Machine learning approaches for predicting oil performance loss in wet brakes and clutches

Institute
Lehrstuhl für Maschinenelemente
Type
Semester Thesis / Master's Thesis /
Content
theoretical /  
Description

Initial situation:

Reliable friction behavior is crucial for the shifting performance and comfort of wet brakes and clutches in limited-slip differentials, active transfer cases, multi-speed transmission systems, and disconnect systems. Various experimental test series have revealed that composition and contamination through wear-related iron particles or water of modern lubricants significantly affect the friction and NVH (Noise, Vibration, Harshness) behavior as this may cause damage to the entire transmission unit. Therefore, a methodology was developed to quantify the performance loss of the lubricant by the use of defined parameters.

 

Objective:

Within the scope of this thesis, an existing dataset will be preprocessed to enable the application of data-driven modeling techniques. Subsequently, a predictive model will be developed using machine learning algorithms and evaluated in terms of its predictive accuracy and efficiency, in comparison with models reported in the literature.

Requirements
  • Interest in the field of drive technology

  • Experience with ML / AI or data modeling desirable

  • Ability to work independently and well-structured

Possible start
sofort
Contact
Johannes Wirkner, M.Sc.
Room: MW 2506
Phone: +49 89 289 15844
johannes.wirknertum.de
Announcement