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Investigation and analysis of iterative learning-based current control algorithm for switched reluctance motor applications

机译:基于迭代学习的开关磁阻电机应用电流控制算法研究与分析

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In this paper, a novel current tracking strategy for switched reluctance motor (SRM) is proposed, analyzed and verified. The relationship between pulse-width modulation (PWM) duty ratio and current variation in SRM over a cycle is investigated. The results demonstrate that an analytical resolution for calculating the duty ratio to achieve accurate current tracking is not possible because of the nonlinear inductance profile of SRM. Consequently, an iterative learning current control method is proposed, that can calculate the optimum duty ratio for tracking the reference current through periodical learning at different rotor positions in real-time. The learning gain for this proposed iterative learning-based current control algorithm is investigated and its upper limit is calculated by considering system convergence. In addition, an improved average current tracking strategy is presented in this paper. The numerical analysis performed in this paper clearly demonstrates the effectiveness of the proposed current control method for different speed and loading conditions.
机译:本文提出,分析和验证了一种新型的开关磁阻电机电流跟踪策略。研究了脉宽调制(PWM)占空比与SRM电流在一个周期内的变化之间的关系。结果表明,由于SRM的非线性电感分布,因此无法通过计算分辨率来计算占空比以实现精确的电流跟踪。因此,提出了一种迭代学习电流控制方法,该方法可以通过在不同转子位置实时进行周期性学习,计算出用于跟踪参考电流的最优占空比。研究了这种基于迭代学习的电流控制算法的学习增益,并通过考虑系统收敛来计算其上限。此外,本文提出了一种改进的平均电流跟踪策略。本文进行的数值分析清楚地证明了所提出的电流控制方法在不同速度和负载条件下的有效性。

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