Abstract

As global competition has intensified in the automotive industry, there is a strong need for management teams to develop methods that allow accurate and objective assessments of plant productivity and to identify productivity improvement opportunities for the best manufacturing practices. Stochastic frontier analysis (SFA) models have been used as a statistical benchmarking tool to provide a bird’s-eye view of an industrial sector. SFA models can also be adapted for plant productivity assessment. However, owing to the problem of multicollinearity, the general form of SFA is difficult to apply to the assessment of complex manufacturing systems in the automotive industry, which is characterized by many control and external factors that are intercorrelated to each other. This study proposes a method for applying SFA to vehicle manufacturing plants with a focus on gaining high accuracy in model parameter estimation, by decomposing a plant into components (i.e., shops), building an SFA model for each shop, and reintegrating the general plant system through the appropriate combination of shop-level inefficiency distributions. In particular, this study focuses on documenting the derivation of a new probability density function that integrates three different inefficiency distributions. For illustration of the proposed approach, hypothetical vehicle assembly plants are assessed as examples, where the total labor hours are split into Bodyshop, Paintshop, and General Assembly, exclusively and collectively. Finally, this study offers a solution process to clarify the reasons for underperforming plants in terms of labor productivity and identify the course of actions to cure the issues with some managerial insights emphasizing the balanced approach, incorporating people, process and technology.

Highlights

  • In the automotive industry, productivity is a primary indicator for measuring vehicle assembly plant performance

  • This study offers a solution process to clarify the reasons for underperforming plants in terms of labor productivity and identify the course of actions to cure the issues with some managerial insights emphasizing the balanced approach incorporating people, process and technology

  • This study provided insight into the use of Stochastic frontier analysis (SFA) for accurate and objective assessment of plant productivity and the identification of areas for productivity improvement

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Summary

Introduction

Productivity is a primary indicator for measuring vehicle assembly plant performance (along with quality and work-in-process inventory). The overall approach is to execute the following steps: (1) decompose a vehicle assembly plant into three shops–Bodyshop, Paintshop and GA; (2) build SFA models for these shops; and (3) reintegrate the general plant system by the appropriate combination of the shops’ inefficiency distribution, which is part of the shop-level SFA model In this procedure, it is required to derive a probability density function from three different inefficiency distributions to aggregate shop-level assessment results to evaluate the plant-level productivity. Our study shows how to mitigate the problem of suppressor variable presence in assessing the productivity of highly complex vehicle assembly plants in such a way that the overall process is divided into shops (i.e., Bodyshop, Paintshop, and GA).

Literature Review
Composition of Multiple Stochastic Frontier Distributions
Illustrative Example
Conclusions
Full Text
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