基于机器学习的动态环境应力筛选

Justin Brown, Ian Campbell
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引用次数: 0

摘要

摘要与结论热环境应力筛选(ESS)是一种成熟的用于检测生产硬件制造缺陷的方法。为了正确筛选具有数千个焊点连接、复杂的机械配置和复杂的电气设计的系统,需要进行多次数小时的循环。目前的行业标准热ESS流程是对系统进行调查,定义轮廓,并建立每个系统要执行的固定数量的循环。众所周知,机器学习具有改善制造过程的能力[1]。为了减少测试时间和不必要的压力,可以根据ESS之前在系统上执行的生产返工量生成机器学习(ML)模型,以预测在系统上执行的最佳周期量。这种方法提高了被测系统的成本和进度。
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Dynamic Environmental Stress Screening Using Machine Learning
Summary and ConclusionsThermal Environmental Stress Screening (ESS) is a proven method used to detect manufacturing defects in production hardware. Numerous multi-hour cycles are performed to properly screen systems with thousands of solder connections, complex mechanical configurations, and intricate electrical designs. The current industry standard thermal ESS process is to perform a survey on the system, define the profile, and establish a set quantity of cycles to perform per system. It is also well-understood that machine learning has the capability to improve manufacturing processes [1]. In an effort to reduce test times and unnecessary stress, a Machine Learning (ML) model, based on the amount of production rework performed on the system prior to ESS, can be generated to predict the optimal amount of cycles to perform on the system. This approach improves both cost and schedule of the system under test.
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