Fast Shielding Optimization of an Inductive Power Transfer System for Electric Vehicles
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- @Article{Pei:2022:IEEEAccess,
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author = "Yao Pei and Lionel Pichon and Yann {Le Bihan} and
Mohamed Bensetti and Philippe Dessante",
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journal = "IEEE Access",
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title = "Fast Shielding Optimization of an Inductive Power
Transfer System for Electric Vehicles",
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year = "2022",
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volume = "10",
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pages = "91227--91234",
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abstract = "The shielding design is one of the most difficult
phases in developing an inductive power transfer system
(IPT) for electric vehicles. In this aspect, the
combination of metamodeling with a multiobjective
optimization algorithm provides an efficient approach.
Here, Polynomial Chaos Expansions (PCE) and Multigene
Genetic Programming Algorithm (MGPA) methods are used
and compared to describe the mutual inductance of the
IPT system in the function of the design variables on
the shielding. These metamodels are obtained based on a
number of 3D Finite Element Method (FEM) computations.
Then, a multiobjective optimization algorithm coupled
with the PCE metamodeling technique is applied to
determine the optimal design variables for a practical
shielding design when considering the magnetic coupling
as well as the cost of the shielding as objective
functions. Such a multiobjective optimization algorithm
based on a particle swarm algorithm coupled with a
metamodel on PCE method is proposed, leading to improve
around 104percent of the mutual inductance M and save
14percent of the cost C for the shielding compared to
the initial design.",
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/ACCESS.2022.3198953",
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ISSN = "2169-3536",
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notes = "Also known as \cite{9857909}",
- }
Genetic Programming entries for
Yao Pei
Lionel Pichon
Yann Le Bihan
Mohamed Bensetti
Philippe Dessante
Citations