Performance of Synthetic Double Sampling Chart with Estimated Parameters Based on Expected Average Run Length

IF 1 Q3 STATISTICS & PROBABILITY Journal of Probability and Statistics Pub Date : 2018-05-31 DOI:10.1155/2018/7583610
H. You
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引用次数: 5

Abstract

A synthetic double sampling (SDS) chart is commonly evaluated based on the assumption that process parameters (namely, mean and standard deviation) are known. However, the process parameters are usually unknown and must be estimated from an in-control Phase-I dataset. This will lead to deterioration in the performance of a control chart. The average run length (ARL) has been implemented as the common performance measure in process monitoring of the SDS chart. Computation of ARL requires practitioners to determine shift size in advance. However, this requirement is too restricted as practitioners may not have the experience to specify the shift size in advance. Thus, the expected average run length (EARL) is introduced to assess the performance of the SDS chart when the shift size is random. In this paper, the SDS chart, with known and estimated process parameters, was evaluated based on EARL and compared with the performance measure, ARL.
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基于期望平均行程长度的参数估计的合成双采样图的性能
合成双采样(SDS)图通常基于过程参数(即平均值和标准偏差)已知的假设进行评估。然而,过程参数通常是未知的,必须根据控制中的第一阶段数据集进行估计。这将导致控制图性能的恶化。平均行程长度(ARL)已被用作SDS图过程监控中的常用性能度量。ARL的计算需要从业者提前确定偏移大小。然而,这一要求受到了太多的限制,因为从业者可能没有提前规定轮班规模的经验。因此,当偏移大小是随机的时,引入期望平均运行长度(EARL)来评估SDS图的性能。本文基于EARL对具有已知和估计工艺参数的SDS图进行了评估,并与性能指标ARL进行了比较。
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来源期刊
Journal of Probability and Statistics
Journal of Probability and Statistics STATISTICS & PROBABILITY-
自引率
0.00%
发文量
14
审稿时长
18 weeks
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