Raül Andero Galí

Coauthors: Andreu Cabot

Institut Català de Nanociència i Nanotecnologia

In the fight against climate change, transitioning to clean energy is crucial to reduce greenhouse gas emissions. Reliable battery systems are essential for efficiently storing and managing renewable energy, ensuring a stable power supply even when sources like solar and wind are intermittent. Lithium-sulfur batteries (LSBs) are particularly promising due to their high energy density, lower cost, and use of abundant materials like sulfur. They can store more energy than traditional lithium-ion batteries, making them ideal for large-scale energy storage.

However, LSB commercialization faces challenges such as polysulfide migration, sluggish sulfur redox reaction (SRR) kinetics, and poor electronic and ionic conductivities. To address these issues, Prof. Andreu Cabot (IREC) and Prof. Jordi Arbiol (ICN2) have optimized catalytic materials in battery cathodes by manipulating electronic spin. They enhanced the Li-S reaction by promoting spin splitting in NiS2/NiSe2 heterostructures, transforming Ni from low to high spin.[1] This high spin configuration raises the electronic energy level, accelerates charge transfer, and lowers the reaction energy barrier, resulting in improved battery cathodes with high capacity, excellent rate capability, and stable cycling.

Additionally, they explored the role of electronic spin configuration in polysulfide adsorption and catalytic activity. By introducing Co vacancies on the surface of CoSe nanosheets, they generated spin polarization, increasing unpaired
electrons with aligned spins. This enhances polysulfide adsorption and reduces the activation energy of Li-S redox reactions, leading to cathodes with high capacities and low capacity loss after long cycling.[2]

Finally, they highlighted the importance of in-situ/operando techniques for realtime tracking of processes in sulfur based batteries and integrating simulations with experimental data. This holistic approach provides critical insights for advancing LSB development and commercial adoption, supported by molecular dynamics simulations and AI-driven data analysis.[3]