Affiliation:
1. Mercedes-Benz Research and Development India PVT LTD
Abstract
<div class="section abstract"><div class="htmlview paragraph">The global attention toward electric vehicles is growing tremendously, mainly
because of environmental issues in recent years. There has been a significant
increase in the development of hybrid and pure electric vehicles as they are
considered as an effective solution for reducing the carbon footprint. There is
a lot of research happening, especially in the design of high-performance
e-motors for electric powertrain applications. In this paper, the focus is on
the permanent magnet synchronous motors (PMSM) due to its higher efficiency and
more advantageous torque characteristics compared to other types of motors. This
paper presents a procedure for determining the initial design parameters using
analytical calculation method for a PMSM, followed by developing machine
learning algorithms (XGBoost, random forest, and artificial neural networks)
with the available benchmarking data and compare their performance to determine
the motor design parameters. A comparison study with the results obtained from
analytical calculation and machine learning algorithm is carried out in
determining the initial sizing parameters, and we have obtained an accuracy of
80%. We believe that this machine learning algorithm design approach will help
in saving the time needed for theoretical design, and with an optimum design
solution, can reduce the time and iterations of FEA required while designing an
e-motor.</div></div>
Reference13 articles.
1. Todorov , G.
and
Stoev , B.
Analytical Model for Sizing the Magnets of
Permanent Magnet Synchronous Machines Journal of
Electrical Engineering 3 3 2015 134 141
2. Stipetic , S. ,
Miebach , W. ,
and
Zarko , D.
Optimization in Design of Electric Machines:
Methodology and Workflow 2015 International
Aegean Conference on Electrical Machines & Power Electronics (ACEMP),
2015 International Conference on Optimization of Electrical & Electronic
Equipment (OPTIM) & 2015 International Symposium on Advanced
Electromechanical Motion Systems (ELECTROMOTION) Side, Turkey 2015
3. Idir , K. ,
Chang , L. ,
and
Dai , H.
A Neural Network-Based Optimisation Approach
for Induction Motor Design IEEE Canadian
Conference on Electrical and Computer Engineering Calgary, AB, Canada 1996
4. Hiyama , T. ,
Ikeda , M. ,
and
Nakayama , T.
Artificial Neural Network-Based Induction Motor
Design IEEE Power Engineering Society Winter
Meeting: Conference Proceedings Singapore 2000
5. Alteheld , C.
and
Gottkehaskamo , R.
Automated Preliminary Design of Induction
Machines Aided by Artificial Neural Networks International Conference on Electric Drives & Power
Electronics (EDPE) The High Tatras,
Slovakia 2019