You are currently on a failover version of the Materials Cloud Archive hosted at CINECA, Italy.
Click here to access the main Materials Cloud Archive.
Note: If the link above redirects you to this page, it means that the Archive is currently offline due to maintenance. We will be back online as soon as possible.
This version is read-only: you can view published records and download files, but you cannot create new records or make changes to existing ones.

A dual-cutoff machine-learned potential for condensed organic systems obtained via uncertainty-guided active learning


JSON Export

{
  "metadata": {
    "edited_by": 576, 
    "owner": 557, 
    "_oai": {
      "id": "oai:materialscloud.org:2292"
    }, 
    "description": "Machine-learned potentials (MLPs) trained on ab initio data combine the computational efficiency of classical interatomic potentials with the accuracy and generality of the first-principles method used in the creation of the respective training set. In this work, we implement and train a MLP to obtain an accurate description of the potential energy surface and property predictions for organic compounds, as both single molecules and in the condensed phase. We devise a dual descriptor, based on the atomic cluster expansion (ACE), that couples an information-rich short-range description with a coarser long-range description that captures weak intermolecular interactions. We employ uncertainty-guided active learning for the training set generation, creating a dataset that is comparatively small for the breadth of application and consists of alcohols, alkanes, and an adipate. Utilizing that MLP, we calculate densities of those systems of varying chain lengths as a function of temperature, obtaining a discrepancy of less than 4% compared with experiment. Vibrational frequencies calculated with the MLP have a root mean square error of less than 1 THz compared to DFT. The heat capacities of condensed systems are within 11% of experimental findings, which is strong evidence that the dual descriptor provides an accurate framework for the prediction of both short-range intramolecular and long-range intermolecular interactions.", 
    "mcid": "2024.121", 
    "id": "2292", 
    "license": "Creative Commons Attribution 4.0 International", 
    "license_addendum": null, 
    "references": [
      {
        "citation": "L. Kahle, B. Minisini, T. Bui, J. First, C. Buda, T. Goldman, E. Wimmer, arXiv:2408.03058v1 [physics.chem-ph] 6 Aug 2024", 
        "type": "Preprint", 
        "url": "http://arxiv.org/abs/2408.03058"
      }
    ], 
    "doi": "10.24435/materialscloud:ed-gp", 
    "keywords": [
      "molecular dynamics", 
      "machine learning", 
      "diffusion", 
      "radial distribution functions", 
      "heat capacity", 
      "VASP", 
      "training data"
    ], 
    "contributors": [
      {
        "affiliations": [
          "Materials Design SARL, 42 avenue Verdier, 92120 Montrouge, France"
        ], 
        "familyname": "Kahle", 
        "email": "leonidkahle@gmail.com", 
        "givennames": "Leonid"
      }, 
      {
        "affiliations": [
          "Materials Design SARL, 42 avenue Verdier, 92120 Montrouge, France"
        ], 
        "familyname": "Minisini", 
        "givennames": "Benoit"
      }, 
      {
        "affiliations": [
          "bp Exploration Operating Co. Ltd, Chertsey Road, Sunbury-on-Thames TW16 7LN, UK"
        ], 
        "familyname": "Bui", 
        "givennames": "Tai"
      }, 
      {
        "affiliations": [
          "bp, Center for High Performance Computing, 225 Westlake Park Blvd, Houston, TX 77079, USA"
        ], 
        "familyname": "First", 
        "givennames": "Jeremy"
      }, 
      {
        "affiliations": [
          "bp Exploration Operating Co. Ltd, Chertsey Road, Sunbury-on-Thames TW16 7LN, UK"
        ], 
        "familyname": "Buda", 
        "givennames": "Corneliu"
      }, 
      {
        "affiliations": [
          "bp Exploration Operating Co. Ltd, Chertsey Road, Sunbury-on-Thames TW16 7LN, UK"
        ], 
        "familyname": "Goldman", 
        "givennames": "Thomas"
      }, 
      {
        "affiliations": [
          "Materials Design SARL, 42 avenue Verdier, 92120 Montrouge, France"
        ], 
        "familyname": "Wimmer", 
        "givennames": "Erich"
      }
    ], 
    "conceptrecid": "2291", 
    "version": 1, 
    "publication_date": "Aug 12, 2024, 10:33:47", 
    "is_last": true, 
    "status": "published", 
    "_files": [
      {
        "size": 5604507820, 
        "checksum": "md5:b66aa295818467bc09875599dbe6b49b", 
        "description": "Data as tar.gz, Check README.txt for more information", 
        "key": "data.tar.gz"
      }, 
      {
        "size": 1069, 
        "checksum": "md5:8d7a2b972808523498eb63f358bcbdfc", 
        "description": "README.txt which describes the data in data.tar.gz", 
        "key": "README.txt"
      }
    ], 
    "title": "A dual-cutoff machine-learned potential for condensed organic systems obtained via uncertainty-guided active learning"
  }, 
  "id": "2292", 
  "updated": "2024-08-12T08:33:47.293241+00:00", 
  "created": "2024-08-08T10:16:50.355192+00:00", 
  "revision": 2
}