PORTALE DELLA DIDATTICA

Ricerca CERCA
  KEYWORD

CADEMA

Computational Intelligence for Electrical Machine design in automotive environment

keywords DATA MODELLING, E-MOBILITY, ELECTRICAL MACHINES, ELECTRIFICATION, MACHINE LEARNING

Reference persons MAURIZIO REPETTO, LUIGI SOLIMENE

Research Groups CADEMA

Description The electrification in the transport sector requires the design of electrical machines that must attain new requests for performance in terms of efficiency, high speed, torque and cost.

New machines design must cope with the interaction of many physical domains (e.g. electromagnetic, thermal, structural etc.). The research for new modelling solutions in this area is currently active and widespread.

While stakes are becoming higher, also the computational power available to this task is opportunely increasing. This allows innovative numerical methodologies, such as data-driven and machine learning approaches. The Innovative ways of thinking will widespread new design procedures.

Adoption of Machine Learning procedures can help the task of quick design and of sizing new machines and also to optimize their performance.

In addition, the reduction of the computational cost of the design procedure is a value as it allows to minimize the burden of computer analyses for the desired task.

In this respect, the thesis project aims at creating, by means of existing analysis procedures, a robust dataset of electrical machines performance and at the creation of data-driven techniques for its handling and exploitation in an optimization loop.

See also  2023_surrogate_compumag.pdf 

Required skills basic programming


Deadline 20/12/2024      PROPONI LA TUA CANDIDATURA




© Politecnico di Torino
Corso Duca degli Abruzzi, 24 - 10129 Torino, ITALY
Contatti