Tutorial Machine Learning in Solid Mechanics

  • In this tutorial, methods of machine learning are to be used to solve typical problems in solid mechanics. In particular, artificial neural networks are used here, which are to be formulated and trained in such a way that important physical and mathematical properties of the problems are taken into account. This shall ensure that neural networks yield reliable, robust, and physically meaningful predictions.

    The tasks and the documentation of results will be done in teams of 2 students. Each of the problems will be first introduced and discussed in a common session, then the teams will have 2-3 weeks to solve the current problem and document their results.

    Participants should have basic knowledge in machine learning methods and solid mechanics.


    Contents

    Theoretical part:

    • Structure and functioning of “Feed-Forward Neural Networks” (FFNNs)
    • Construction principles for “Physics-Informed Neural Networks” (PINNs) that fulfill essential physical and mathematical problem requirements and properties, e.g. by network structure or training algorithms
    • Basics of solid mechanics and numerical mechanics

    Practical tasks:

    • Implementation, training, and evaluation of FFNNs / PINNs in TensorFlow / Python
    • Construction of PINNs with the help of convex neural networks, data augmentation, and analytical formulations
    • Application on problems such as material modeling, multiscale simulation, dynamics, or model order reduction

    Winter term 2022-2023

    This tutorial will be offered for the first time in the winter term 2022-2023.

    Please register for the tutorial as a group of 2 students by sending an email to Dominik Klein after September 1, 2022. In the email, include your names, matriculation numbers, and a short summary of your knowledge and courses on the subjects of solid mechanics and machine learning.


    https://www.maschinenbau.tu-da…utorial_mlsm/index.en.jsp

  • Dear students,


    after great success with the students last year, we are offering the tutorial "Machine Learning in Solid Mechanics" (16-73-4114-tt) also in the coming winter term 2023/24.

    Further information can be found on the CPS website or in the Moodle course.


    Please register for the tutorial as a group of 2 students by sending an email to Dominik Klein between September 1, 2023 to October 15, 2023. In the email, include your names, matriculation numbers, and a short summary of your knowledge and courses on the subjects of solid mechanics and machine learning. Note that spaces are limited and early registrations are given preference.

    If you do not have a partner yet, you can use the forum in the Moodle course to find one.

  • CPS

    Hat den Titel des Themas von „Tutorial Machine Learning in Solid Mechanics (Winter term 2022-2023)“ zu „Tutorial Machine Learning in Solid Mechanics“ geändert.