h1

h2

h3

h4

h5
h6
% IMPORTANT: The following is UTF-8 encoded.  This means that in the presence
% of non-ASCII characters, it will not work with BibTeX 0.99 or older.
% Instead, you should use an up-to-date BibTeX implementation like “bibtex8” or
% “biber”.

@PHDTHESIS{Rittig:1012098,
      author       = {Rittig, Jan Gerald},
      othercontributors = {Mitsos, Alexander and Grohe, Martin},
      title        = {{G}raph machine learning for molecular property prediction
                      and design},
      volume       = {35},
      school       = {Rheinisch-Westfälische Technische Hochschule Aachen},
      type         = {Dissertation},
      address      = {Aachen},
      publisher    = {RWTH Aachen University},
      reportid     = {RWTH-2025-04861},
      series       = {Aachener Verfahrenstechnik series - AVT.SVT - Process
                      systems engineering},
      pages        = {1 Online-Ressource : Illustrationen},
      year         = {2025},
      note         = {Veröffentlicht auf dem Publikationsserver der RWTH Aachen
                      University; Dissertation, Rheinisch-Westfälische Technische
                      Hochschule Aachen, 2025},
      abstract     = {Molecules with optimal properties are essential for
                      chemical engineering. However, the search for promising
                      molecules with desired properties – which can also lead to
                      more efficient chemical processes – is often limited by
                      missing property data, leading to the need for predictive
                      models. Based on a graph representation of molecules with
                      atoms as nodes and bonds as edges, graph machine learning
                      (ML) has recently emerged as a powerful approach for
                      predicting molecular properties and exploring the chemical
                      space. In this dissertation, we therefore utilize graph ML
                      to advance the identification of optimal molecules for
                      chemical engineering applications. We first develop graph
                      neural networks (GNNs) to predict molecular properties that
                      are highly relevant for chemical engineering. Our developed
                      GNN models provide highly accurate predictions of pure
                      component properties, such as normal boiling points and
                      biodegradability, and mixture properties, e.g., activity
                      coefficients. The GNNs are applicable to a wide spectrum of
                      molecules and can be readily transferred to predict other
                      properties of interest. To further enhance the predictive
                      quality of GNNs, we incorporate thermodynamic relations into
                      the model architecture and training. Specifically, we
                      propose thermodynamics-informed GNNs that learn
                      thermodynamics through regularization during model training,
                      and thermodynamic-consistent GNNs that predict fundamental
                      thermodynamic potentials, such as the Gibbs free energy,
                      from which related properties can be deduced using automatic
                      differentiation. Using activity coefficients as a prime
                      example, we demonstrate that the GNNs provide thermodynamic
                      consistent predictions with increased accuracy and
                      generalization capabilities, paving the way for combining ML
                      with thermodynamics.Targeting the design of molecules with
                      desired properties, we develop and apply a graph ML
                      computer-aided molecular design (CAMD) framework. The
                      framework combines GNNs with generative graph ML and
                      optimization in a modular way. We use generative models,
                      i.e., variational autoencoders (VAEs) and generative
                      adversarial network (GAN), to learn a continuous molecular
                      space that enables strategic sampling of novel molecules
                      using optimization approaches, such as Bayesian optimization
                      (BO) and genetic algorithms. The properties of these
                      molecules are then predicted by GNNs. Thereby, we provide a
                      data-driven CAMD framework that enables automated design of
                      molecules based on available property data. We apply our
                      framework to the design of high-octane fuels and identify
                      well-known octane enhancers as well as promising new fuel
                      candidates, one of which we investigate in engine
                      experiments, demonstrating an important step towards
                      ML-driven molecular discovery. Building on our graph ML CAMD
                      framework, we extend both generative ML models and
                      optimization in molecular design. That is, we propose a
                      generative graph transformer model, called GraphXForm, that
                      constructs molecular graphs with desired properties by
                      sequentially adding atoms and bonds to an initial structure
                      in a self-improving loop. We apply GraphXForm to the design
                      of solvents for liquid-liquid extraction processes,
                      outperforming state-of-the-art generative ML methods while
                      allowing for the consideration of molecular structure
                      constraints and thus increasing flexibility in molecular
                      design. We further propose an optimization-based CAMD
                      approach by formulating ML-based molecular design as
                      mixed-integer linear program to identify molecules with
                      global optimal predicted properties, which is highly
                      promising to increase the sample efficiency in molecular
                      discovery. Overall, we provide predictive and generative
                      graph ML methods to identify molecules with desired
                      properties for energy and chemical systems. This
                      dissertation thus advances both ML and the molecular scale
                      in chemical engineering, while the process scale can be
                      integrated in future work.},
      cin          = {416710},
      ddc          = {620},
      cid          = {$I:(DE-82)416710_20140620$},
      pnm          = {DFG project G:(GEPRIS)466417970 - Generatives
                      graph-basiertes maschinelles Lernen für das integrierte
                      Design von Molekülen und Prozessen (466417970) / HDS LEE -
                      Helmholtz School for Data Science in Life, Earth and Energy
                      (HDS LEE) (HDS-LEE-20190612) / SPP 2331: Maschinelles Lernen
                      in der Verfahrenstechnik. Wissen trifft auf Daten:
                      Interpretierbarkeit, Extrapolation, Verlässlichkeit,
                      Vertrauen / Doktorandenprogramm},
      pid          = {G:(GEPRIS)466417970 / G:(DE-Juel1)HDS-LEE-20190612 /
                      G:(GEPRIS)441958259 / G:(DE-HGF)PHD-PROGRAM-20170404},
      typ          = {PUB:(DE-HGF)11 / PUB:(DE-HGF)3},
      doi          = {10.18154/RWTH-2025-04861},
      url          = {https://publications.rwth-aachen.de/record/1012098},
}