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Context-Based Statistical Process Control: A Monitoring Procedure for State-Dependent Processes

机译:基于上下文的统计过程控制:状态相关过程的监视过程

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摘要

Most statistical process control (SPC) methods are not suitable for monitoring nonlinear and state-dependent processes. This article introduces the context-based SPC (CSPC) methodology for state-dependent data generated by a finite-memory source. The key idea of the CSPC is to monitor the statistical attributes of a process by comparing two context trees at any monitoring period of time. The first is a reference tree that represents the "in control" reference behavior of the process; the second is a monitored tree, generated periodically from a sample of sequenced observations, that represents the behavior of the process at that period. The Kullback-Leibler (KL) statistic is used to measure the relative "distance" between these two trees, and an analytic distribution of this statistic is derived. Monitoring the KL statistic indicates whether there has been any significant change in the process that requires intervention. An example of buffer-level monitoring in a production system demonstrates the viability of the new method with respect to conventional methods.
机译:大多数统计过程控制(SPC)方法都不适合监视非线性和依赖状态的过程。本文介绍了基于上下文的SPC(CSPC)方法,用于由有限内存源生成的状态相关数据。 CSPC的关键思想是通过在任何监视时间段比较两个上下文树来监视流程的统计属性。第一个是表示过程的“控制中”参考行为的参考树。第二个是受监视的树,它是从顺序观察的样本中定期生成的,代表了该时间段过程的行为。 Kullback-Leibler(KL)统计量用于测量这两棵树之间的相对“距离”,并得出该统计量的解析分布。监视KL统计信息可表明过程中是否有任何重大变化需要干预。生产系统中缓冲区级别监视的一个示例证明了新方法相对于常规方法的可行性。

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