This paper proposes optimization-based active fault detection and diagnosis (FDD) methods. An optimal input sequence is computed for maximizing discrimination between system models of fault scenarios in a statistical sense. Two different measures quantifying the degree of distinguishability between two stochastic LTI system models are considered, and their geometric properties are investigated. Their connection to the generalized likelihood ratio tests are also presented. Constrained open- and closed-loop feedback input design methods using model-based prediction are presented. Constraints on the predicted controlled output trajectory are imposed for ensuring operational safety as well as the input constraints that correspond to hardware li...
Using an information point of view, we discuss deterministic versus stochastic tools for residual ge...
Abstract. The traditional model-based fault detection and isolation (FDI) rely on tacit assumption t...
Fault diagnosis (FD) using data-driven methods is essential for monitoring complex process systems, ...
Fault detection and isolation (FDI) is crucial to identifying problems that can occur in complex sys...
This article considers the design of an input signal for improving the diagnosability of faults from...
This paper presents a methodology for model based robust fault diagnosis and a methodology for input...
Abstract: The parity space approach to fault detection and isolation (FDI) has been developed during...
Our society depends on advanced and complex technical systems and machines, for example, cars for tr...
Model-based diagnosis compares observations from a system with predictions using a mathematical mode...
Guaranteeing a high system performance over a wide operating range is an important issue surrounding...
Abstract — This paper addresses the design of input sig-nals for the purpose of discriminating among...
Multiple-Model fault detection is a powerful method for detecting changes, such as faults, in dynami...
This chapter provides an overview on the various fault detection methods, with particular attention ...
The article deals with a novel design of an active fault detector (AFD) for a nonlinear stochastic s...
An optimization-based approach to fault diagnosis for nonlinear stochastic dynamic models is develop...
Using an information point of view, we discuss deterministic versus stochastic tools for residual ge...
Abstract. The traditional model-based fault detection and isolation (FDI) rely on tacit assumption t...
Fault diagnosis (FD) using data-driven methods is essential for monitoring complex process systems, ...
Fault detection and isolation (FDI) is crucial to identifying problems that can occur in complex sys...
This article considers the design of an input signal for improving the diagnosability of faults from...
This paper presents a methodology for model based robust fault diagnosis and a methodology for input...
Abstract: The parity space approach to fault detection and isolation (FDI) has been developed during...
Our society depends on advanced and complex technical systems and machines, for example, cars for tr...
Model-based diagnosis compares observations from a system with predictions using a mathematical mode...
Guaranteeing a high system performance over a wide operating range is an important issue surrounding...
Abstract — This paper addresses the design of input sig-nals for the purpose of discriminating among...
Multiple-Model fault detection is a powerful method for detecting changes, such as faults, in dynami...
This chapter provides an overview on the various fault detection methods, with particular attention ...
The article deals with a novel design of an active fault detector (AFD) for a nonlinear stochastic s...
An optimization-based approach to fault diagnosis for nonlinear stochastic dynamic models is develop...
Using an information point of view, we discuss deterministic versus stochastic tools for residual ge...
Abstract. The traditional model-based fault detection and isolation (FDI) rely on tacit assumption t...
Fault diagnosis (FD) using data-driven methods is essential for monitoring complex process systems, ...