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首页> 外文期刊>Electric Power Components and Systems >Antlion Algorithm Optimized Fuzzy PID Supervised On-line Recurrent Fuzzy Neural Network Based Controller for Brushless DC Motor
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Antlion Algorithm Optimized Fuzzy PID Supervised On-line Recurrent Fuzzy Neural Network Based Controller for Brushless DC Motor

机译:基于Antlion算法优化的模糊PID监督的在线递归模糊神经网络控制器的无刷直流电动机控制器

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摘要

In this paper, Antlion algorithm optimized Fuzzy PID supervised on-line Recurrent Fuzzy Neural Network based controller is proposed for the speed control of Brushless DC motor. Learning parameters of the supervised on-line recurrent fuzzy neural network controller, i.e., learning rate (17), dynamic factor (a), and number nodes (Nj) are optimized using Genetic algorithm, Particle Swarm optimization, Ant colony optimization, Bat algorithm, and Antlion algorithm. The proposed controller is tested with different operating conditions of the Brushless DC motor, such as varying load conditions and varying set speed conditions. The time domain specifications such as rise time, overshoot, undershoot, settling time, recovery time, and steady state error and also integral performance indices such as root mean square error, integral of absolute error, integral of squared error, and integral of time multiplied absolute error are measured and compared for above optimized controller. Simulation results show Antlion algorithm optimized Fuzzy PID supervised on-line recurrent fuzzy neural network based controller has proved to be superior than other considered controllers in all aspects. In addition, the experimental verification of proposed control system is presented to test the effectiveness of the proposed controller with different operating conditions of the Brushless DC motor.
机译:针对无刷直流电动机的转速控制,提出了基于Antlion算法的模糊PID监督的在线递归模糊神经网络优化控制器。使用遗传算法,粒子群算法,蚁群算法,蝙蝠算法对有监督的在线递归模糊神经网络控制器的学习参数,即学习率(17),动态因子(a)和数节点(Nj)进行优化。 ,以及Antlion算法。所提出的控制器在无刷直流电动机的不同运行条件下进行了测试,例如变化的负载条件和变化的设定转速条件。时域规范(例如上升时间,超调,下冲,建立时间,恢复时间和稳态误差)以及积分性能指标(例如均方根误差,绝对误差积分,平方误差积分和时间积分)测量并比较上述优化控制器的绝对误差。仿真结果表明,Antlion算法优化的基于模糊PID监督的在线递归模糊神经网络的控制器在所有方面均被证明优于其他控制器。另外,对所提出的控制系统进行了实验验证,以测试所提出的控制器在无刷直流电动机的不同工作条件下的有效性。

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