基于迭代神经网络的增强型DC-DC变换器无刷直流电机转矩脉动最小化

Q4 Multidisciplinary
P. Rajesh, Francis H. Shajin, V. Ansal, Vijay Kumar B
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引用次数: 0

摘要

针对无刷直流电动机转矩脉动最小化问题,提出了一种增强型DC-DC变换器混合控制方法。最初,用增强型Cuk转换器控制无刷直流电机。开关电感的应用是用来更新Cuk变换器的操作。在该方法中,控制机构包含两个控制回路,即速度控制回路和转矩控制回路,用于恢复无刷直流电机的执行。因此,所提出的系统是增强型人工跨性别Longicorn算法(EATLA)和递归神经网络(RNN)的综合性能,以改善控制回路的操作。在人工跨角Longicorn算法(ATLA)中,将交叉和突变方法作为散射过程的一部分来构建精度搜索过程。本文对无刷直流电动机限速和转矩误差的EATLA-RNN算法进行了研究。然而,该方法的输出受制于转速和转矩控制器的输入。在MATLAB/Simulink工作站上对所提出的拓扑结构和控制器进行了执行,并与粒子群优化(PSO)和细菌觅食(BF)算法等现有方法进行了转矩脉动最小化分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced artificial transgender longicorn algorithm & recurrent neural network based enhanced DC-DC converter for torque ripple minimization of BLDC motor
This paper proposes an enhanced DC-DC converter with hybrid control method for torque ripple minimization of BLDC motor. Initially, a BLDC motor is controlled with an enhanced Cuk converter. The application of a switched inductor is used to update the Cuk converter operation. In this method, the control mechanism incorporates two control loops, namely, the speed control loop and torque control loop, which are utilized to recover the execution of BLDC. Thus, the proposed system is the combined performance of the Enhanced Artificial Transgender Longicorn Algorithm (EATLA) and Recurrent Neural Network (RNN) to improve control loop operations. In the Artificial Transgender Longicorn Algorithm (ATLA), the crossover and mutation approach are used as part of the scattering process to build the accuracy search process. In this article, the EATLA-RNN algorithm for limiting speed and torque error of BLDC motor is explored. However, the proposed method output is subject to input of the speed and torque controllers. The proposed topology with the controller is executed on MATLAB/Simulink workstation, and torque ripple minimization is analyzed toother existing approaches such as particle swarm optimization (PSO) and bacterial foraging (BF) algorithm.
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来源期刊
Journal of Current Science and Technology
Journal of Current Science and Technology Multidisciplinary-Multidisciplinary
CiteScore
0.80
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