CIF applications
Unlocking the surface chemistry of ionic minerals: a high-throughput pipeline for modeling realistic interfaces
aDepartament de Química, Universitat Autònoma de Barcelona, Campus de la UAB, Bellaterra, Barcelona 08193, Spain
*Correspondence e-mail: eric.mates@uab.cat, albert.rimola@uab.cat
A systematic procedure is introduced for modeling charge-neutral non-polar surfaces of ionic minerals containing polyatomic anions. By integrating distance- and charge-based clustering to identify chemical species within the mineral bulk, our pipeline, PolyCleaver, renders a variety of theoretically viable surface terminations. As a demonstrative example, this approach was applied to forsterite (Mg2SiO4), unveiling a rich interface landscape based on interactions with formaldehyde, a relevant multifaceted molecule, and more particularly in prebiotic chemistry. This high-throughput method, going beyond techniques traditionally applied in the modeling of minerals, offers new insights into the potential catalytic properties of diverse surfaces, enabling a broader exploration of synthetic pathways in complex mineral systems.
Keywords: PolyCleaver; Python; mineral surfaces; interfaces.
1. Introduction
Minerals have recently attracted significant attention in the materials chemistry and catalysis fields due to their versatility and chemical diversity, which give them a broad range of potential applications. For instance, silicate-based zeolites and clays have shown great promise as heterogeneous catalysts for relevant organic reactions (Liang et al., 2017; Tu et al., 2019). Furthermore, minerals are ubiquitous in nature: although silicates are undoubtedly predominant, the Earth's mantle bears a wide variety of compounds with mineral origin, including oxides, carbonates, phosphates and sulfates, among others (Rubin, 1997). These compounds, which vary widely in their composition, structural complexity and physicochemical properties, may have even governed the formation of biomolecules that could have led to the emergence of life on early Earth (Miyazaki & Korenaga, 2022; Li, 2022). Some efforts have been dedicated to unraveling the interactions between the surfaces of minerals and relevant molecules to rationalize the existence of astrochemical prebiotic synthetic routes (Signorile et al., 2020; Campisi et al., 2021) and to reveal the nature of state-of-the-art catalysts for the synthesis of key chemical feedstocks (Chung et al., 2023). Most studies on refractory minerals as heterogeneous catalysts, however, converge on the key importance of their distribution in the adsorption of molecular species and reaction intermediates, driven by the presence of cationic and anionic molecular species (e.g. Mg2+/Fe2+ and [SiO4]4−, respectively, in most common silicates). Thus, any effort to study these systems computationally is futile without an accurate atomistic representation of the interface between the surface and the adsorbates of interest.
Atomistic modeling of slab surfaces of ionic solids is not straightforward, as the out-of-plane distribution of the ions along the slab model has implications for its energetic features. Ionic surfaces can be one of the three Tasker types: type I, if each plane in the slab displays a net zero dipole perpendicular to the surface; type II, if they display a stacking sequence of charged planes with a net zero dipole in that direction; and type III, where an asymmetric stacking sequence of charged planes leads to the existence of a dipole, thus inducing an electric field (Tasker, 1979; Watson et al., 1997). In the latter, the induced field yields a diverging surface energy, tending to infinity in extended periodic structures, potentially influencing the energetics of any chemical process simulated on these systems. In the case of complex minerals like those mentioned above, cleaving them along planes defined by any set of yields type II or, more usually, type III slabs, whose dipoles can partly be neutralized through atomic reconstruction of the slab terminations. In all cases, the generated slabs need to match the stoichiometric ratio of the bulk mineral to ensure a correct charge distribution in the In addition, given the presence of ionic species usually forming covalently bound clusters in minerals (i.e. those in the classes V to IX in the Nickel–Strunz classification, including carbonates, nitrates, borates, sulfates, phosphates and silicates), generating non-polar and charge-neutral surface slab models of these minerals also requires the preservation of all strong covalent bonds along the cleaving plane. These requirements have substantially hampered the number of theoretical studies on these systems, and only a handful of cases shine light on the structural nature of common silicate minerals (Watson et al., 1997; Bruno et al., 2014; Geng & Jónsson, 2019; de Leeuw et al., 2000) and their interaction with chemically relevant molecules (Campisi et al., 2021; Rimola et al., 2020; Navarro-Ruiz et al., 2014; Zamirri et al., 2017; King et al., 2010; Goumans et al., 2007) as a first step for the study of primordial prebiotic catalysis on astronomical bodies and/or in early Earth environments. Moreover, the structural complexity of even the simplest nesosilicates (such as olivine) hampers the generation of surface slabs based on observation alone, which has mostly limited studies on this mineral to surface modeling and theoretical analysis of only its seven most stable surface terminations. Thus, if the target is to discover novel synthetic routes using Earth-abundant minerals and/or to propose new pathways accounting for the presence of life-bearing biomolecules, a strategy to model complex ionic minerals must be devised, including the multiple terminations co-existing in the polycrystalline states observed in Earth's mantle and on astronomical bodies (Molster & Kemper, 2005; Rimola & Bromley, 2021; Zamirri et al., 2019). To this aim, in this article, we propose a general pipeline (implemented in a black-box fashion in the PolyCleaver tool) for the generation of non-polar and charge-neutral surfaces of ionic minerals with polyatomic anions, and discuss the potential of this newly generated structural diversity for the automatic screening of molecular adsorption on polycrystalline refractory minerals.
2. Procedural generation of non-polar and charge-neutral mineral surfaces
Cleaving ionic minerals with polyatomic anions in a high-throughput fashion requires providing our baseline chemical structure handling library, pymatgen (Ong et al., 2013), with (i) inference mechanisms to discern the chemical species within the mineral, and (ii) a structural modification strategy to ensure non-polarity and charge neutrality, and to preserve covalently bound molecular scaffolds. In the former, a distance- and charge-based clustering method was used, where the anionic covalent units were defined as the groups of negatively charged atoms surrounding their equally closest positively charged species; all other positive species were deemed cations. This identification is followed by a procedural workflow schematized in Fig. 1. Given a file, our approach works as follows: (i) cleavage of the decorated bulk along the desired plane defined by its (ii) removal of any incorrectly cut covalent bonds (revealed by incomplete anionic clusters at the surface or loose negatively charged atoms); (iii) removal of anionic clusters from both sides of the slab to achieve a non-polar anionic and (iv) generation of an overall non-polar surface structure conditional to a final stoichiometric composition of the overall slab relative to the bulk (see Section 5). Should non-polarity and neutrality not be achievable in any of the ionic additional filters are put in place that discard the proposed slab model. This process is carried out for a range of non-equivalent terminations to increase the chances of finding a suitable structure. Our pipeline, integrated into the freely available Python package named PolyCleaver (see Section 6 for the link to the code), only requires three user inputs, i.e. the bulk structure file in format [available in data sets such as the Materials Project (Jain et al., 2013)], the of the desired slabs and their initial thicknesses.
3. Assessment of termination-dependent mineral applications
Our pipeline provides a chemically accurate baseline for the analysis of minerals whose predicted activity is mainly termination dependent, i.e. where a multifaceted analysis is key to understanding the nature of the mineral–molecule interactions. To exemplify this, we used PolyCleaver to model the most stable non-polar and charge-neutral surface terminations, i.e. with (001), (010), (110), (101), (111), (012) and (102) (Bruno et al., 2014; de Leeuw et al., 2000), of the Mg endmember of olivine (forsterite, Mg2SiO4). Using our approach, PolyCleaver automatically generated a range of terminations with various thicknesses. This enabled us to (i) assess the effect that generating a slab by cutting through a given termination plane has on the surface energy, allowing us to pinpoint the most feasible structure, (ii) obtain the optimal slab thickness above which surface energy becomes invariable (as depicted in Fig. S1 in the supporting information), and (iii) build a Wulff construction to reveal the equilibrium shape of the forsterite crystal at 0 K to assess the activity of naturally occurring surface terminations.
Surface energies of the studied terminations are reported in Table 1 and compared with the literature values. Our calculated values are in close agreement with those reported by Watson et al. (1997), de Leeuw et al. (2000) and Bruno et al. (2014). All calculated surface energies are within 6% of at least one value reported in the literature, with one notable exception: the surface energy of our modeled optimal slab for the (101) surface, with an initial thickness of 17.356 Å, is 7.8% lower than the value reported by Watson et al., 17.1% lower than that of Bruno et al. and a striking 20.7% lower than that of de Leeuw et al. However, in all cases, our pipeline has encountered other less stable surface terminations that display similar energies to the ones reported: an alternative (101) termination with a thickness of 21.695 Å displayed a surface energy of 2.13 J m−2, 6.4% and 2.2% lower than the values reported by Watson et al. and Bruno et al., respectively. Furthermore, an alternative termination with a starting thickness of 16.123 Å was found to display a surface energy of 1.94 J m−2, only 1.1% lower than the value reported by de Leeuw et al. Thus, our thorough investigation has revealed that the (101) surface displays a lower surface energy, and thus a higher stability, than the (012) surface, in contrast with previous studies, reinforcing the importance of using an unbiased and automatic approach to find suitable surface terminations. The Wulff-derived equilibrium shape at 0 K arising from the calculated surface energies in this work is represented in Fig. 2(a).
We next sought to assess the ability of all potentially active sites of these surfaces to adsorb formaldehyde (H2CO), a multifaceted molecule, also of relevance in prebiotic chemistry as it is a reactant in the formation of sugars and amino acids in the formose reaction and the Strecker synthesis, respectively (Ioppolo et al., 2021; Aponte et al., 2017; Meinert et al., 2016). Due to the geometrical complexity of the generated surfaces, to render the large number of potential adsorption sites, a Delaunay triangulation (Montoya & Persson, 2017) was used to identify them on the basis of the centers of the outermost exposed atoms of the surface. Fig. S2 illustrates the potential adsorption site grid that our triangulation method yields for the (001) and (123) surface terminations as example cases, showing that the entirety of the was explored. Then, we took an automatic sequential approach to examine adsorption of the formaldehyde molecule on each identified site from its O atom (which is deemed to be the anchor atom in all instances) until overlap of the ionic radii of O with the atoms on the surface. These preliminary structures were subsequently optimized using semi-empirical methods (see Section 5), providing a broad range of adsorption energies for the modeled surfaces represented in Fig. 2(b). This analysis reveals that, among the most naturally occurring terminations of forsterite, the (010) termination, while being one of the most stable, also appears to be the most reactive towards formaldehyde adsorption and activation, as shown in Fig. 2(c).
Nonetheless, to showcase the potential of PolyCleaver for modeling more complex and novel mineral surfaces, we sought to go beyond literature-abundant surfaces to model all theoretically viable terminations with of 0 to 3. Using our pipeline, we were able to quickly obtain a total of 45 surfaces, as shown in Fig. S3, with the intention to model their reactivity towards formaldehyde adsorption. Hence, we used these structures to perform our triangulation-based adsorption analysis yielding a database of 2841 distinct adsorption complexes, whose adsorption energies are depicted in Fig. 3. This analysis goes far beyond assessing the chemical activity of the most studied forsterite surfaces, highlighting that chemical interest resides not on those but on less stable (Watson et al., 1997) defect-bearing facets such as (021) or (013), which display some of the strongest molecular adsorptions. Moreover, our calculations show that these strong interactions are associated with a of formaldehyde: for instance, the most stable adsorption, corresponding to the lowest point on the (021) surface, corresponds to a doubly of formaldehyde near two highly basic O2− surface sites (as displayed in Fig. S4). These results pave the way for the study of automatically generated surfaces for the catalysis of relevant reaction pathways (e.g. the above-mentioned formose reaction and the Strecker synthesis).
4. Conclusions
In this article, a straightforward pipeline for the generation of theoretically suitable surfaces of complex ionic minerals (e.g. with polyatomic anions) is presented. Our approach, which is implemented in our freely available PolyCleaver tool in a black-box fashion, requires only basic user inputs to generate a broad diversity of surface terminations that widely sample the conformational space of the minerals. The ability to generate chemically correct (namely, non-polar and charge-neutral) slab models in a high-throughput fashion is crucial to accurately describe the mineral crystal morphology in a systematic fashion and to accelerate the discovery of novel synthetic routes on the mineral surfaces, as supported by our automated analysis of the interactions between a common pure nesosilicate, forsterite (Mg2SiO4), and a key prebiotic molecule, formaldehyde. Deployment of this tool will prove useful for modeling other silicate-based systems like cyclosilicates, inosilicates and phyllosilicates, as well as other potentially polyionic minerals containing covalently bound anionic species such as carbonates, sulfates and phosphates, providing the catalysis and materials science fields with a much-needed diversity of mineral terminations.
5. Methods
5.1. Surface generation algorithm
To achieve non-polar charge-neutral surface slab models, our pipeline is fed from the tools implemented in the pymatgen Python library and adopts a procedural approach. Starting from the mineral bulk structure decorated with the most probable per-atom oxidation states, our algorithm identifies cations and cationic and anionic species of anionic polyhedra (e.g. Mg2+, Si4+ and O2− in Mg2SiO4, respectively): anion species are deemed those with negative oxidation states, anionic polyhedral centers are classified as those atoms closest to the anions with positive oxidation states, and charge-compensating cations are all positively charged atoms not falling in the previous category. This strategy allows for the analysis of more complex minerals with one or multiple cationic species, such as those with mixed compositions or in the presence of metal dopants. After species classification, our algorithm performs an arbitrary generation of surfaces yielding several Tasker type II or III slabs using the pymatgen library (Ong et al., 2013), considering multiple cuts of a desired thickness and overlooking chemical bonding and overall stoichiometry. Since the non-polar nature of the slab is deemed to be governed by the covalent anionic a cation-deprived scaffold is used as a basis for polarity correction, by removing undercoordinated anion clusters and sequentially deleting complete clusters at one side of the slab until either non-polarity is achieved or there are no anions left, in which case the slab is discarded. The non-polar anion scaffold is then populated with the original cations, and the structure's polarity is then corrected in the same fashion while maintaining the anions intact. Finally, cations are sequentially removed from either side of the slab until the stoichiometry of the slab matches that of the bulk. To account for the possibility of multiple corrected Tasker type III slabs converging to the same structure, equivalent slabs are merged in the final data set. This process is automatically carried out for all input planes determined by their Miller indices.
5.2. Density functional theory (DFT) calculations
All bulk and surface calculations reported in this work were carried out using the projector-augmented wave (PAW) method (Blöchl, 1994) and the Perdew–Burke–Ernzerhof (PBE) functional (Perdew et al., 1996) implemented in the Vienna Ab-Initio Simulation Package (VASP) code (Kresse & Furthmüller, 1996). The Mg2SiO4 bulk, which belongs to the Pnma symmetry group and whose structure was obtained from the Materials Project (Jain et al., 2013), was simulated using a plane-wave energy cut-off of 500 eV. The first was sampled using a Γ-centered k-point grid of 6 × 4 × 2 (resulting in an effective k-point density of 20 k-points Å), obtained after assessing k-point grids from 4 × 2 × 1 up to 18 × 14 × 8 and following a convergence criterion of 1 meV atom−1. To obtain the lattice parameters at equilibrium, the energies of the expanded and contracted bulk from 98% to 102% of its original size with a step of 1% were plotted using a Birch–Murnaghan equation of state, yielding a set of lattice parameters of a = 4.780, b = 6.019 and c = 10.273 Å. All automatically generated slabs were optimized with the same parameters by sampling the using the same k-point density while only considering the Γ point in the direction perpendicular to the plane. In all cases, all atoms in the structure are allowed to relax freely, thus considering all models to be those of a free-standing slab. Slab surface energies (γ) reported in this work are defined as follows:
where is the energy of the optimized non-polar symmetric slab, is the energy of the forsterite bulk, A is the surface area and n is the stoichiometric coefficient of the slab with respect to the bulk. Surface energies were obtained after convergence with respect to the slab thickness, with a convergence criterion of 1 meV atom−1. Wulff construction representations were carried out using the pymatgen library (Ong et al., 2013).
5.3. Automation of molecular adsorptions
Given the complex nature of the surface, where the vertical position of surface atoms can vary by up to 2 Å on certain terminations, the outermost atoms of the surfaces (i.e. those exposed to the adsorbates) were deemed those that passed the condition that no other atoms lie above them within a cylinder of a radius given by the tabulated atomic radius of the target atom. Potential adsorption sites were identified by means of a Delaunay triangulation (Montoya & Persson, 2017) from the centers of the surface atoms, where top, bridge and face-centered cubic/hexagonal closest-packed (f.c.c./h.c.p.) sites were determined to be the vertices, the edge mid-points and the centers of the triangles, respectively. The formaldehyde adsorbates were aligned towards the surface adsorption sites given an anchor atom (in this case, O) and sequentially approached the surface until contact (i.e. until overlap of the ionic radii of the atoms of formaldehyde with those on the forsterite surface). All preliminary structures of the adsorbates on top of the generated terminations of forsterite were optimized using the semi-empirical GFN-xTB method (Grimme et al., 2017) with periodic boundary conditions using the tblite package interfaced with the Atomic Simulation Environment (ASE) package (Hjorth Larsen et al., 2017), for the sake of efficiency. In these preliminary calculations, since minimal surface reconfiguration after adsorbate inclusion occurs, atoms belonging to the surface model were kept frozen at their DFT-optimized positions, while atoms of the formaldehyde molecule were allowed to relax freely. The adsorption energy () of formaldehyde on the forsterite surfaces at the GFN-xTB level was calculated as
where is the GFN-xTB energy of the forsterite–formaldehyde complex, is the GFN-xTB energy of the formaldehyde molecule in the gas phase and E* is the GFN-xTB energy of the bare surface.
6. Data availability
The authors declare that all data supporting this study are available within the main text. The structures of all the generated surfaces of Mg2SiO4 are displayed in Fig. S1. All computational data on the surfaces at the DFT level reported in this work, including geometries and energies, and the trajectories of all formaldehyde adsorptions on the generated surfaces of Mg2SiO4 at a semi-empirical level can be accessed via an ioChem-BD data set (https://doi.org/10.19061/iochem-bd-6-289). The source code of PolyCleaver is shared with a GNU General Public License v3.0 and is accessible in the following GitHub repository: https://github.com/ericmates/PolyCleaver. The algorithm for the automatic identification of surface adsorption sites and subsequent approach and optimization of the adsorbates on the surface is available upon request.
Supporting information
Link https://doi.org/10.19061/iochem-bd-6-289
Computational data on the surfaces at the DFT level reported in this work, including geometries and energies, and the trajectories of all formaldehyde adsorptions on the generated surfaces of forsterite at a semi-empirical level.
Extended data Figs S1-S4. DOI: https://doi.org/10.1107/S1600576724001286/ui5001sup1.pdf
Acknowledgements
Eric Mates-Torres acknowledges support by the Spanish Ministry of Universities and the European Union's Next Generation EU fund in the form of a Margarita Salas contract. The CSUC supercomputing center and the Spanish Supercomputing Network (RES) are acknowledged for the provision of computational resources. We also acknowledge computational resources from the EuroHPC Joint Undertaking through the Regular Access call project No. 2023R01-112, hosted by the Ministry of Education, Youth and Sports of the Czech Republic through the e-INFRA CZ (ID: 90254).
Funding information
The following funding is acknowledged: H2020 European Research Council (grant No. 865657 to Albert Rimola); Partnership for Advanced Computing in Europe AISBL (grant No. 2023R01-112 to Eric Mates-Torres, Albert Rimola); Ministerio de Ciencia, Innovación y Universidades (award to Eric Mates-Torres); Ministerio de Ciencia e Innovación (grant No. PID2021-126427NB-I00 to Albert Rimola).
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