Morphology of lithium halides in tetrahydrofuran from molecular dynamics with machine learning potentials

被引:0
|
作者
de Giovanetti, Marinella [1 ,2 ]
Hopen Eliasson, Sondre Hilmar [1 ,2 ]
Bore, Sigbjorn Loland [1 ,2 ]
Eisenstein, Odile [1 ,2 ,3 ]
Cascella, Michele [1 ,2 ]
机构
[1] Univ Oslo, Dept Chem, N-0315 Oslo, Norway
[2] Univ Oslo, Hylleraas Ctr Quantum Mol Sci, N-0315 Oslo, Norway
[3] Univ Montpellier, ICGM, CNRS, ENSCM, F-34293 Montpellier, France
关键词
LEWIS-BASE ADDUCTS; GROUP-1; METAL-COMPOUNDS; COMPLEXES DHALOGENURES ALCALINS; ETUDE PAR DIFFRACTION; CRYSTAL-STRUCTURE; ALDOL REACTION; AB-INITIO; STRUCTURAL-CHARACTERIZATION; TRIMETHYLSILYL ENOLATE; WATER-MOLECULES;
D O I
10.1039/d4sc04957h
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
The preferred structures of lithium halides (LiX, with X = Cl, Br, I) in organic solvents have been the subject of a wide scientific debate, and a large variety of forms has been isolated and characterized by X-ray diffraction. The identified molecular scaffolds for LiX are diverse, often built on (LiX)n rings with a prevalence of rhomboidal arrangements and an appropriate number of solvent or Lewis base molecules coordinating the lithium ions. Much less is known about the structures of LiX in solution, limiting the understanding of the synergistic role of LiX in reactions with various organometallic complexes, as prominently represented by the turbo Grignard reaction. Here, we trained a machine learning potential on ab initio data to explore the complex conformational landscape for systems comprising four LiX moieties in tetrahydrofuran (THF). For all the considered halogens a large number of scaffolds were found at thermally accessible free energy values, indicating that LiX in solution are a diverse ensemble constituted of (LiX)n moieties of various sizes, completed by the appropriate number of coordinating THF. LiCl shows a preference for compact, pseudo-cubane Li4Cl4(THF)4 structures, coexisting with open rings. At concentrations close to the solubility limit, LiCl forms hexagonal structures, in analogy with literature observations on pre-nucleating NaCl. LiBr tends to favour less compact, more solvated aggregates. LiI significantly differs from the two other cases, producing highly solvated, monomeric, dimeric, or linear structures. This study provides a comprehensive view of LiX in organic solvent, revealing dynamical polymorphism that is not easily observable experimentally.
引用
收藏
页码:20355 / 20364
页数:10
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