An optimization-based approach to fault diagnosis for nonlinear stochastic dynamic models is developed. An optimal diagnosis problem is formulated according to a receding-horizon strategy. This approach leads to a functional optimization problem (also called \u2018infinite optimization problem\u2019), whose admissible solutions belong to a function space. As in such a context, the tools from mathematical programing are either inapplicable or inefficient, a methodology of approximate solution is proposed that exploits diagnosis strategies made up of combinations of a certain number of simple basis functions, easy to implement and dependent on some parameters to be optimized. The optimization of the parameters is performed in two phases. In t...
This chapter provides an overview on different fault diagnosis strategies, with particular attention...
A new approach of fault detection and diagnosis (FDD) for general stochastic systems in discrete-tim...
Complex diagnosis problems, defined by high-level models, often lead to constraint-based discrete op...
Approximation schemes for functional optimization problems with admissible solutions dependent on a ...
The approximation of the optimal policy functions is investigated for dynamic optimization problems ...
We propose a StochAstic Fault diagnosis AlgoRIthm, called Safari, which trades off guarantees of com...
This paper proposes optimization-based active fault detection and diagnosis (FDD) methods. An optima...
Stochastic optimization problems with an objective function that is additive over a finite number of...
Connections between function approximation and classes of functional optimization problems, whose ad...
The paper considers the problem of active fault diagnosis for discrete-time stochastic systems over ...
4noNeural Approximations for Optimal Control and Decisionprovides a comprehensive methodology for t...
The article deals with a novel design of an active fault detector (AFD) for a nonlinear stochastic s...
Abstract: In this paper, the design of a fault detection filter for nonlinear systems is presented. ...
An approximation approach with computable error bounds is derived for a class of stochastic dynamic ...
Dynamic Programming formally solves stochastic optimization problems with an objective that is addit...
This chapter provides an overview on different fault diagnosis strategies, with particular attention...
A new approach of fault detection and diagnosis (FDD) for general stochastic systems in discrete-tim...
Complex diagnosis problems, defined by high-level models, often lead to constraint-based discrete op...
Approximation schemes for functional optimization problems with admissible solutions dependent on a ...
The approximation of the optimal policy functions is investigated for dynamic optimization problems ...
We propose a StochAstic Fault diagnosis AlgoRIthm, called Safari, which trades off guarantees of com...
This paper proposes optimization-based active fault detection and diagnosis (FDD) methods. An optima...
Stochastic optimization problems with an objective function that is additive over a finite number of...
Connections between function approximation and classes of functional optimization problems, whose ad...
The paper considers the problem of active fault diagnosis for discrete-time stochastic systems over ...
4noNeural Approximations for Optimal Control and Decisionprovides a comprehensive methodology for t...
The article deals with a novel design of an active fault detector (AFD) for a nonlinear stochastic s...
Abstract: In this paper, the design of a fault detection filter for nonlinear systems is presented. ...
An approximation approach with computable error bounds is derived for a class of stochastic dynamic ...
Dynamic Programming formally solves stochastic optimization problems with an objective that is addit...
This chapter provides an overview on different fault diagnosis strategies, with particular attention...
A new approach of fault detection and diagnosis (FDD) for general stochastic systems in discrete-tim...
Complex diagnosis problems, defined by high-level models, often lead to constraint-based discrete op...