This paper presents a novel method that utilizes in-process measurements of product quality and models that relate those measurements with the underlying manufacturing process parameters to drive down the product quality errors via strategic adjustments of the controllable process parameters. Uniqueness of the new method is its robustness to inevitable inaccuracies in the underlying models, as well as the absence of traditional, but restrictive assumptions of Gaussianity and independence of measurement and process noise terms. The new approach was demonstrated using models and data from an automotive cylinder head machining process and an industrial-scale semiconductor lithography overlay process
For implementing data analytic tools in real-world applications, researchers face major challenges s...
This dissertation develops new methodologies by integration of product quality and tooling informati...
Historically, researchers and practitioners have often failed to consider all the areas, factors, an...
This paper presents a novel method that utilizes in-process measurements of product quality and mode...
textSignificant research has been initiated recently to devise control strategies that could predict...
Today’s manufacturing industry is facing greater challenges than ever. To meet the higher and strict...
Inherent interactions between operational decisions and their impact on the product quality and equi...
Multistage manufacturing processes (MMP) are complicated processes involving more than one workstati...
Manufacturing is usually performed as a sequence of operations such as forming, machining, inspectio...
Digitalisation of industrial processes, also called the fourth industrial revolution, is leading to ...
Data-driven modeling and fault detection of multi-stage manufacturing processes remain challenging d...
This paper develops an approach to minimize the number of process tooling adjustments and deliver an...
The quest for control and the subsequent pursuit of continuous quality improvement in the manufactur...
This article describes a method for obtaining a variation transmission model in a multi-stage manufa...
Machining process modeling & simulation as well as in-process monitoring and control have been ident...
For implementing data analytic tools in real-world applications, researchers face major challenges s...
This dissertation develops new methodologies by integration of product quality and tooling informati...
Historically, researchers and practitioners have often failed to consider all the areas, factors, an...
This paper presents a novel method that utilizes in-process measurements of product quality and mode...
textSignificant research has been initiated recently to devise control strategies that could predict...
Today’s manufacturing industry is facing greater challenges than ever. To meet the higher and strict...
Inherent interactions between operational decisions and their impact on the product quality and equi...
Multistage manufacturing processes (MMP) are complicated processes involving more than one workstati...
Manufacturing is usually performed as a sequence of operations such as forming, machining, inspectio...
Digitalisation of industrial processes, also called the fourth industrial revolution, is leading to ...
Data-driven modeling and fault detection of multi-stage manufacturing processes remain challenging d...
This paper develops an approach to minimize the number of process tooling adjustments and deliver an...
The quest for control and the subsequent pursuit of continuous quality improvement in the manufactur...
This article describes a method for obtaining a variation transmission model in a multi-stage manufa...
Machining process modeling & simulation as well as in-process monitoring and control have been ident...
For implementing data analytic tools in real-world applications, researchers face major challenges s...
This dissertation develops new methodologies by integration of product quality and tooling informati...
Historically, researchers and practitioners have often failed to consider all the areas, factors, an...