一种新的过程能力指标在电子工业中的应用

Mahendra Saha
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引用次数: 3

摘要

过程能力指数(pci)经常被用来衡量过程在规范范围内的性能。虽然更高的pci表示更高的工艺“质量”,但它并不能确定更低的拒绝率。因此,采用基于损耗的PCI来度量流程能力更为合适。在本文中,我们的第一个目标是引入一种新的能力指标,称为标准过程的对称损失函数,它提供了一种将损失纳入能力分析的定制方法。接下来,我们使用矩估计法(MOM)估计过程服从正态分布时的PCI,并通过对样本量的模拟研究,比较MOM估计的绝对偏差和相应的均方误差的性能。此外,采用广义置信区间(GCI)构造了该指标的置信区间。通过蒙特卡罗模拟,比较了GCI的平均宽度和覆盖概率。最后,为了说明所提出的估计方法和GCI的有效性,分析了来自电子行业的三个真实数据集。
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Applications of a new process capability index to electronic industries
ABSTRACT The process capability indices (PCIs) are frequently adopted to measure the performance of a process within the specifications. Although higher PCIs indicate higher process “quality,” yet it does not ascertain fewer rates of rejection. Thus, it is more appropriate to adopt a loss-based PCI for measuring the process capability. In this paper, our first objective is to introduce a new capability index called which is based on symmetric loss function for normal process which provides a tailored way of incorporating the loss in capability analysis. Next, we estimate the PCI when the process follows the normal distribution using method of moment (MOM) estimation and compare the performance of the MOM estimation in terms of their absolute biases and corresponding mean squared errors through simulation study in respect of sample sizes. Besides, generalized confidence interval (GCI) is employed for constructing the confidence intervals for the index . The performance of GCI is compared in terms of average widths and coverage probabilities using Monte Carlo simulation. Finally, for illustrating the effectiveness of the proposed method of estimation and GCI, three real data sets from electronic industries are analyzed.
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29
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