This paper develops a genetic algorithm based technique that may be used to identify multivariable system identification directly from plant step response data. Using this technique, globally optimized models for linear and non-linear systems can be identified without the need for a differentiable cost function or linearly separable parameters. Results are validated against a benchmark identification problem and a laboratory test-rig for continuous and discrete-time systems
This paper presents an investigation into the development of system identification using the artific...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
The development of a multivariable system identification model for dynamic discrete-time nonlinear s...
The development of a multivariable system identification model for dynamic discrete-time nonlinear s...
Abstract — This paper presents a systems identification method, for discrete time linear systems, ba...
This paper develops high performance system identification and linearisation techniques, using a gen...
In order to use existing identification tools effectively, a user must make critical choices a prior...
In order to use existing identification tools effectively, a user must make critical choices a prior...
Current online identification techniques are recursive and involve local search techniques. In this...
Current online identification techniques are recursive and involve local search techniques. In this...
In order to use existing identification tools effectively, a user must make critical choices a prior...
In order to use existing identification tools effectively, a user must make critical choices a prior...
A large number of methods are known for system identification, which are used both in the time domai...
The main objective of this paper is to investigate efficiency and correctness of different real-code...
In this paper, the application of adaptive system identification based on genetic algorithm is reali...
This paper presents an investigation into the development of system identification using the artific...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
The development of a multivariable system identification model for dynamic discrete-time nonlinear s...
The development of a multivariable system identification model for dynamic discrete-time nonlinear s...
Abstract — This paper presents a systems identification method, for discrete time linear systems, ba...
This paper develops high performance system identification and linearisation techniques, using a gen...
In order to use existing identification tools effectively, a user must make critical choices a prior...
In order to use existing identification tools effectively, a user must make critical choices a prior...
Current online identification techniques are recursive and involve local search techniques. In this...
Current online identification techniques are recursive and involve local search techniques. In this...
In order to use existing identification tools effectively, a user must make critical choices a prior...
In order to use existing identification tools effectively, a user must make critical choices a prior...
A large number of methods are known for system identification, which are used both in the time domai...
The main objective of this paper is to investigate efficiency and correctness of different real-code...
In this paper, the application of adaptive system identification based on genetic algorithm is reali...
This paper presents an investigation into the development of system identification using the artific...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
The development of a multivariable system identification model for dynamic discrete-time nonlinear s...