Materials Map

Discover the materials research landscape. Find experts, partners, networks.

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The Materials Map is an open tool for improving networking and interdisciplinary exchange within materials research. It enables cross-database search for cooperation and network partners and discovering of the research landscape.

The dashboard provides detailed information about the selected scientist, e.g. publications. The dashboard can be filtered and shows the relationship to co-authors in different diagrams. In addition, a link is provided to find contact information.

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Materials Map under construction

The Materials Map is still under development. In its current state, it is only based on one single data source and, thus, incomplete and contains duplicates. We are working on incorporating new open data sources like ORCID to improve the quality and the timeliness of our data. We will update Materials Map as soon as possible and kindly ask for your patience.

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in Cooperation with on an Cooperation-Score of 37%

Topics

Publications (2/2 displayed)

  • 2021Atomistic Descriptors for Machine Learning Models of Solubility Parameters for Small Molecules and Polymers13citations
  • 2021Atomistic Descriptors for Machine Learning Models of Solubility Parameters for Small Molecules and Polymers13citations

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Maâlej, Ramzi
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Chi, Mingzhe
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Damak, Kamel
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Sierka, Marek
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Schrader, Tim
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2021

Co-Authors (by relevance)

  • Maâlej, Ramzi
  • Chi, Mingzhe
  • Damak, Kamel
  • Sierka, Marek
  • Schrader, Tim
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article

Atomistic Descriptors for Machine Learning Models of Solubility Parameters for Small Molecules and Polymers

  • Gargouri, Rihab
Abstract

<jats:p>Descriptors derived from atomic structure and quantum chemical calculations for small molecules representing polymer repeat elements were evaluated for machine learning models to predict the Hildebrand solubility parameters of the corresponding polymers. Since reliable cohesive energy density data and solubility parameters for polymers are difficult to obtain, the experimental heat of vaporization ΔHvap of a set of small molecules was used as a proxy property to evaluate the descriptors. Using the atomistic descriptors, the multilinear regression model showed good accuracy in predicting ΔHvap of the small-molecule set, with a mean absolute error of 2.63 kJ/mol for training and 3.61 kJ/mol for cross-validation. Kernel ridge regression showed similar performance for the small-molecule training set but slightly worse accuracy for the prediction of ΔHvap of molecules representing repeating polymer elements. The Hildebrand solubility parameters of the polymers derived from the atomistic descriptors of the repeating polymer elements showed good correlation with values from the CROW polymer database.</jats:p>

Topics
  • density
  • polymer
  • energy density
  • machine learning