A new approach of fault detection and diagnosis (FDD) for general stochastic systems in discrete-time is studied. Our work on this problem is motivated by the fact that most of the nonlinear control laws are implemented as digital controllers in reality. Different from the formulation of classical FDD problem, it is supposed that the measured information for the FDD is the probability density functions (PDFs) of the system output rather than its measured value. A radial basis function (RBF) neural network technique is proposed so that the output PDFs can be formulated in terms of the dynamic weighting of the RBFs neural network. Feasible criteria to detect and diagnose the system fault are provided by using linear matrix inequality (LMI) te...
n this paper a fault diagnosis technique, which employs neural networks to analyze signatures of ana...
A sensor fault diagnosis method based on learning observer is proposed for non-Gaussian stochastic d...
This thesis focuses on the neural networks and their application in the fault monitoring. A neural n...
Abstract — A new approach of fault detection and diagnosis (FDD) for general stochastic systems in d...
op es Abstract: The purpose of the fault detection and diagnosis of stochastic distribution control ...
With the rapid advances in sensor technology, image manipulation and data processing, the feedback m...
Stochastic distribution control (SDC) systems are a group of systems where the outputs considered ar...
A new simultaneous disturbance estimation and fault reconstruction design is studied for stochastic ...
This article investigates the problem of small fault detection (sFD) for discrete-time nonlinear sys...
A novel distributed fault detection strategy for a class of nonlinear stochastic systems is presente...
Abstract — A new design of a fault tolerant control (FTC)-based an adaptive, fixed-structure PI cont...
In this paper, the fault detection in uncertain multivariate nonlinear non-Gaussian stochastic syste...
In this work, a general formulation for fault detection in stochastic continuoustime dynamical syste...
In this paper, a fault-tolerant control scheme is presented for a class of stochastic distribution c...
A locally recurrent neural network based fault detection and isolation approach is presented. A mode...
n this paper a fault diagnosis technique, which employs neural networks to analyze signatures of ana...
A sensor fault diagnosis method based on learning observer is proposed for non-Gaussian stochastic d...
This thesis focuses on the neural networks and their application in the fault monitoring. A neural n...
Abstract — A new approach of fault detection and diagnosis (FDD) for general stochastic systems in d...
op es Abstract: The purpose of the fault detection and diagnosis of stochastic distribution control ...
With the rapid advances in sensor technology, image manipulation and data processing, the feedback m...
Stochastic distribution control (SDC) systems are a group of systems where the outputs considered ar...
A new simultaneous disturbance estimation and fault reconstruction design is studied for stochastic ...
This article investigates the problem of small fault detection (sFD) for discrete-time nonlinear sys...
A novel distributed fault detection strategy for a class of nonlinear stochastic systems is presente...
Abstract — A new design of a fault tolerant control (FTC)-based an adaptive, fixed-structure PI cont...
In this paper, the fault detection in uncertain multivariate nonlinear non-Gaussian stochastic syste...
In this work, a general formulation for fault detection in stochastic continuoustime dynamical syste...
In this paper, a fault-tolerant control scheme is presented for a class of stochastic distribution c...
A locally recurrent neural network based fault detection and isolation approach is presented. A mode...
n this paper a fault diagnosis technique, which employs neural networks to analyze signatures of ana...
A sensor fault diagnosis method based on learning observer is proposed for non-Gaussian stochastic d...
This thesis focuses on the neural networks and their application in the fault monitoring. A neural n...