Battery State Estimation with ANN and SVR Evaluating Electrochemical Impedance Spectra Generalizing DC Currents

  • The demand for energy storage is increasing massively due to the electrification of transport and the expansion of renewable energies. Current battery technologies cannot satisfy this growing demand as they are difficult to recycle, as the necessary raw materials are mined under precarious conditions, and as the energy density is insufficient. Metal–air batteries offer a high energy density as there is only one active mass inside the cell and the cathodic reaction uses the ambient air. Various metals can be used, but zinc is very promising due to its disposability and non-toxic behavior, and as operation as a secondary cell is possible. Typical characteristics of zinc–air batteries are flat charge and discharge curves. On the one hand, this is an advantage for the subsequent power electronics, which can be optimized for smaller and constant voltage ranges. On the other hand, the state determination of the system becomes more complex, as the voltage level is not sufficient to determine the state of the battery. In this context, electrochemical impedance spectroscopy is a promising candidate as the resulting impedance spectra depend on the state of charge, working point, state of aging, and temperature. Previous approaches require a fixed operating state of the cell while impedance measurements are being performed. In this publication, electrochemical impedance spectroscopy is therefore combined with various machine learning techniques to also determine successfully the state of charge during charging of the cell at non-fixed charging currents. Keywords: electrochemical impedance spectroscopy; artificial neural networks; support vector regression; zinc-air battery; state estimation; state of charge
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https://doi.org/10.3390/app12010274

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Verfasserangaben:Andre LöchteORCiD, Ignacio Rojas Ruiz, Peter GlösekötterORCiD
DOI:https://doi.org/10.3390/app12010274
ISBN:978-84-1117-173-1
Titel des übergeordneten Werkes (Englisch):Applied Sciences
Dokumentart:Beitrag in einer (wissenschaftlichen) Zeitschrift
Sprache:Englisch
Datum der Veröffentlichung (online):25.01.2023
Jahr der Erstveröffentlichung:2021
Betreiber des Publikationsservers:FH Münster - University of Applied Sciences
Datum der Freischaltung:26.01.2023
Freies Schlagwort / Tag:Battery State Estimation
Band / Jahrgang:12
Ausgabe / Heft:1
Erste Seite:275
Fachbereiche:Elektrotechnik und Informatik (ETI)
Publikationsliste:Glösekötter, Peter
Lizenz (Deutsch):License LogoBibliographische Daten