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The most used optimization algorithms in design of all types of electrical machines are as
follows: genetics algorithms (GA), differential evolution algorithm (DEA), estimation of dis-
tribution algorithms (EDAs), particle swarm optimization (PSO) and multi-objective genetic
algorithms (MOGA, Pareto, etc.) [15].
A comprehensive evaluation of optimization algorithms was performed in Refs. [16–18]. The
authors of these studies state that any such classification of different optimization algorithms
is not truly appropriate since the performance is an objective closely related to the specifics
of each application. Nevertheless, in the optimization of the electrical machine, the authors
mostly agree that DEA achieves the best fitness values, i.e. the minimum objective function
value, usually with a smaller number of evaluation steps.
Considering the important step in the development of cycle of PMSM presented above, a
general design procedure of PMSMOR for BSAB applications is proposed and presented in
Figure 4.
2.1.2. SynRM machine for ISAB applications
Variable reluctance synchronous machines have received little attention in various comparative
studies approaching the selection of the most appropriate electric-propulsion system for either
HEV or EV. Malan [19, 20] showed that the SynRM drive has major advantages in electrical
Figure 4. General design procedure of PMSMOR.
Hybrid Electric
Vehicles110
zurück zum
Buch Hybrid Electric Vehicles"
Hybrid Electric Vehicles
- Titel
- Hybrid Electric Vehicles
- Autor
- Teresa Donateo
- Herausgeber
- InTech
- Ort
- Rijeka
- Datum
- 2017
- Sprache
- englisch
- Lizenz
- CC BY 4.0
- ISBN
- 978-953-51-3298-1
- Abmessungen
- 15.5 x 22.5 cm
- Seiten
- 162
- Schlagwörter
- Physical Sciences, Engineering and Technology, Engineering, Vehicle Engineering, Automobile Engineering
- Kategorie
- Technik