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  5. Flowable Conducting Particle Networks in Redox-Active Electrolytes for Grid Energy Storage

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Article
en
2015

Flowable Conducting Particle Networks in Redox-Active Electrolytes for Grid Energy Storage

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en
2015
Vol 162 (5)
Vol. 162
DOI: 10.1149/2.0011505jes

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Yury Gogotsi
Yury Gogotsi

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Kelsey B. Hatzell
Muhammad Boota
Emin C. Kumbur
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Abstract

This paper reports a new hybrid approach toward achieving high volumetric energy and power densities in an electrochemical flow capacitor for grid energy storage. The electrochemical flow capacitor suffers from high self-discharge and low energy density because charge storage is limited to the available surface area (electric double layer charge storage). Here, we examine two carbon materials as conducting particles in a flow battery electrolyte containing the VO2+/VO2+ redox couple. Highly porous activated carbon spheres (CSs) and multi-walled carbon nanotubes (MWCNTs) are investigated as conducting particle networks that facilitate both faradaic and electric double layer charge storage. Charge storage contributions (electric double layer and faradaic) are distinguished for flow-electrodes composed of MWCNTs and activated CSs. A MWCNT flow-electrode based in a redox-active electrolyte containing the VO2+/VO2+ redox couple demonstrates 18% less self-discharge, 10 X more energy density, and 20 X greater power densities (at 20 mV s-1) than one based on a non-redox active electrolyte. Additionally, a MWCNT redox-active flow electrode demonstrates 80% capacitance retention, and >95% coulombic efficiency over 100 cycles, indicating the feasibility of utilizing conducting networks with redox chemistries for grid energy storage.

How to cite this publication

Kelsey B. Hatzell, Muhammad Boota, Emin C. Kumbur, Yury Gogotsi (2015). Flowable Conducting Particle Networks in Redox-Active Electrolytes for Grid Energy Storage. , 162(5), DOI: https://doi.org/10.1149/2.0011505jes.

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Publication Details

Type

Article

Year

2015

Authors

4

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.1149/2.0011505jes

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