五相永磁同步电机速度控制系统的参数模糊整流滑模控制

IF 2 Q2 ENGINEERING, MECHANICAL
Jingjing Feng
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引用次数: 0

摘要

引言如今,五相永磁同步电机已广泛应用于工业和交通领域,而现有的速度控制系统滑模控制方法已无法满足快速响应和良好稳定性等要求:基于上述考虑,本研究首先采用数学建模的方法阐明了五相永磁同步电机。其次,在比例-积分-导数滑模控制的基础上,引入径向基函数和高木-菅野-康模糊模型进行参数识别、优化和调节。最后,提出了一种新的神经网络调节算法和速度控制策略:实验结果表明,调节算法的预期参数优化率可达 90%,小惯量工况下的超调量仅为 3%,调节时间为 0.02 s。此外,当受负载转矩影响时,新策略控制的电机速度波动最小,速度下降仅为 1%,恢复时间最快,仅为 0.02 秒:综上所述,所提出的方法在保持较强的恢复能力和抗干扰能力的同时,有可能显著提高速度控制系统的控制性能。该方法对于五相永磁同步电机调速系统的实际应用具有一定的指导意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameter fuzzy rectification for sliding mode control of five-phase permanent magnet synchronous motor speed control system
Introduction: Nowadays, five-phase permanent magnet synchronous motors have been widely used in the industrial and transportation fields, and the existing sliding mode control methods for speed control systems can no longer meet the requirements such as fast response and good stability.Methods: In light of the aforementioned considerations, the study initially employs mathematical modeling to elucidate the five-phase permanent magnet synchronous motor. Secondly, on the basis of proportional-integral-derivative sliding mode control, radial basis function and Takagi-Sugeno-Kang fuzzy model are introduced for parameter identification and optimization and regulation. Finally, a new neural network regulation algorithm and speed control strategy are proposed.Results and Discussion: The experimental results demonstrated that the expected parameter optimization rate of the regulation algorithm can reach 90%, and the overshooting amount under small inertia working condition is only 3%, and the adjustment time is 0.02 s. The new control algorithm can be used to control the motor speed with the lowest speed fluctuation and the fastest recovery time. In addition, when affected by the load torque, the motor speed controlled by the new strategy fluctuated the least, with a speed drop of only 1% and the fastest recovery time of 0.02 s. It exhibited the lowest control error of 3.7% and the lowest overshooting amount of 5.9%.Conclusion: In summary, the suggested approach has the potential to significantly enhance the speed control system’s control performance while maintaining strong resilience and anti-interference capabilities. The method has certain guiding significance for the practical application of five-phase permanent magnet synchronous motor speed control system.
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来源期刊
Frontiers in Mechanical Engineering
Frontiers in Mechanical Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
4.40
自引率
0.00%
发文量
115
审稿时长
14 weeks
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