Literature DB >> 20131830

Structures and phase transitions in (MoO2)2P2O7.

Sarah E Lister1, Anne Soleilhavoup, Ray L Withers, Paul Hodgkinson, John S O Evans.   

Abstract

We report structural investigations into (MoO(2))(2)P(2)O(7) using a combination of X-ray, neutron and electron diffraction, and solid-state NMR supported by first principles quantum chemical calculations. These reveal a series of phase transitions on cooling at temperatures of 377 and 325 K. The high temperature gamma-phase has connectivity consistent with that proposed by Kierkegaard at room temperature (but with improved bond length distribution), and contains 13 unique atoms in space group Pnma with lattice parameters a = 12.6577(1) A, b = 6.3095(1) A, c = 10.4161(1) A, and volume 831.87(1) A(3) from synchrotron data at 423 K. The low temperature alpha-structure was indexed from electron diffraction data and contains 60 unique atoms in space group P2(1)/c with cell parameters a = 17.8161(3) A, b = 10.3672(1) A, c = 17.8089(3) A, beta = 90.2009(2) degrees, and volume 3289.34(7) A(3) at 250 K. First principles calculations of (31)P chemical shift and J couplings were used to establish correlation between local structure and observed NMR parameters, and 1D and 2D (31)P solid-state NMR used to validate the proposed crystal structures. The intermediate beta-phase is believed to adopt an incommensurately modulated structure; (31)P NMR suggests a smooth structural evolution in this region.

Entities:  

Year:  2010        PMID: 20131830     DOI: 10.1021/ic902166j

Source DB:  PubMed          Journal:  Inorg Chem        ISSN: 0020-1669            Impact factor:   5.165


  3 in total

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Journal:  Materials (Basel)       Date:  2022-05-06       Impact factor: 3.748

Review 2.  Hydrogen-Mediated Noncovalent Interactions in Solids: What Can NMR Crystallography Tell About?

Authors:  Ioana Georgeta Grosu; Xenia Filip; Maria O Miclăuș; Claudiu Filip
Journal:  Molecules       Date:  2020-08-18       Impact factor: 4.411

3.  Learning Design Rules for Selective Oxidation Catalysts from High-Throughput Experimentation and Artificial Intelligence.

Authors:  Lucas Foppa; Christopher Sutton; Luca M Ghiringhelli; Sandip De; Patricia Löser; Stephan A Schunk; Ansgar Schäfer; Matthias Scheffler
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  3 in total

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