Alexander Heinlein

prof_pic5.jpg

TU Delft

DIAM, Faculty of EEMCS

Numerical Analysis

Mekelweg 4, 2628 CD Delft

Room HB 03.290

Tel.: +31 (0)15 27 89135

Alexander Heinlein is assistant professor in the Numerical Analysis group of the Delft Institute of Applied Mathematics (DIAM), Faculty of Electrical Engineering, Mathematics & Computer Science (EEMCS), at the Delft University of Technology (TU Delft).

His main research areas are numerical methods for partial differential equations and scientific computing, in particular, solvers and discretizations based on domain decomposition and multiscale approaches. He is interested in high-performance computing (HPC) and solving challenging problems involving, e.g., complex geometries, highly heterogeneous coefficient functions, or the coupling of multiple physics. More recently, Alexander also started focusing on the combination of scientific computing and machine learning, a new research area also known as scientific machine learning (SciML). Generally, his work includes the development of new methods and their theoretical foundation as well as their implementation on current computer architectures (CPUs, GPUs) and application to real world problems.

news

May 14, 2024 During the coming weeks, I will give keynote presentations at the HPCSE24 conference in the Czech Republic and the Preconditioning 2024 conference in the USA.
Jan 28, 2024 I have been invited to speak in the CRUNCH seminar CRUNCH Group, Division of Applied Mathematics, Brown University. My talk on Domain decomposition for physics-informed neural networks is scheduled for March 22nd. Here, you can find the slides and video recording.
Dec 27, 2023 I have been featured in the GAMM Rundbrief with a description of my research.

recent publications

  1. CMAME
    Multilevel domain decomposition-based architectures for physics-informed neural networks
    Victorita DoleanAlexander HeinleinSiddhartha Mishra, and 1 more author
    Computer Methods in Applied Mechanics and Engineering, 2024
  2. Springer LNCSE
    A short note on solving partial differential equations using convolutional neural networks
    Viktor GrimmAlexander Heinlein, and Axel Klawonn
    In Domain Decomposition Methods in Science and Engineering XXVII, 2024
  3. Springer LNCSE
    Finite basis physics-informed neural networks as a Schwarz domain decomposition method
    Victorita DoleanAlexander HeinleinSiddhartha Mishra, and 1 more author
    In Domain Decomposition Methods in Science and Engineering XXVII, 2024
  4. Multifidelity domain decomposition-based physics-informed neural networks and operators for time-dependent problems
    Alexander HeinleinAmanda A. HowardDamien Beecroft, and 1 more author
    Jan 2024
    Accepted for publication
  5. Predicting Coarse Basis Functions for Two-Level Domain Decomposition Methods Using Graph Neural Networks
    Ichitaro Yamazaki, Alexander Heinlein, and Sivasankaran Rajamanickam
    Jul 2024
  6. Finite basis Kolmogorov-Arnold networks: domain decomposition for data-driven and physics-informed problems
    Amanda A. Howard, Bruno Jacob, Sarah H. Murphy, and 2 more authors
    Jun 2024
  7. Improving Pseudo-Time Stepping Convergence for CFD Simulations With Neural Networks
    Anouk Zandbergen, Tycho van Noorden, and Alexander Heinlein
    Jun 2024
    Submitted