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Smart Sampling for process control

机译:用于过程控制的智能采样

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摘要

Engineers are continually faced with decisions about how much data they can collect. In this work, we present a statistically-based smart sampling methodology which can be used to target data collection and ensure that the risk to the product is clearly understood. Smart sampling combines knowledge of the distributions of control statistics with knowledge of the run length distributions they induce to balance the cost of information against the ability to respond to anomalies. We define and explore three characteristics that any sampling plan deemed "smart" must explicitly address: control errors that are associated with basing decisions on sample data, jeopardy that is associated with uncertainty about the true condition of the process, and the switching mechanism that controls the dynamic response to the latest information about the process. We show how the interplay of these characteristics can be exploited to comprehend the merits of a sampling plan. Practical examples of optical product inspection and process defectivity control are presented and explained.
机译:工程师不断面对他们可以收集多少数据的决定。在这项工作中,我们提出了一种基于统计的智能采样方法,可用于瞄准数据收集,并确保清楚地理解产品的风险。智能采样将控制统计分布的知识与他们引起的运行长度分布的知识相结合,以平衡抵消异常的能力的信息成本。我们定义并探索了任何被视为“SMART”的采样计划必须明确地址的三个特征:控制与样本数据的基础决策相关联的错误,与该过程的真实条件相关的危险,以及控制的切换机制对该过程的最新信息的动态响应。我们展示了如何利用这些特征的相互作用来理解采样计划的优点。呈现和解释了光学产品检测和工艺缺陷控制的实际实例。

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