Graph Machine Learning for Design of High-Octane Fuels (2206.00619v2)
Abstract: Fuels with high-knock resistance enable modern spark-ignition engines to achieve high efficiency and thus low CO2 emissions. Identification of molecules with desired autoignition properties indicated by a high research octane number and a high octane sensitivity is therefore of great practical relevance and can be supported by computer-aided molecular design (CAMD). Recent developments in the field of graph machine learning (graph-ML) provide novel, promising tools for CAMD. We propose a modular graph-ML CAMD framework that integrates generative graph-ML models with graph neural networks and optimization, enabling the design of molecules with desired ignition properties in a continuous molecular space. In particular, we explore the potential of Bayesian optimization and genetic algorithms in combination with generative graph-ML models. The graph-ML CAMD framework successfully identifies well-established high-octane components. It also suggests new candidates, one of which we experimentally investigate and use to illustrate the need for further auto-ignition training data.
- Jan G. Rittig (11 papers)
- Martin Ritzert (17 papers)
- Artur M. Schweidtmann (28 papers)
- Stefanie Winkler (2 papers)
- Jana M. Weber (5 papers)
- Philipp Morsch (1 paper)
- K. Alexander Heufer (2 papers)
- Martin Grohe (92 papers)
- Alexander Mitsos (45 papers)
- Manuel Dahmen (22 papers)