Increasing expectations of industrial system reliability require development of more effective and robust fault diagnosis methods. The paper presents a framework for quality improvement on the neural model applied for fault detection purposes. In particular, the proposed approach starts with an adaptation of the modified quasi-outer-bounding algorithm towards non-linear neural network models. Subsequently, its convergence is proven using quadratic boundedness paradigm. The obtained algorithm is then equipped with the sequential D-optimum experimental design mechanism allowing gradual reduction of the neural model uncertainty. Finally, an emerging robust fault detection framework on the basis of the neural network uncertainty description as ...
This article investigates the problem of small fault detection (sFD) for discrete-time nonlinear sys...
Generally three methodologies to develop and test fault detection (FD) algorithms can be distingguis...
Neural computing is one of the fastest growing branches of artificial intelligence. Neural Nets, end...
Increasing expectations of industrial system reliability require development of more effective and r...
A growing demand for technologically advanced systems has contributed to the increase of the awarene...
In order to identify any decrease in efficiency and any loss in industrial application a suitable mo...
Abstract: This paper focus on the problem of passive robust fault detection using non-linear models ...
The paper deals with the problems of robust fault detection using soft computing techniques, particu...
A fault diagnosis scheme for unknown nonlinear dynamic systems with modules of residual generation a...
This thesis focuses on the neural networks and their application in the fault monitoring. A neural n...
This report focuses on the neural networks and their application in the fault monitoring. A neural ...
A locally recurrent neural network based fault detection and isolation approach is presented. A mode...
A fault detection method for nonlinear systems, which is based on Probabilistic Neural Network Filte...
Challenging design problems arise regularly in modern fault diagnosis systems. Unfortunately, the cl...
Abstract: This paper presents a new parameter and confidence estimation techniques for dynamic Group...
This article investigates the problem of small fault detection (sFD) for discrete-time nonlinear sys...
Generally three methodologies to develop and test fault detection (FD) algorithms can be distingguis...
Neural computing is one of the fastest growing branches of artificial intelligence. Neural Nets, end...
Increasing expectations of industrial system reliability require development of more effective and r...
A growing demand for technologically advanced systems has contributed to the increase of the awarene...
In order to identify any decrease in efficiency and any loss in industrial application a suitable mo...
Abstract: This paper focus on the problem of passive robust fault detection using non-linear models ...
The paper deals with the problems of robust fault detection using soft computing techniques, particu...
A fault diagnosis scheme for unknown nonlinear dynamic systems with modules of residual generation a...
This thesis focuses on the neural networks and their application in the fault monitoring. A neural n...
This report focuses on the neural networks and their application in the fault monitoring. A neural ...
A locally recurrent neural network based fault detection and isolation approach is presented. A mode...
A fault detection method for nonlinear systems, which is based on Probabilistic Neural Network Filte...
Challenging design problems arise regularly in modern fault diagnosis systems. Unfortunately, the cl...
Abstract: This paper presents a new parameter and confidence estimation techniques for dynamic Group...
This article investigates the problem of small fault detection (sFD) for discrete-time nonlinear sys...
Generally three methodologies to develop and test fault detection (FD) algorithms can be distingguis...
Neural computing is one of the fastest growing branches of artificial intelligence. Neural Nets, end...