通过对生产结果的早期预测来改善质量控制

S. Weiss, Amit Dhurandhar, R. Baseman
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引用次数: 17

摘要

我们描述了在最终测试之前对成品质量进行持续预测的方法。在我们最广泛的建模方法中,每次制造操作后都会更新产品的估计最终特性。我们最初的应用是用于微处理器的制造,我们预测了微处理器的最终速度。利用这些预测,可以采取早期的纠正措施来提高预期的慢晶圆(微处理器集合)的速度或降低快速晶圆的速度。这样的预测也可以用来启动纠正供应链管理行动。为这项任务开发统计学习模型有许多复杂的因素:(a)人口暂时不稳定;(b)稀疏抽样测量导致的数据缺失;(c)在纠正行动机会之前可用的测量相对较少。在实际制造试点应用中,我们的自动化模型实时选择了125个快速晶圆。正如预测的那样,这些晶圆比平均速度快得多。在生产过程中,下游的纠正处理使25片名义上不合格的晶圆恢复正常运行。
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Improving quality control by early prediction of manufacturing outcomes
We describe methods for continual prediction of manufactured product quality prior to final testing. In our most expansive modeling approach, an estimated final characteristic of a product is updated after each manufacturing operation. Our initial application is for the manufacture of microprocessors, and we predict final microprocessor speed. Using these predictions, early corrective manufacturing actions may be taken to increase the speed of expected slow wafers (a collection of microprocessors) or reduce the speed of fast wafers. Such predictions may also be used to initiate corrective supply chain management actions. Developing statistical learning models for this task has many complicating factors: (a) a temporally unstable population (b) missing data that is a result of sparsely sampled measurements and (c) relatively few available measurements prior to corrective action opportunities. In a real manufacturing pilot application, our automated models selected 125 fast wafers in real-time. As predicted, those wafers were significantly faster than average. During manufacture, downstream corrective processing restored 25 nominally unacceptable wafers to normal operation.
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