1998
DOI: 10.1109/20.718528
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Stochastic algorithms in electromagnetic optimization

Abstract: This paper gives an overview of some stochastic optimization strategies, namely, evolution strategies, genetic algorithms, and simulated annealing, and how these methods can be applied to problems in electrical engineering. Since these methods usually require a careful tuning of the parameters which control the behavior of the strategies (strategy parameters), significant features of the algorithms implemented by the authors are presented. An analytical comparison among them is performed. Finally, results are … Show more

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Cited by 105 publications
(45 citation statements)
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“…Evolutionary algorithms are stochastic optimisation algorithms where the optimum seeking process is based on the principles of organic evolution. [20]. These algorithms are based on the competition among individuals in a population.…”
Section: Methodsmentioning
confidence: 99%
“…Evolutionary algorithms are stochastic optimisation algorithms where the optimum seeking process is based on the principles of organic evolution. [20]. These algorithms are based on the competition among individuals in a population.…”
Section: Methodsmentioning
confidence: 99%
“…[12,15,16] The simulated annealing (SA) refinement, based on the version by Alotto et al, [32] was used for optimizing selected torsion angles in peptide 1 to obtain the best fit between experimental and predicted STD-NMR intensities. The PDB coordinates used were from the peptide 1-SYA/J6 Fab complex.…”
Section: Corcema-st Calculationsmentioning
confidence: 99%
“…Fig. 6 relies on the application of features of biological evolution, like population, mating and environmental selection, recombination, reproduction and mutation (Alotto et al, 1998). The iteration process is started by randomly generating a sufficient number of initial configurations, taking the constraints into account.…”
Section: Magnetic and Mechanical Behaviour Of Magnetorheologic Fluidsmentioning
confidence: 99%
“…An optimal design of the clutch is very important because of the limited space and the limited amount of power in a car and due to the requirement of low weight while still transmitting a certain amount of torque. In this paper a higher order (=; ) evolution strategy (ES), namely a (4=2,20) ES (Rechenberg, 1994), (Alotto et al, 1998) is applied to design a clutch which transmits a required torque while keeping the weight as light as possible. The objective function formulating these technical requirements in a mathematical way is stated using fuzzy membership functions for normalizing the individual objectives before applying appropriate inference rules to them (Bellman, Zadeh, 1970), (Magele et al, 1997).…”
Section: Introductionmentioning
confidence: 99%