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Mehboob, Fozia
Publications (1 of 1) Show all publications
Mehboob, F., Fattouh, A. & Sahoo, S. (2024). Synergizing Transfer Learning and Multi-Agent Systems for Thermal Parametrization in Induction Traction Motors. Applied Sciences, 14(11), Article ID 4455.
Open this publication in new window or tab >>Synergizing Transfer Learning and Multi-Agent Systems for Thermal Parametrization in Induction Traction Motors
2024 (English)In: Applied Sciences, E-ISSN 2076-3417, Vol. 14, no 11, article id 4455Article in journal (Refereed) Published
Abstract [en]

Maintaining optimal temperatures in the critical parts of an induction traction motor is crucial for railway propulsion systems. A reduced-order lumped-parameter thermal network (LPTN) model enables computably inexpensive, accurate temperature estimation; however, it requires empirically based parameter estimation exercises. The calibration process is typically performed in labs in a controlled experimental setting, which is associated with a lot of supervised human efforts. However, the exploration of machine learning (ML) techniques in varied domains has enabled the model parameterization in the drive system outside the laboratory settings. This paper presents an innovative use of a multi-agent reinforcement learning (MARL) approach for the parametrization of an LPTN model. First, a set of reinforcement learning agents are trained to estimate the optimized thermal parameters using the simulated data in several driving cycles (DCs). The selection of a reinforcement learning agent and the level of neurons in the RL model is made based on variability of the driving cycle data. Furthermore, transfer learning is performed on a new driving cycle data collected on the measurement setup. Statistical analysis and clustering techniques are proposed for the selection of an RL agent that has been pre-trained on the historical data. It is established that by synergizing within reinforcement learning techniques, it is possible to refine and adjust the RL learning models to effectively capture the complexities of thermal dynamics. The proposed MARL framework shows its capability to accurately reflect the motor's thermal behavior under various driving conditions. The transfer learning usage in the proposed approach could yield significant improvement in the accuracy of temperature prediction in the new driving cycles data. This approach is proposed with the aim of developing more adaptive and efficient thermal management strategies for railway propulsion systems.

Place, publisher, year, edition, pages
MDPI, 2024
Keywords
reinforcement learning, transfer learning, railway propulsion system, induction motor, thermal model, optimization
National Category
Control Engineering
Identifiers
urn:nbn:se:mdh:diva-67893 (URN)10.3390/app14114455 (DOI)001245421500001 ()2-s2.0-85195859369 (Scopus ID)
Available from: 2024-06-26 Created: 2024-06-26 Last updated: 2024-06-26Bibliographically approved
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