Abstract
Despite tremendous efforts in catalyzing the sulfur reduction reaction (SRR) in high-capacity lithium-sulfur (Li-S) batteries, understanding the universal and quantitative structure-property relationships (UQSPRs) of SRR remains elusive. Such an unclarity results from the limitations of first-principle calculations in analyzing vast, high-dimensional, and heterogeneous data. Here, we present a collaborative data-driven model for heterogeneous catalytic knowledge fusion, detecting over 2,900 articles on SRR published between 2004 and 2024. By using sure independence screening and sparsifying operator, we surprisingly identified a composite descriptor, D, dominated by the dispersion factor. In contrast to the classical electronic state analysis framework, the dispersion factor directly established UQSPRs between atom topological arrangement and catalyst-polysulfide interaction intensity, accurately predicting the catalytic activity of over 800 types of catalysts. Combined with a volcano plot linking the overpotential to the interaction intensity, we determined the D value range of high catalytic activity, facilitating the discovery of tens of novel SRR catalysts from 374,833 candidates, many of which escaped previous human chemical intuition. As a representative, CrB2 demonstrated superior catalytic activity under high sulfur loadings of 12.0 mg cm-2 and low temperatures of −25 °C. Pouch cells with CrB2 achieved a gravimetric specific energy of 436 Wh kg-1 under a high sulfur content of 76.1% and lean-electrolyte conditions of 2.8 μL mg-1. Our data-driven method enables new opportunities to fundamentally identify UQSPRs using vast and heterogeneous data, suggesting the promise of revisiting under-exploited knowledge from the historical literature for novel catalyst discovery.
| Original language | English |
|---|---|
| Pages (from-to) | 22851-22863 |
| Number of pages | 13 |
| Journal | Journal of the American Chemical Society |
| Volume | 147 |
| Issue number | 26 |
| DOIs | |
| State | Published - 2 Jul 2025 |
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