Quantitative Selection of Variation Reduction Plans
- 1 March 2000
- journal article
- Published by ASME International in Journal of Mechanical Design
- Vol. 122 (2) , 185-193
- https://doi.org/10.1115/1.533559
Abstract
Quality has been a rallying call in design and manufacturing for the last two decades. One way to improve quality is through variation reduction (VR). VR teams use tools such as Design of Experiments (DoE) and robust design to improve product performance and quality by reducing variation introduced by manufacturing processes. Because VR teams are typically resource constrained, they must carefully select where to focus their efforts. Planning for VR is complex because reduction efforts are executed on individual features and processes but benefits are accrued when the overall product quality improves. The problem is further complicated by the existence of multiple performance criteria and hundreds of processes and dimensions that effect each performance requirement. Consequently, VR teams typically use qualitative assessments to prioritize and schedule their efforts. This paper provides a mathematical model capable of optimally allocating VR resources for a complex product. The VR model has three parts: a model of variation propagation, a model of variation costs, and a model of variation reduction costs. These models are used to directly calculate the optimal resource allocation plan and schedule for a product with multiple product quality requirements. An example from the aerospace industry is used to demonstrate the theory. [S1050-0472(00)00602-4]Keywords
This publication has 16 references indexed in Scilit:
- Quantitative Selection of Variation Reduction PlansJournal of Mechanical Design, 2000
- A Mathematical Framework for the Key Characteristic ProcessResearch in Engineering Design, 1999
- Variation Risk Management Using Modeling and SimulationJournal of Mechanical Design, 1999
- Generalized 3-D tolerance analysis of mechanical assemblies with small kinematic adjustmentsIIE Transactions, 1998
- Precision machine design assistant: A constraint-based tool for the design and evaluation of precision machine tool conceptsArtificial Intelligence for Engineering Design, Analysis and Manufacturing, 1998
- Swept Envelopes of Cutting Tools in Integrated Machine and Workpiece Error BudgetingCIRP Annals, 1997
- Using the theory of constraints to guide the implementation of quality improvement projects in manufacturing operationsInternational Journal of Production Research, 1995
- Conceptual robustness in simultaneous engineering: An extension of Taguchi's parameter designResearch in Engineering Design, 1994
- Quality Engineering Using Robust DesignTechnometrics, 1991
- Quality Improvement and Learning in Productive SystemsManagement Science, 1986