Surrogate Model for Gearbox Oil Flow Distribution

Institut
Lehrstuhl für Maschinenelemente
Typ
Bachelorarbeit / Semesterarbeit / Masterarbeit /
Inhalt
theoretisch / konstruktiv /  
Beschreibung

Current situation:

Fluid flow inside gearboxes is crucial for reliability and efficiency, as it governs lubrication, heat transfer, windage losses, and churning power. However, realistic gear trains with multiple meshing gears, bearings, rotating frames, and complex housings lead to highly unsteady, multi-scale flows that make high-fidelity CFD simulations computationally expensive. This cost limits both design iteration and real-time applications. Recent works in Graph Neural Network (GNN) enable learning flow operators directly on unstructured meshes, preserving mesh topology and supporting complex geometries in fluid and multi-physics modeling.

 

Work packages:

· Literature review on surrogate modeling approaches and GNN-based methods

· Generation and structuring of several simulation data using the current baseline setup

· Further implementation of the recommended GNN model, including training and inference

 

Voraussetzungen

Prerequisties:

· Good English or German skills

· Basic Machine Learning and CFD knowledge, programming skills in Python

Benefits in future:

· Possibilities as a working student (Hiwi) or research assistant with Ph.D.

Application:

· Please send your CV and transcript of grades to chongyu.zhang@tum.de in english or german. 

Möglicher Beginn
sofort/Nach Absprache
Kontakt
Marcus Chongyu Zhang, M.Sc.
Raum: MW 2504
Tel.: 015226728921
chongyu.zhangtum.de
Ausschreibung