This thesis deals with design of appropriate optimization algorithms for purposes of newly developed tool Mechlab’s parameter estimation, which serves for parameter estimation of simulation models in Matlab/Simulink. Levenberg-Marquardt algorithm had been chosen among other gradient methods. On the other hand, genetic algorithm and simulated annealing had been chosen from category of soft computing techniques to be implemented. Chosen algorithms were tested on artifical problem of mechanical oscilator and also on real datasets from electronic throttle. Proposed simulated annealing worked in both cases whith sufficient results, nevertheless was time-costly. For the oscilator problem, all the algorithms provided accurate solutions, but in the...
A crucial problem in nowadays industrial automation applications regards the (sub)optimal setting of...
ABSTRACT. Optimization methods combined with computer-based simulation have been utilized in a wide ...
A methodology for optimization of simulation models is presented. The methodology is based on a gene...
This thesis deals with parameters estimation search problematics. Newly-made software is proposed wi...
The thesis deals with the development of a new hybrid optimization algorithm for mechatronic models....
This paper proposes the use of genetic algorithms for process optimization and calibra-tion of model...
Computer simulation models are widely and frequently used to model real systems to predict output re...
This work goals are SIMULA classes to model experts sessions so that each expert has his own start i...
This work goals are SIMULA classes to model experts sessions so that each expert has his own start i...
Optimization methods combined with computer-based simulation have been utilized in a wide range of m...
Abstract The concept of a partial automated design optimization and the improvement of a micropump a...
The application of Genetic Optimization Algorithm in estimation of the parameters of servo electrica...
A crucial problem in nowadays industrial automation applications regards the (sub)optimal setting of...
A crucial problem in nowadays industrial automation applications regards the (sub)optimal setting of...
This paper develops high performance system identification and linearisation techniques, using a gen...
A crucial problem in nowadays industrial automation applications regards the (sub)optimal setting of...
ABSTRACT. Optimization methods combined with computer-based simulation have been utilized in a wide ...
A methodology for optimization of simulation models is presented. The methodology is based on a gene...
This thesis deals with parameters estimation search problematics. Newly-made software is proposed wi...
The thesis deals with the development of a new hybrid optimization algorithm for mechatronic models....
This paper proposes the use of genetic algorithms for process optimization and calibra-tion of model...
Computer simulation models are widely and frequently used to model real systems to predict output re...
This work goals are SIMULA classes to model experts sessions so that each expert has his own start i...
This work goals are SIMULA classes to model experts sessions so that each expert has his own start i...
Optimization methods combined with computer-based simulation have been utilized in a wide range of m...
Abstract The concept of a partial automated design optimization and the improvement of a micropump a...
The application of Genetic Optimization Algorithm in estimation of the parameters of servo electrica...
A crucial problem in nowadays industrial automation applications regards the (sub)optimal setting of...
A crucial problem in nowadays industrial automation applications regards the (sub)optimal setting of...
This paper develops high performance system identification and linearisation techniques, using a gen...
A crucial problem in nowadays industrial automation applications regards the (sub)optimal setting of...
ABSTRACT. Optimization methods combined with computer-based simulation have been utilized in a wide ...
A methodology for optimization of simulation models is presented. The methodology is based on a gene...