The Application of Memetic Algorithm for Induction Motor Parameter Estimation

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วิวัฒน์ ทิพจร
ชนะชน ไกลถิ่น
จักรพงศ์ เฉลิมกิจ

Abstract

This paper presents the estimation of the steady state equivalent circuit parameters of induction motor by memetic algorithm with shuffle frog-leaping technic for local search. Parameter estimation of the motors is calculated by the optimization technique using maximum torque, full load torque and starting torque data. The results of the proposed method are compared with genetic algorithm and shuffle frog-leaping algorithm. The results reveal that the parameter estimation of the motor using memetic algorithm has the mean percentage error 6.7 % compared with the parameters from the test in laboratory.

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How to Cite
ทิพจร ว., ไกลถิ่น ช., & เฉลิมกิจ จ. (2018). The Application of Memetic Algorithm for Induction Motor Parameter Estimation. Naresuan University Engineering Journal, 13(1), 43–52. Retrieved from https://ph01.tci-thaijo.org/index.php/nuej/article/view/73028
Section
Research Paper

References

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