In-situ Efficiency Estimate of Induction Motor on BF Algorithm
SUN Guan-qun1,ZHANG Li-suo2
1. College of Mechanical and Electrical Engineering, China Jiliang University, Hangzhou, Zhejiang 310018, China
2. CRRC Yongji Electric Co. Ltd., Yongji, Shanxi 044502, China
Abstract:Using bacterial foraging algorithm of optimized, a method to estimate efficiency of induction motor is presented. It relies on measuring the stator current, the stator voltage, stator resistance, the power input and the motor speed, without the need for no-load and locked-rotor test. Through a 5.5 kW induction motor test, the results and other industry better algorithms are compared, including the particle swarm optimization algorithm, immune algorithm, as well as the measured torque gauge method. The results show that the method can estimate the motor efficiency accurately, and is simple and low cost.
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