On Sharing Part Dimensions Information and Its Impact on Design Tolerances In Fixed-Bin Selective Assembly

成果类型:
Article
署名作者:
Clottey, Toyin; Benton, W. C. Jr Jr
署名单位:
Iowa State University; University System of Ohio; Ohio State University
刊物名称:
PRODUCTION AND OPERATIONS MANAGEMENT
ISSN/ISSBN:
1059-1478
DOI:
10.1111/poms.13503
发表日期:
2021
页码:
4089-4104
关键词:
matchable degree surplus parts algorithm components QUALITY MODEL optimization
摘要:
Fixed-bin selective assembly (FBSA) is a method for producing high-tolerance specification assembly from lower precision components. This study investigates the design tolerance implications of an external supplier sharing dimensional information about shipped parts to be used for FBSA. An approach for reducing surplus components in FBSA is to predictively adjust the assembler's manufacturing process so that components produced internally better match those of incoming parts. However, it is unclear how the assembler's use of timely dimensions information-that is fully shared or is shared for a limited period, about the mean, variance, or both-of an externally sourced mating part would influence procedures for setting tolerances in an FBSA context. We develop and evaluate a Bayesian prediction-based model with estimated parameters from a US assembler of bearings. Our results indicate that adjustments made using predictions from solely historical data produced comparable assembly efficiency to those made with shared information about only the dimensional variance of incoming parts. Prediction-based adjustments, when only information about the dimensional mean was shared, yielded comparable matchable degrees to that when the mean and variance were both known. Furthermore, contrary to convention, looser tolerances were required to increase selective assembly efficiency. The shared information had a larger effect on the matchable degree than the modification of design tolerances in the absence of such information sharing. The insights have implications for coordinated component design and quality control.