淡江大學機構典藏:Item 987654321/127263
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    Title: A Rectifying Acceptance Sampling Plan Based on the Process Capability Index
    Authors: Yen, Ching-ho
    Keywords: acceptance sampling plan;process capability indices;rectifying inspection;average outgoing quality limit;sensitivity analysis
    Date: 2020-01-20
    Issue Date: 2025-03-24 12:05:25 (UTC+8)
    Publisher: MDPI
    Abstract: The acceptance sampling plan and process capability index (PCI) are critical decision tools for quality control. Recently, numerous research papers have examined the acceptance sampling plan in combination with the PCI. However, most of these papers have not considered the aspect of rectifying inspections. In this paper, we propose a quality cost model of repetitive sampling to develop a rectifying acceptance sampling plan based on the one-sided PCI. This proposed model minimizes the total quality cost (TQC) of sentencing one lot, including inspection cost, internal failure cost, and external failure cost. In addition, sensitivity analysis is conducted to investigate the behavior of relevant parameters against TQC. To demonstrate the advantages of the proposed methodology, a comparison is implemented with the existing rectifying sampling plan in terms of TQC and average outgoing quality limit. This comparison reveals that our proposed methodology exhibits superior performance.
    Relation: Mathematics 8(1), 141
    DOI: 10.3390/math8010141
    Appears in Collections:[Department of Artificial Intelligence] Journal Article

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