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Déploiement de la Fonction Qualité Bayésien×Déploiement Robuste de la Qualité (Robust Quality Function Deployment)×
DomainePlans d'expériencesPlans d'expériences
FamilleProcess / pipelineProcess / pipeline
Année d'origineQFD: 1966–1972; Bayesian QFD extensions: 2000s–present2000s (robust extensions of QFD originating 1966)
Auteur d'origineYoji Akao (QFD); Bayesian extension developed by multiple researchers including Fung, Tang, and colleaguesExtension of Yoji Akao's QFD (1966); robust adaptation by Fung, Kwong and others (early 2000s)
TypeProbabilistic customer-driven design planning methodHybrid quality-engineering planning method
Source fondatriceTang, J., Fung, R. Y. K., Xu, B., & Wang, D. (2002). A new approach to quality function deployment planning with financial consideration. Computers & Operations Research, 29(11), 1447–1463. DOI ↗Fung, R. Y. K., Tang, J., & Tu, Y. (2002). Modeling of quality function deployment planning under resource allocation constraints. Computers & Industrial Engineering, 43(1–2), 313–328. link ↗
AliasBayesian QFD, Probabilistic QFD, Bayesian House of Quality, Bayesian Voice of the Customer AnalysisRobust QFD, Uncertainty-tolerant QFD, Fuzzy-robust QFD, Robust House of Quality
Apparentées54
RésuméBayesian Quality Function Deployment (Bayesian QFD) integrates Bayesian probabilistic inference into the classical House of Quality framework to handle uncertainty in customer preference data and relationship matrices. By expressing relationship weights and importance ratings as probability distributions rather than point estimates, it propagates uncertainty through the planning process and yields more defensible engineering prioritization decisions under incomplete or conflicting customer information.Robust Quality Function Deployment (Robust QFD) extends the classical House of Quality framework by explicitly modeling uncertainty and variability in customer requirements, perception ratings, and engineering correlation judgments. Instead of treating inputs as crisp single-point values, it applies fuzzy sets, interval analysis, or Taguchi-inspired robustness techniques to ensure that the resulting design targets remain stable and customer-satisfying even when inputs are imprecise or fluctuating.
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ScholarGateComparer des méthodes: Bayesian Quality Function Deployment · Robust Quality Function Deployment. Consulté le 2026-06-15 sur https://scholargate.app/fr/compare