AbstractThis paper describes a new defect cause search support system by combining Bayesian network and ontology to use the inherent production theory and the operation knowledge in the manufacturing process. The internal parameters, that are not measured as the actual data but can be calculated by mathematical model based on the production theory, often cause the truth of defects. In this study, these parameters information is used for the probabilistic inference of the defect cause by Bayesian network. The ontology is used for data dimension reduction, because too many dimensions of data deteriorates the estimation accuracy. Moreover, the calculation method of the similarity degree between the concepts in the ontology is used to search th...
International audienceThis paper provides a comprehensive data-driven diagnosis approach applicable ...
The purpose of this article is to present two new methods for industrial process diagnosis. These tw...
Today root causes of failures and quality deviations in manufacturing are usually identified using e...
AbstractThis paper describes a new defect cause search support system by combining Bayesian network ...
International audienceThis paper proposes an approach to accurately localize the origin of product q...
Abstract: This paper proposes a method to accurately locate the source of product quality drift in a...
The diagnostic problem is posed as recognizing patterns in rejection data and thesubsequent mapping ...
A key challenge for Industry 4.0 applications is to develop control systems for automated manufactur...
In this work, a new approach for fault diagnosis in the field of additive manufacturing (3d printing...
International audienceThe paper proposes a diagnosis approach corresponding to the specific MES leve...
International audiencePresent manufacturing systems are equipped with sensors that provide a basis f...
Part 4: Product and Asset Life Cycle Management in Smart Factories of Industry 4.0International audi...
This paper provides a comprehensive data-driven diagnosis approach applicable to complex manufacturi...
The aim of this paper is to present a new method for process diagnosis using a Bayesian network. The...
A Bayesian network (BN) is a powerful tool to represent the quantitative and qualitative features of...
International audienceThis paper provides a comprehensive data-driven diagnosis approach applicable ...
The purpose of this article is to present two new methods for industrial process diagnosis. These tw...
Today root causes of failures and quality deviations in manufacturing are usually identified using e...
AbstractThis paper describes a new defect cause search support system by combining Bayesian network ...
International audienceThis paper proposes an approach to accurately localize the origin of product q...
Abstract: This paper proposes a method to accurately locate the source of product quality drift in a...
The diagnostic problem is posed as recognizing patterns in rejection data and thesubsequent mapping ...
A key challenge for Industry 4.0 applications is to develop control systems for automated manufactur...
In this work, a new approach for fault diagnosis in the field of additive manufacturing (3d printing...
International audienceThe paper proposes a diagnosis approach corresponding to the specific MES leve...
International audiencePresent manufacturing systems are equipped with sensors that provide a basis f...
Part 4: Product and Asset Life Cycle Management in Smart Factories of Industry 4.0International audi...
This paper provides a comprehensive data-driven diagnosis approach applicable to complex manufacturi...
The aim of this paper is to present a new method for process diagnosis using a Bayesian network. The...
A Bayesian network (BN) is a powerful tool to represent the quantitative and qualitative features of...
International audienceThis paper provides a comprehensive data-driven diagnosis approach applicable ...
The purpose of this article is to present two new methods for industrial process diagnosis. These tw...
Today root causes of failures and quality deviations in manufacturing are usually identified using e...