特定故障模式的错误播种模型创建的模拟数据集进行了故障模式识别的培训。然后,将神经网络用于识别和分类在测试的电路板组件中实验观察到的故障模式。多层神经网络与奇偶校验相结合的监督学习已被用于识别不相关特征空间中故障模式簇之间的硬分离边界。对于遭受跌落和冲击的PoP组件中的不同故障模式,已对故障前特征空间进行了分类。

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