2022
DOI: 10.1155/2022/9952315
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Optimal Electric Arc Furnace Model’s Characteristics Using Genetic Algorithm and Particle Swarm Optimization and Comparison of Various Optimal Characteristics in DIgSILENT and EMTP-RV

Abstract: The stochastic and nonlinear characteristics of electric arc furnaces (EAFs) lead to power quality challenges in the power system. In studying EAF behaviors, having optimized characteristics/models, selecting a suitable and optimum model that adapts to the actual characteristics of EAFs, and investigating simulation software’s capability for implementing EAF models are essential. However, the literature shows a research gap in investigating EAF simulations in various software products based on different models… Show more

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Cited by 5 publications
(1 citation statement)
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“…Dergisi,38(3), Eylül 2023 algorithms have been combined and used to increase the efficiency of the EAF and reduce energy consumption by minimizing controllable losses. In [33], the parameters and characteristics of several time-domain methods, such as piecewise linear, modified piecewise linear, hyperbolic, and exponential, have been optimized using genetic algorithm and particle swarm optimization for EAF modeling and simulation.…”
Section: Figure 1 Power System Of the Eafmentioning
confidence: 99%
“…Dergisi,38(3), Eylül 2023 algorithms have been combined and used to increase the efficiency of the EAF and reduce energy consumption by minimizing controllable losses. In [33], the parameters and characteristics of several time-domain methods, such as piecewise linear, modified piecewise linear, hyperbolic, and exponential, have been optimized using genetic algorithm and particle swarm optimization for EAF modeling and simulation.…”
Section: Figure 1 Power System Of the Eafmentioning
confidence: 99%