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Allocation of quality improvement targets based on investments in learning

Author

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  • Herbert Moskowitz
  • Robert Plante
  • Jen Tang

Abstract

Purchased materials often account for more than 50% of a manufacturer's product nonconformance cost. A common strategy for reducing such costs is to allocate periodic quality improvement targets to suppliers of such materials. Improvement target allocations are often accomplished via ad hoc methods such as prescribing a fixed, across‐the‐board percentage improvement for all suppliers, which, however, may not be the most effective or efficient approach for allocating improvement targets. We propose a formal modeling and optimization approach for assessing quality improvement targets for suppliers, based on process variance reduction. In our models, a manufacturer has multiple product performance measures that are linear functions of a common set of design variables (factors), each of which is an output from an independent supplier's process. We assume that a manufacturer's quality improvement is a result of reductions in supplier process variances, obtained through learning and experience, which require appropriate investments by both the manufacturer and suppliers. Three learning investment (cost) models for achieving a given learning rate are used to determine the allocations that minimize expected costs for both the supplier and manufacturer and to assess the sensitivity of investment in learning on the allocation of quality improvement targets. Solutions for determining optimal learning rates, and concomitant quality improvement targets are derived for each learning investment function. We also account for the risk that a supplier may not achieve a targeted learning rate for quality improvements. An extensive computational study is conducted to investigate the differences between optimal variance allocations and a fixed percentage allocation. These differences are examined with respect to (i) variance improvement targets and (ii) total expected cost. For certain types of learning investment models, the results suggest that orders of magnitude differences in variance allocations and expected total costs occur between optimal allocations and those arrived at via the commonly used rule of fixed percentage allocations. However, for learning investments characterized by a quadratic function, there is surprisingly close agreement with an “across‐the‐board” allocation of 20% quality improvement targets. © John Wiley & Sons, Inc. Naval Research Logistics 48: 684–709, 2001

Suggested Citation

  • Herbert Moskowitz & Robert Plante & Jen Tang, 2001. "Allocation of quality improvement targets based on investments in learning," Naval Research Logistics (NRL), John Wiley & Sons, vol. 48(8), pages 684-709, December.
  • Handle: RePEc:wly:navres:v:48:y:2001:i:8:p:684-709
    DOI: 10.1002/nav.1042
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    References listed on IDEAS

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    1. Charles H. Fine, 1986. "Quality Improvement and Learning in Productive Systems," Management Science, INFORMS, vol. 32(10), pages 1301-1315, October.
    2. Argote, L. & Epple, D., 1990. "Learning Curves In Manufacturing," GSIA Working Papers 89-90-02, Carnegie Mellon University, Tepper School of Business.
    3. Plante, Robert D., 1999. "Multicriteria models for the allocation of design parameter targets," European Journal of Operational Research, Elsevier, vol. 115(1), pages 98-112, May.
    4. Paul S. Adler & Kim B. Clark, 1991. "Behind the Learning Curve: A Sketch of the Learning Process," Management Science, INFORMS, vol. 37(3), pages 267-281, March.
    5. Christopher D. Ittner, 1996. "Exploratory Evidence on the Behavior of Quality Costs," Operations Research, INFORMS, vol. 44(1), pages 114-130, February.
    6. Robert Plante & Herbert Moskowitz & Jen Tang & Jeff Duffy, 1999. "Improving Quality via Matching: A Case Study Integrating Supplier and Manufacturer Quality Performance," Manufacturing & Service Operations Management, INFORMS, vol. 1(1), pages 36-49.
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