Diverse Phases of Carbonaceous Materials from Stochastic Simulations
Abstract
Amorphous carbon systems are emerging to have unparalleled properties at multiple length scales, making them the preferred choice for creating advanced materials in many sectors, but the lack of long-range order makes it difficult to establish structure/property relationships. We propose an original computational approach to predict the morphology of carbonaceous materials for arbitrary densities that we apply here to graphitic phases at low densities from 1.15 to 0.16 g/cm³, including glassy carbon. This approach, dynamic reactive massaging of the potential energy surface (DynReaxMas), uses the ReaxFF reactive force field in a simulation protocol that combines potential energy surface (PES) transformations with global optimization within a multidescriptor representation. DynReaxMas enables the simulation of materials synthesis at temperatures close to experiment to correctly capture the interplay of activated vs entropic processes and the resulting phase morphology. We then show that DynReaxMas efficiently and semiautomatically produces atomistic configurations that span wide relevant regions of the PES at modest computational costs. Indeed, we find a variety of distinct phases at the same density, and we illustrate the evolution of competing phases as a function of density ranging from uniform vs bimodal distributions of pore sizes at higher and intermediate density (1.15 g/cm³ and 0.50 g/cm³) to agglomerated vs sparse morphologies, further partitioned into boxed vs hollow fibrillar morphologies, at lower density (0.16 g/cm³). Our observations of diverse phases at the same density agree with experiment. Some of our identified phases provide descriptors consistent with available experimental data on local density, pore sizes, and HRTEM images, showing that DynReaxMas provides a systematic classification of the complex field of amorphous carbonaceous materials that can provide 3D structures to interpret experimental observations.
Additional Information
© 2021 American Chemical Society. Received: September 23, 2020; Accepted: March 11, 2021; Published: March 15, 2021. A.F. and W.A.G. acknowledge support from NSF (Grant CBET 1805022). Computational support from CINECA Supercomputing Centre within the ISCRA programme is gratefully acknowledged. Author Contributions: SM. and G.B. contributed equally to this work. The authors declare no competing financial interest.Attached Files
Accepted Version - nn0c08029.pdf
Supplemental Material - nn0c08029_si_001.pdf
Supplemental Material - nn0c08029_si_002.mp4
Supplemental Material - nn0c08029_si_003.mp4
Supplemental Material - nn0c08029_si_004.mp4
Supplemental Material - nn0c08029_si_005.mp4
Supplemental Material - nn0c08029_si_006.mp4
Supplemental Material - nn0c08029_si_007.mp4
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Additional details
- PMCID
- PMC9639862
- Eprint ID
- 108444
- DOI
- 10.1021/acsnano.0c08029
- Resolver ID
- CaltechAUTHORS:20210316-071031936
- NSF
- CBET-1805022
- Created
-
2021-03-19Created from EPrint's datestamp field
- Updated
-
2023-07-07Created from EPrint's last_modified field
- Other Numbering System Name
- WAG
- Other Numbering System Identifier
- 1420