International audienceEvaluation of key performance indicators (KPIs) such as energy consumption is essential for decision-making during the design and operation of smart manufacturing systems. The measurements of KPIs are strongly affected by several uncertainty sources such as input material uncertainty, the inherent variability in the manufacturing process, model uncertainty, and the uncertainty in the sensor measurements of operational data. A comprehensive understanding of the uncertainty sources and their effect on the KPIs is required to make the manufacturing processes more efficient. Towards this objective, this paper proposed an automated methodology to generate a hierarchical Bayesian network (HBN) for a manufacturing system from...
AbstractThe cyber-physical systems of Industry 4.0 are expected to generate vast amount of in-proces...
Recent advancement in predictive machine learning has led to its application in various use cases in...
Recent advancement in predictive machine learning has led to its application in various use cases in...
International audienceEvaluation of key performance indicators (KPIs) such as energy consumption is ...
International audienceUnderstanding the sources of, and quantifying the magnitude of, uncertainty ca...
Uncertainty exists widely in various fields, especially in industrial manufacturing. From traditiona...
Any conclusion about a system’s hidden behaviour based on the observation of findings emanating from...
A new Bayesian modeling framework is proposed to account for the uncertainty in the model parameters...
On top of machine learning (ML) models, uncertainty quantification (UQ) functions as an essential la...
Many industrial applications include model parameters for which precise values are hardly available....
The advanced handling of uncertainties arising from a wide range of sources is fundamental in qualit...
A new time-domain probabilistic technique based on hierarchical Bayesian modeling (HBM) framework is...
There is an increasing demand for manufacturing processes to improve product quality and production ...
Computational models for large systems are sometimes built in a hierarchical way from simple compone...
Uncertainty quantification and its propagation across multi-scale model/experiment chains are key el...
AbstractThe cyber-physical systems of Industry 4.0 are expected to generate vast amount of in-proces...
Recent advancement in predictive machine learning has led to its application in various use cases in...
Recent advancement in predictive machine learning has led to its application in various use cases in...
International audienceEvaluation of key performance indicators (KPIs) such as energy consumption is ...
International audienceUnderstanding the sources of, and quantifying the magnitude of, uncertainty ca...
Uncertainty exists widely in various fields, especially in industrial manufacturing. From traditiona...
Any conclusion about a system’s hidden behaviour based on the observation of findings emanating from...
A new Bayesian modeling framework is proposed to account for the uncertainty in the model parameters...
On top of machine learning (ML) models, uncertainty quantification (UQ) functions as an essential la...
Many industrial applications include model parameters for which precise values are hardly available....
The advanced handling of uncertainties arising from a wide range of sources is fundamental in qualit...
A new time-domain probabilistic technique based on hierarchical Bayesian modeling (HBM) framework is...
There is an increasing demand for manufacturing processes to improve product quality and production ...
Computational models for large systems are sometimes built in a hierarchical way from simple compone...
Uncertainty quantification and its propagation across multi-scale model/experiment chains are key el...
AbstractThe cyber-physical systems of Industry 4.0 are expected to generate vast amount of in-proces...
Recent advancement in predictive machine learning has led to its application in various use cases in...
Recent advancement in predictive machine learning has led to its application in various use cases in...