Correlation between the Experimental and Theoretical Photoelectrochemical Response of a WO 3 Electrode for Efficient Water Splitting through the Implementation of an Artificial Neural Network
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- Angela Gondolini & Nicola Sangiorgi & Alex Sangiorgi & Alessandra Sanson, 2021. "Photoelectrochemical Hydrogen Production by Screen-Printed Copper Oxide Electrodes," Energies, MDPI, vol. 14(10), pages 1-15, May.
- Rahimi, Mohammad & Abbaspour-Fard, Mohammad Hossein & Rohani, Abbas, 2021. "A multi-data-driven procedure towards a comprehensive understanding of the activated carbon electrodes performance (using for supercapacitor) employing ANN technique," Renewable Energy, Elsevier, vol. 180(C), pages 980-992.
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- Sahu, Nepal & Azad, Chandrashekhar & Kumar, Uday, 2025. "Interpretable and highly accurate tertiary tree-based ensemble hybrid models for the prediction of photocurrent density and electrode potential in PEC cell: Theoretically supported and externally validated by experimental data," Applied Energy, Elsevier, vol. 401(PB).
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