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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Mitsos, Alexander

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in Cooperation with on an Cooperation-Score of 37%

Topics

Publications (2/2 displayed)

  • 2022Direct Olivine Carbonation8citations
  • 2020Graph Neural Networks for Prediction of Fuel Ignition Quality109citations

Places of action

Chart of shared publication
Mhamdi, Adel
1 / 1 shared
Renforth, Phil
1 / 1 shared
Ostovari, Hesam
1 / 1 shared
Spütz, Hendrik
1 / 1 shared
Bremen, Andreas M.
1 / 1 shared
Bardow, André
1 / 2 shared
Strunge, Till
1 / 2 shared
Rittig, Jan G.
1 / 1 shared
Schweidtmann, Artur M.
1 / 1 shared
Grohe, Martin
1 / 1 shared
König, Andrea
1 / 1 shared
Dahmen, Manuel
1 / 1 shared
Chart of publication period
2022
2020

Co-Authors (by relevance)

  • Mhamdi, Adel
  • Renforth, Phil
  • Ostovari, Hesam
  • Spütz, Hendrik
  • Bremen, Andreas M.
  • Bardow, André
  • Strunge, Till
  • Rittig, Jan G.
  • Schweidtmann, Artur M.
  • Grohe, Martin
  • König, Andrea
  • Dahmen, Manuel
OrganizationsLocationPeople

article

Graph Neural Networks for Prediction of Fuel Ignition Quality

  • Mitsos, Alexander
  • Rittig, Jan G.
  • Schweidtmann, Artur M.
  • Grohe, Martin
  • König, Andrea
  • Dahmen, Manuel
Abstract

<p>Prediction of combustion-related properties of (oxygenated) hydrocarbons is an important and challenging task for which quantitative structure-property relationship (QSPR) models are frequently employed. Recently, a machine learning method, graph neural networks (GNNs), has shown promising results for the prediction of structure-property relationships. GNNs utilize a graph representation of molecules, where atoms correspond to nodes and bonds to edges containing information about the molecular structure. More specifically, GNNs learn physicochemical properties as a function of the molecular graph in a supervised learning setup using a backpropagation algorithm. This end-to-end learning approach eliminates the need for selection of molecular descriptors or structural groups, as it learns optimal fingerprints through graph convolutions and maps the fingerprints to the physicochemical properties by deep learning. We develop GNN models for predicting three fuel ignition quality indicators, i.e., the derived cetane number (DCN), the research octane number (RON), and the motor octane number (MON), of oxygenated and nonoxygenated hydrocarbons. In light of limited experimental data in the order of hundreds, we propose a combination of multitask learning, transfer learning, and ensemble learning. The results show competitive performance of the proposed GNN approach compared to state-of-the-art QSPR models, making it a promising field for future research. The prediction tool is available via a web front-end at www.avt.rwth-aachen.de/gnn. </p>

Topics
  • impedance spectroscopy
  • combustion
  • molecular structure
  • machine learning