基于威布尔分布质量数据的供应商过程能力指标区间估计

Yanhe Cui, Jun Yang
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引用次数: 1

摘要

过程能力指数在过程质量能力分析中起着重要的作用。然而,数据欺诈事件的发生表明供应商可能会提供虚假信息,从而导致客户做出不正确的选择。因此,为了评估pci,进一步检查供应商提供的数据的真实性,需要从供应商产品进行过程能力分析。根据技术要求,对供应商产品的质量数据进行双重截断。考虑到实际生产过程中产品的许多质量特征都遵循威布尔分布,提出了一种利用截断威布尔数据进行pci区间估计的方法。首先,采用蒙特卡罗- em算法对未知参数进行估计。然后,采用分位数填充算法将威布尔截断的数据转换为伪完备数据。在获得伪完备数据后,我们应用广义置信区间计算cpi的区间估计。最后,给出了一个实例来说明该方法的实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interval Estimation of Process Capability Indices Based on the Weibull Distributed Quality Data of Supplier Products
Process capability indices (PCIs) play an important role in analyzing process quality capability. However, the occurrence of data fraud events indicates that suppliers may provide false information, which may result in inappropriate choices for customers. Thus, to estimate PCIs and further check authenticity of data provided by suppliers, it is necessary to carry out process capability analysis from supplier products. The quality data of supplier products are doubly truncated based on technical requirements. Considering many quality characteristics of products from practical processes follow Weibull distributions, we propose an interval estimation method of PCIs using the truncated Weibull data. First, Monte Carlo-EM algorithm is applied to estimate unknown parameters. Then, a quantile-filling algorithm is adopted to transform Weibull truncated data into pseudo-complete data. After pseudo-complete data are obtained, we apply generalized confidence interval to calculate interval estimation of PCIs. Finally, an example is provided to illustrate the implement of the proposed method.
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