Abstract

This paper presented the brushless direct current motor torque ripple reduction based on the speed and torque control using hybrid technique. The dynamic behavior of the brushless direct current motor is analyzed in terms of the parameters such as the speed, current, back electromotive force and torque. Based on the parameters, the motor speed is controlled and minimized the torque ripples. For controlling the speed of the brushless direct current motor is utilized the fractional-order proportional–integral–derivative controller for generating the optimal control pulses. With the use of fractional-order proportional–integral–derivative controller, the optimal gain parameters are needed to reduce the torque ripples and control the speed of brushless direct current motor. By utilizing the hybrid technique, the gain parameters are utilized to analyze the optimal gain parameters of fractional-order proportional–integral–derivative controller. The hybrid technique is the combination of adaptive neuro-fuzzy inference system with firefly algorithm. The proposed strategy is simple in structure and robust to reduce the complexities of the mathematical computations. Initially, the nature inspired optimization algorithm of firefly algorithm is analyzed for finding the error function. In addition, the efficient adaptive neuro-fuzzy inference system controller which becomes an integrated method of approach is performed to control the error functions in order to yields excellent optimized gain values. After that, the control signals are applied to the input of voltage source converter of brushless direct current motor. With this control strategy, the harmonics and torque ripples are minimized. Based on the proposed control strategy, the speed and torque performance is analyzed. The effectiveness of the proposed technique is implemented in MATLAB/Simulink platform and evaluates their performance. The performance analysis of the proposed method is demonstrated and contrasted with the existing techniques such as bat algorithm, particle swarm optimization algorithm and ant–lion optimizer algorithm with fractional-order proportional–integral–derivative controller techniques.

Highlights

  • Electric drives form an integral part of industrial plants with over 5 billion motors built worldwide every year

  • The performance analysis of the proposed hybrid technique is controlled the speed for reducing the torque ripple of the brushless direct current (BLDC) motor is evaluated and compared with the existing techniques like particle swarm optimization (PSO), bat algorithm (BA), ant–lion optimizer (ALO)

  • Combination of adaptive neuro-fuzzy inference system (ANFIS) and FFA, which regulates the speed based on the power parameters of the BLDC motor

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Summary

Introduction

Electric drives form an integral part of industrial plants with over 5 billion motors built worldwide every year. The proposed control technique is utilized to regulate the speed and minimize the torque ripple of the BLDC motor. The proposed hybrid technique–based FOPID controller is developed for controlling the speed and torque of BLDC motor.

Results
Conclusion
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