Proper detection of unknown patterns plays an important role in diagnosing new classes of faults. This can be done by incremental learning of novel information and updating the diagnostic system by appending newly trained fault classifiers in an ensemble design. We consider a new-class fault detector previously developed by the authors and based on thresholding the normalized weighted average of the outputs (NWAO) of the base classifiers in a multi-classifier diagnostic system. A proper tuning of the thresholds in the NWAO detector is necessary to achieve a satisfactory performance. This is done in this paper by specifically introducing a performance function and optimizing it within the necessary trade-off between new class false alarm and...
Abstract: This paper investigates application of model-based fault detection techniques on wind turb...
Wind energy, being the fastest growing renewable energy source in the present world, requires a larg...
This paper deals with the fault diagnosis of wind turbines and investigates viable solutions to the ...
Proper detection of unknown patterns plays an important role in diagnosing new classes of faults. Th...
This paper presents an incremental way to design the decision module of a diagnostic system by resor...
The current paper proposes intelligent Fault Detection and Diagnosis (FDD) approaches, aimed to ensu...
Fault diagnosis of anomalies in induction motors is essential to ensure industry safety. This paper ...
To address the issue of a large calculation and difficult optimization for the traditional fault det...
Online condition monitoring and fault prediction will become state of the art in the next generation...
It is difficult to optimize the fault model parameters when Extreme Random Forest is used to detect ...
Fault diagnosis of induction motor anomalies is vital for achieving industry safety. This paper prop...
In this paper, a robust data-driven fault detection approach is proposed with application to a wind ...
In many industrial processes, faults are susceptible to occur and can sometimes have dramatic and/or...
This paper introduces a pioneering fault diagnosis technique termed Interval Ensemble Learning based...
This paper deals with the fault diagnosis of wind turbines and investigates viable solutions to the ...
Abstract: This paper investigates application of model-based fault detection techniques on wind turb...
Wind energy, being the fastest growing renewable energy source in the present world, requires a larg...
This paper deals with the fault diagnosis of wind turbines and investigates viable solutions to the ...
Proper detection of unknown patterns plays an important role in diagnosing new classes of faults. Th...
This paper presents an incremental way to design the decision module of a diagnostic system by resor...
The current paper proposes intelligent Fault Detection and Diagnosis (FDD) approaches, aimed to ensu...
Fault diagnosis of anomalies in induction motors is essential to ensure industry safety. This paper ...
To address the issue of a large calculation and difficult optimization for the traditional fault det...
Online condition monitoring and fault prediction will become state of the art in the next generation...
It is difficult to optimize the fault model parameters when Extreme Random Forest is used to detect ...
Fault diagnosis of induction motor anomalies is vital for achieving industry safety. This paper prop...
In this paper, a robust data-driven fault detection approach is proposed with application to a wind ...
In many industrial processes, faults are susceptible to occur and can sometimes have dramatic and/or...
This paper introduces a pioneering fault diagnosis technique termed Interval Ensemble Learning based...
This paper deals with the fault diagnosis of wind turbines and investigates viable solutions to the ...
Abstract: This paper investigates application of model-based fault detection techniques on wind turb...
Wind energy, being the fastest growing renewable energy source in the present world, requires a larg...
This paper deals with the fault diagnosis of wind turbines and investigates viable solutions to the ...