The performance of nonlinear fault detection schemes is hard to decide objectively, so Monte Carlo simulations are often used to get a subjective measure and relative performance for comparing different algorithms. There is a strong need for a constructive way of computing an analytical performance bound, similar to the Cramér-Rao lower bound for estimation. This paper provides such a result for linear non-Gaussian systems. It is first shown how a batch of data from a linear state-space model with additive faults and non-Gaussian noise can be transformed to a residual described by a general linear non-Gaussian model. This also involves a parametric description of incipient faults. The generalized likelihood ratio test is then used as the as...
Abstract—This paper considers the problem of certifying the performance of a class of model-based fa...
A novel model-based algorithm for fault detection in stochastic linear and non-linear systems is pro...
The paper deals with the detection of a signal embedded in cyclostationary white non-Gaussian noise ...
Sophisticated fault detection (FD) algorithms often include nonlinear mappings of observed data to f...
Abstract—Sophisticated fault detection (FD) algorithms often include nonlinear mappings of observed ...
Many methods used for estimation and detection consider only the mean and variance of the involved n...
We address the problem of detecting a weak signal known except for amplitude in incompletely charact...
The problem of detecting a signal, known except for amplitude, in incompletely characterized non-Gau...
Abstract: Fault detection based on comparing a batch of data with a model of the system using the ge...
Using the parity-space approach, a residual is formed by applying a projection to a batch of observe...
The problem of detecting a signal known except for amplitude in non-Gaussian noise is addressed. The...
Abstract: The parity space approach to fault detection and isolation (FDI) has been developed during...
Fault detection based on comparing a batch of data with a model of the system using the generalized ...
The Kalman filter is known to be the optimal linear filter for linear non-Gaussian systems. However,...
Abstract. The traditional model-based fault detection and isolation (FDI) rely on tacit assumption t...
Abstract—This paper considers the problem of certifying the performance of a class of model-based fa...
A novel model-based algorithm for fault detection in stochastic linear and non-linear systems is pro...
The paper deals with the detection of a signal embedded in cyclostationary white non-Gaussian noise ...
Sophisticated fault detection (FD) algorithms often include nonlinear mappings of observed data to f...
Abstract—Sophisticated fault detection (FD) algorithms often include nonlinear mappings of observed ...
Many methods used for estimation and detection consider only the mean and variance of the involved n...
We address the problem of detecting a weak signal known except for amplitude in incompletely charact...
The problem of detecting a signal, known except for amplitude, in incompletely characterized non-Gau...
Abstract: Fault detection based on comparing a batch of data with a model of the system using the ge...
Using the parity-space approach, a residual is formed by applying a projection to a batch of observe...
The problem of detecting a signal known except for amplitude in non-Gaussian noise is addressed. The...
Abstract: The parity space approach to fault detection and isolation (FDI) has been developed during...
Fault detection based on comparing a batch of data with a model of the system using the generalized ...
The Kalman filter is known to be the optimal linear filter for linear non-Gaussian systems. However,...
Abstract. The traditional model-based fault detection and isolation (FDI) rely on tacit assumption t...
Abstract—This paper considers the problem of certifying the performance of a class of model-based fa...
A novel model-based algorithm for fault detection in stochastic linear and non-linear systems is pro...
The paper deals with the detection of a signal embedded in cyclostationary white non-Gaussian noise ...