- Xiao Ya Tong
- DOI: 10.5281/zenodo.19206603
- GAS Journal of Economics and Business Management (GASJEBM)
Aiming
at the fluctuation problem of bolt diameter—a critical quality parameter—in the
production process of automobile parts, this study establishes an optimized
model for parts quality control based on linear regression, statistical
inference, and Bootstrap methods. By simulating production data of 150 batches
(including categorical variables such as pressure, temperature, feed rate, tool
wear, machine number, and material batch), the influence law of each factor on
bolt diameter is analyzed.
(1)
The ggpairs function was used for exploratory analysis to obtain correlation
relationships, and a multiple linear regression model was established. The
broom package was applied to calculate correlation coefficients and confidence
intervals, revealing that pressure and tool wear are the influencing
factors—i.e., pressure and tool wear have a significant impact on bolt
diameter, while temperature and feed rate show no obvious effects.
(2)
ANOVA (Analysis of Variance) was employed to verify the interaction effect
between machine batches and material batches. Meanwhile, the Boot package was
used to perform Bootstrap sampling with R=1000 iterations, constructing
confidence intervals for key characteristic coefficients and verifying the
stability of the pressure coefficient.
(3)
Based on statistical results, reasonable process improvement suggestions are
proposed: appropriately increasing pressure, reasonably reducing tool wear,
switching to Machine M1, and monitoring/improving production quality via the
Process Capability Index (Cpk).
This study fully demonstrates the application potential of the Tidyverse ecosystem in the field of statistical quality control for industrial engineering, providing a reference method for the digital and intelligent development of industrial enterprises.

