International audienceIn this work, we propose a modification of the traditional Auto Associative Kernel Regression (AAKR) method which enhances the signal reconstruction robustness, i.e., the capability of reconstructing abnormal signals to the values expected in normal conditions. The modification is based on the definition of a new procedure for the computation of the similarity between the present measurements and the historical patterns used to perform the signal reconstructions. The underlying conjecture for this is that malfunctions causing variations of a small number of signals are more frequent than those causing variations of a large number of signals. The proposed method has been applied to real normal condition data collected i...
The raw vibration signal carries a great deal of information representing the mechanical equipment's...
International audienceSensors are placed at various locations in a production plant to monitor the s...
This thesis is concerned with extending process monitoring and diagnosis to electrical and mechanica...
International audienceIn this work, we propose a modification of the traditional Auto Associative Ke...
International audienceThe application of the Auto Associative Kernel Regression (AAKR) method to the...
Early fault detection of engineering systems allows early warnings of anomalies and provides time to...
In this work, the recently developed auto associative bilateral kernel regression (AABKR) method for...
In recent years Autoassociative Kernel Regression (AAKR) have become a frequently used method for fa...
In this paper, a new data-driven auto associative bilateral kernel regression (AABKR) method based o...
International audienceOver the last few decades, Condition Monitoring (CM) techniques have been stro...
Chatou Cedex, France Abstract – In this paper, we investigate the feasibility of a strategy of fault...
We study the generation and visualization of residuals for detecting and identifying unseen faults u...
The paper presents a generalization of multi-dimensional linear regression to facilitate multi-senso...
Abstract—Monitoring the health conditions of equipment allows supplying advanced warning of their in...
International audienceMonitoring the condition of a component is typically based on an empirical mod...
The raw vibration signal carries a great deal of information representing the mechanical equipment's...
International audienceSensors are placed at various locations in a production plant to monitor the s...
This thesis is concerned with extending process monitoring and diagnosis to electrical and mechanica...
International audienceIn this work, we propose a modification of the traditional Auto Associative Ke...
International audienceThe application of the Auto Associative Kernel Regression (AAKR) method to the...
Early fault detection of engineering systems allows early warnings of anomalies and provides time to...
In this work, the recently developed auto associative bilateral kernel regression (AABKR) method for...
In recent years Autoassociative Kernel Regression (AAKR) have become a frequently used method for fa...
In this paper, a new data-driven auto associative bilateral kernel regression (AABKR) method based o...
International audienceOver the last few decades, Condition Monitoring (CM) techniques have been stro...
Chatou Cedex, France Abstract – In this paper, we investigate the feasibility of a strategy of fault...
We study the generation and visualization of residuals for detecting and identifying unseen faults u...
The paper presents a generalization of multi-dimensional linear regression to facilitate multi-senso...
Abstract—Monitoring the health conditions of equipment allows supplying advanced warning of their in...
International audienceMonitoring the condition of a component is typically based on an empirical mod...
The raw vibration signal carries a great deal of information representing the mechanical equipment's...
International audienceSensors are placed at various locations in a production plant to monitor the s...
This thesis is concerned with extending process monitoring and diagnosis to electrical and mechanica...