Predicting Solubility in Nonaqueous Redox Flow Batteries via Quantum Mechanical Calculations and Machine Learning Approaches.

POSTER

Abstract

With increasing concerns over the climate crisis, there is a growing emphasis on sustainable and renewable energy sources. Solar and wind energy have proven competitive with fossil fuels; however, their intermittency remains a significant challenge. Nonaqueous redox flow batteries (NRFBs) offer a promising alternative due to their decoupled power and energy ratings, which provide enhanced flexibility, thermal stability, and safety. A key limitation of NRFBs is their low solubilities, which negatively impact energy density, stability, and cyclability. In this study, we investigate a highly stable bio-inspired octa-coordinated dianionic vanadium complex, vanadiumIV bis-hydoxyiminodiacetate (VBH2-), which has shown promising solubility when paired with alkylammonium cations. Using quantum chemical methods, we predicted the solubilities of 91 additional alkylammonium cations in 19 different solvents for both [VBH]²⁻ and [VBH]⁻ active materials. Machine learning algorithms were then applied to identify the key molecular features driving solubility. Our results indicate that solubility does not increase linearly with alkyl chain length. For instance, [N44t3t3]₂[VBH] in methanol exhibited a solubility 4.3 times higher than [N4444]₂[VBH] in acetonitrile. Additionally, cation molecular weight emerged as the most important predictor of solubility. This approach provides a framework for accelerating the development of high-solubility active materials efficiently and cost-effectively.

*This research work is supported by National Science Foundation' Division of Materials Research (DMR) and Ocean Sciences (OCE) under the grant number 2149893. This research used the University of Massachusetts Green High Performance Computing Cluster (MGHPCC) and the Unity computing cluster. The author also acknowledges Ahmed Y. Abdulai, and the rest of the Mayes group for their research guidance and support.

Publication: 1. Visayas, Benjoe Rey, et al. "Computational and experimental investigation of the effect of cation structure on the
solubility of anionic flow battery active-materials." Chemical Science, vol. 12, no. 48, 24 Nov. 2021, pp. 15892–15907.
2. Pahari, Shyam K., et al. "Designing high energy density flow batteries by tuning active-material thermodynamics."
RSC Advances, vol. 11, no. 10, 12 Jan. 2021, pp. 5432–5443.

Presenters

  • Ayssar I Farah

    • University of Connecticut

Authors

  • Ayssar I Farah

    • University of Connecticut
  • Maricris Lodriguito Mayes

    • University of Massachusetts Dartmouth