Uncovering Polyoxometalate Speciation in Hydrothermal Systems by Combining Computational Simulation with X-ray Total Scattering

Author

Junkers, Laura S.

Garay-Ruiz, Diego

Buils, Jordi

Silberg, Rebecca S.

Strapasson, Guilherme B.

Jensen, Kirsten M. Ø.

Bo, Carles

Publication date

2025-06-17



Abstract

A systematic approach for understanding the pH-dependent speciation of molecular metal-oxide nanoclusters beyond ambient conditions, which combines computational predictions with X-ray total scattering experiments, is presented. We demonstrate that temperature-dependent water properties have a significant impact on molecular energies derived from implicit solvent modeling and propose an efficient correction strategy. Based on this, we expand our methodology toward the elevated temperatures and pressures characteristic of hydrothermal synthesis. Correlating these computational results with experimental observations reveals a remarkable synergy between the two approaches, which helps to differentiate closely related polyoxometalates coexisting in solution. We find that qualitative trends are directly reproduced computationally, while the intricate nature of polyoxometalate speciation is best captured by adjusting computational predictions based on experimental insights. The derived knowledge of the clusters present under various conditions enables us to rationalize the crystallization of h-MoO3 at high temperatures and very acidic pH. With this, our study highlights the potential of hybrid approaches for elucidating solution-based oxide formation under extreme conditions.

Document Type

Article

Document version

Published version

Language

English

CDU Subject

54 - Chemistry. Crystallography. Mineralogy

Subject

Química

Pages

12 p.

Publisher

ACS Publications

Grant Agreement Number

European Research Council (ERC) under the European Union’s Horizon 2020 Research and Innovation Programme (grant agreement no. 804066).

Spanish Ministry of Science, Innovation and Universities MCIN/AEI/10.13039/501100011033 (PID2023-153344NB-I00, and CEX2024-001469-S)

European Union NextGeneration EU/PRTR (TED2021-132850B–I00)

ICIQ Foundation

CERCA Program/Generalitat de Catalunya

KMØJ and RSS thank the Villum Foundation (42079)

G.B.S. gratefully acknowledges Fundação de Amparo à Pesquisa do Estado de São Paulo (FAPESP 2018/01258–5, 2020/12986–1, 2023/02561–1)

The Danish Research Council is acknowledged for covering travel expenses in relation to the synchrotron experiments (DanScatt)

MAX IV Laboratory for time on Beamline DanMAX under Proposal 20230183. Research conducted at MAX IV is supported by the Swedish Research council under contract 2018-07152, the Swedish Governmental Agency for Innovation Systems under contract 2018-04969, and Formas under contract 2019-02496.

DanMAX is funded by the NUFI grant no. 4059-00009B.

Documents

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Rights

Attribution 4.0 International

Attribution 4.0 International

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