Product quality evaluation by confidence intervals of process yield index

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作者
Kuen-Suan Chen
Chang-Hsien Hsu
Kuo-Ching Chiou
机构
[1] National Chin-Yi University of Technology,Department of Industrial Engineering and Management
[2] Chaoyang University of Technology,Department of Business Administration
[3] Asia University,Institute of Innovation and Circular Economy
[4] Asia University,Department of Business Administration
[5] Chaoyang University of Technology,Department of Finance
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摘要
Statistical techniques have a beneficial effect on measuring process variability, analyzing the variability concerning product requirements, and eliminating the variability in product manufacturing. Process capability indices (PCIs) are not only easy to understand but also able to be directly employed by the manufacturing industry. The process yield index offers accurate measurement of the process yield, and it is a function of two unilateral six sigma quality indices. This paper initiates to develop the confidence intervals of the process yield index by using joint confidence regions of two unilateral six sigma quality indices for all quality characteristics of a product. Then integrate these joint confidence regions to find the confidence intervals of the product yield index. All manufacturing industries can use these confidence intervals to make statistical inferences to assess whether the process capability of the product and all quality characteristics has reached the required level, and to grasp the opportunities for improvement. An illustrated example on driver integrated circuit of micro hard disk is provided.
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