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  4. Impedance-Based Estimation of Process Parameters in Electrolytic Systems via Circuit-Embedded Neural Networks (CENN) - DATA
 
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Impedance-Based Estimation of Process Parameters in Electrolytic Systems via Circuit-Embedded Neural Networks (CENN) - DATA

Citation Link: https://doi.org/10.15480/882.16744
Type
Dataset
Date Issued
2026-03-04
Author(s)
Ostovar, Hossein  
Chemische Reaktionstechnik V-2  
Bossert, Marine  
Werkstoffphysik und -technologie M-22  
Researcher
Ostovar, Hossein  
Chemische Reaktionstechnik V-2  
Sharafian, Zahra
Studiendekanat Verfahrenstechnik (V)  
Bossert, Marine  
Werkstoffphysik und -technologie M-22  
Data Curator
Ostovar, Hossein  
Chemische Reaktionstechnik V-2  
Data Collector
Ostovar, Hossein  
Chemische Reaktionstechnik V-2  
Sharafian, Zahra
Studiendekanat Verfahrenstechnik (V)  
Bossert, Marine  
Werkstoffphysik und -technologie M-22  
Contact
Ostovar, Hossein  
Chemische Reaktionstechnik V-2  
Horn, Raimund  
Chemische Reaktionstechnik V-2  
Language
English
DOI
https://doi.org/10.15480/882.16744
TORE-URI
https://hdl.handle.net/11420/61659
Abstract
The Data folder contains all data supporting the impedance-based estimation of electrolyte concentration and temperature in aqueous H₂SO₄ using nanoporous gold electrodes. It includes 260 electrochemical impedance spectroscopy (EIS) spectra measured across 20 concentrations (1–20 mM) and 13 temperatures (26–50 °C). Raw measurements are organized by concentration and temperature, together with equivalent-circuit fits (ZARC + transmission-line model) that yield parameters such as solution resistance, interfacial polarization, and porous transport. The folder also holds outputs from the Circuit-Embedded Neural Network (CENN) forward and inverse models, including impedance predictions, concentration and temperature estimates from full and reduced-frequency sets, and Jacobian-based sensitivity analysis that identifies informative frequency bands. Results for different frequency-selection strategies (single-band, multi-band, and full-spectrum) are provided, along with classical machine learning benchmarks (Ridge, SVR, GPR, MLP, etc.) for comparison. The data support the main findings of the paper: CENN achieves a forward RMSE of about 0.06 Ω, inverse estimation with mean absolute errors of roughly 0.10 mM for concentration and 1.0 °C for temperature on full spectra, and comparable accuracy (about 0.12 mM and 1.1 °C) using only three optimized frequency anchors, reducing acquisition time from minutes to about six seconds.
Subjects
electrochemical impedance spectroscopy
machine learning
nanoporous gold
temperature estimation
concentration estimation
statistical methods
DDC Class
541.37: Electrochemistry
Funding(s)
SFB 1615 - Teilprojekt A02: Quantitative elektrische 3D-Impedanztomographie in Echtzeit für Mehrphasenreaktoren  
Funding Organisations
Deutsche Forschungsgemeinschaft (DFG)  
More Funding Information
This project is funded by the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) – SFB 1615 – 503850735.
License
https://creativecommons.org/publicdomain/mark/1.0/
No Thumbnail Available
Name

Raw_Experimental_Data.zip

Size

41.99 MB

Format

ZIP

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Data_From_Modeling.zip

Size

136.07 MB

Format

ZIP

No Thumbnail Available
Name

README.md

Size

12.84 KB

Format

Markdown

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