Estimation and Analysis of the Electric Arc Furnace Model Coefficients

This paper is devoted to electric arc furnace (EAF) modeling using a random differential equation based on the power balance equation. The proposed approach broadens and improves the model through the introduction of stochastic processes in place of existing coefficients. The paper presents a method...

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Veröffentlicht in:IEEE transactions on power delivery 2022-12, Vol.37 (6), p.4956-4967
Hauptverfasser: Dietz, Markus, Grabowski, Dariusz, Klimas, Maciej, Starkloff, Hans-Jorg
Format: Artikel
Sprache:eng
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Zusammenfassung:This paper is devoted to electric arc furnace (EAF) modeling using a random differential equation based on the power balance equation. The proposed approach broadens and improves the model through the introduction of stochastic processes in place of existing coefficients. The paper presents a method which enables the estimation of EAF model coefficients with the help of measurement data - voltage and current waveforms recorded during the melting stage of an EAF work cycle. The estimation process is conducted with a Monte Carlo method and genetic algorithm, which is applied iteratively to each of the defined frames of the input signal. The estimated coefficients have been analyzed with respect to their time variability as well as the probability distributions of their values and increments. The results have been extensively visualized. Next, the identification of the stochastic processes representing the model coefficients has been carried out. Based on the previous results and autocorrelation functions, the density functions and parameters of discrete-time stochastic processes were identified. The paper presents solutions validated with statistical tests.
ISSN:0885-8977
1937-4208
DOI:10.1109/TPWRD.2022.3163815