Fault Diagnosis in real systems usually involves human expert’s shallow knowledge (as pattern causes-effects) but also deep knowledge (as structural / functional modularization and models on behavior). The paper proposes a unified approach on diagnosis by abduction based on plausibility and relevance criteria multiple applied, in a connectionist implementation. Then, it focuses elicitation of deep knowledge on target conductive flow systems – most encountered in industry and not only, in the aim of fault diagnosis. Finally, the paper gives hints on design and building of diagnosis system by abduction, embedding deep and shallow knowledge (according to case) and performing hierarchical fault isolation, along with a case study on a hydraulic ...
. Generally, the disorders in a neural network diagnosis model are assumed independent each other. I...
This paper analyzes the relationship between the techniques used to build expert systems and the beh...
AbstractThis article describes three diagnostic methods for use with industrial processes. They are ...
Fault Diagnosis in real systems usually involves human expert’s shallow knowledge (as pattern ...
Abstract: Fault Diagnosis in real systems usually involves human expert’s shallow knowledge (as patt...
Fault Diagnosis in real systems usually involves human expert’s shallow knowledge (as pattern causes...
The principles of deep modeling are described. There are two approaches to deep modeling: component ...
The use of knowledge-based systems to aid in the diagnosis of faults in physical devices has grown c...
Pattern recognition has its origins in engineering while machine learning developed from computer sc...
Several artificial intelligence architectures and systems based on "deep" models of a domain have be...
This paper proposes a method to solve the network fault diagnosis problem using the Realistic Abduct...
This book offers a compilation for experts, scholars, and researchers to present the most recent adv...
This paper argues that automated knowledge acquisition for diagnosis has had limited success in both...
An abduction-based diagnosis technique for a class of discrete-event systems (DESs), called complex ...
Abductive reasoning involves generating an explanation for a given set of observations about the wor...
. Generally, the disorders in a neural network diagnosis model are assumed independent each other. I...
This paper analyzes the relationship between the techniques used to build expert systems and the beh...
AbstractThis article describes three diagnostic methods for use with industrial processes. They are ...
Fault Diagnosis in real systems usually involves human expert’s shallow knowledge (as pattern ...
Abstract: Fault Diagnosis in real systems usually involves human expert’s shallow knowledge (as patt...
Fault Diagnosis in real systems usually involves human expert’s shallow knowledge (as pattern causes...
The principles of deep modeling are described. There are two approaches to deep modeling: component ...
The use of knowledge-based systems to aid in the diagnosis of faults in physical devices has grown c...
Pattern recognition has its origins in engineering while machine learning developed from computer sc...
Several artificial intelligence architectures and systems based on "deep" models of a domain have be...
This paper proposes a method to solve the network fault diagnosis problem using the Realistic Abduct...
This book offers a compilation for experts, scholars, and researchers to present the most recent adv...
This paper argues that automated knowledge acquisition for diagnosis has had limited success in both...
An abduction-based diagnosis technique for a class of discrete-event systems (DESs), called complex ...
Abductive reasoning involves generating an explanation for a given set of observations about the wor...
. Generally, the disorders in a neural network diagnosis model are assumed independent each other. I...
This paper analyzes the relationship between the techniques used to build expert systems and the beh...
AbstractThis article describes three diagnostic methods for use with industrial processes. They are ...