Publication | Closed Access
Product design through multivariate statistical analysis of process data
139
Citations
17
References
1998
Year
EngineeringIndustrial EngineeringSmart ManufacturingProcess DevelopmentQuality Function DeploymentProcess SafetySystems EngineeringProcessing And ManufacturingNew Product DevelopmentProcess OptimizationLow‐density PolyethyleneDesignProcess MonitoringProcess AnalysisManufacturing SystemsProcess Systems EngineeringMultivariate Statistical AnalysisManufacturing StrategyIndustrial DesignProcess ControlMultivariate Statistical MethodsBusinessProduction EngineeringProduct GradesProduct Modeling
Abstract A methodology is developed for finding a window of operating conditions within which one should be able to produce a product having a specified set of quality characteristics. The only information assumed to be available is that contained within historical data on the process obtained during the production of a range of existing product grades. Multivariate statistical methods are used to build and to invert either linear or nonlinear empirical latent variable models of the existing plant operations to obtain a window of operating conditions that are capable of yielding the desired product and that are still consistent with past operating procedures and constraints. The methods and concepts are illustrated using a simulated high‐pressure tubular reactor process for producing low‐density polyethylene.
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