Genetic Algorithm in Torque Optimisation of Permanently Split Capacitor Motor

Sarac, Vasilija and Citkuseva Dimitrovska, Biljana (2016) Genetic Algorithm in Torque Optimisation of Permanently Split Capacitor Motor. In: 2016 International Conference on Smart Systems and Technologies, Osjek, Croatia.

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Abstract

Paper investigates permanently split capacitor motor of type FMR-35/6, with respect to torque optimization. For this purpose, mathematical model of the motor is derived with
the output torque as an objective function for optimization.
Motor mathematical model is applied in program developed in
the C++ language, which performs the optimization using
Genetic Algorithm (GA). Several input design parameters of the motor are varied simultaneously in the GA program. The
program gives the best set of varied parameters for which the torque is increased, and consequently a new optimized model of the motor is obtained. Output torque of the optimized motor is increased at rated operating point as well as during motor start.Matlab/Simulink models are designed for obtaining the transient characteristics of the currents, speed and torque. The results from the Simulink models are compared with the results from the
mathematical models of the motor-basic and optimized, in order accuracy of the both mathematical models to be verified. Finally,magnetic flux density and its distribution in the cross-section of the motor models are determined for different operating regimes by using Finite Element Method (FEM).

Item Type: Conference or Workshop Item (Paper)
Subjects: Engineering and Technology > Electrical engineering, electronic engineering, information engineering
Divisions: Faculty of Electrical Engineering
Depositing User: Vasilija Sarac
Date Deposited: 20 Dec 2016 14:02
Last Modified: 20 Dec 2016 14:02
URI: https://eprints.ugd.edu.mk/id/eprint/16859

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