A Solvent Viscosity-dependent Thermoelectric Conversion Efficiency
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Scaling Relation between Electrochemical Seebeck Coefficient for Fe2+/Fe3+ in Organic Solvent and Its Viscosity
(JPSJ Editors' Choice)
J. Phys. Soc. Jpn. 90, 033602 (2021).
We found a beautiful empirical rule (α ∝ η-0.4) between the electrochemical Seebeck coefficient α for Fe2+/Fe3+ redox pair and viscosity coefficient η of the organic solvent.
Scaling Relation between Electrochemical Seebeck Coefficient for Fe2+/Fe3+ in Organic Solvent and Its Viscosity
(JPSJ Editors' Choice)
J. Phys. Soc. Jpn. 90, 033602 (2021).
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