Publication | Open Access
Integrating Multivariate Statistical Analysis Into Six Sigma DMAIC Projects: A Case Study on AISI 52100 Hardened Steel Turning
26
Citations
45
References
2020
Year
Total Quality ManagementEngineeringSix SigmaIndustrial EngineeringMultiple-criteria Decision AnalysisQuality Improvement ProjectsReliability EngineeringSystems EngineeringMulticriteria EvaluationPrincipal Component AnalysisStatisticsProcess MeasurementDesignHardened SteelQuality ControlIndustrial DesignQuality Improvement ProjectBusinessQuality CharacteristicCase StudyAisi 52100Data Modeling
DMAIC (define, measure, analyze, improve and control) is one of the most utilized methods for guiding practitioners in the decision-making process of quality improvement projects. Industrial processes commonly deal with multiple critical-to-quality (CTQ) characteristics. When these characteristics are correlated, multivariate statistical techniques should be applied. This paper aims to propose a domain-specific Six Sigma method, the MDMAIC (multivariate DMAIC). The new stepwise procedure helps practitioners not only to reduce problem dimension but also to take account of the correlation structure among CTQs during the decision-making process. Principal component analysis has been applied for assessing the measurement system, analyzing process stability and capability, as well as modeling and optimizing multivariate manufacturing processes. A hardened steel turning case has been presented for proposal validation. The result analysis has shown that the MDMAIC was very successful in leading the practitioner during the steps and phases of the quality improvement project. The multivariate capability index of the enhanced process emphasized the substantial economic improvement.
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