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Chaotic Newton-Raphson Optimization Based Predictive Control for Permanent Magnet Synchronous Motor Systems with Long-Delay

机译:基于混沌Newton-Raphson优化的长时滞永磁同步电动机预测控制

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A Tent-map chaotic Newton-Raphson optimization based neural network predictive control (TCNR-NPC) is developed to apply to the long-delay permanent magnet synchronous motor (PMSM) system in this paper. Due to a nonlinear model utilized in the predictive controller, nonlinear optimization methods turn into an important issue. To overcome the shortcoming of the conventional nonlinear programming on the initial condition sensitivity and maintain the accuracy of optimal solution, chaos optimization algorithm (COA) and Newton-Raphson (NR) are combined. With the comparison of COA and NR based optimization methods, our approach, the Tent-map chaotic Newton-Raphson (TCNR) optimization, is easier to reach the global optimum, thus, it would be employed in neural network predictive control. It is found that TCNR-NPC has a better performance than those of GPC, modified GPC, adaptive extended PSO based NPC, and PSO based PI controllers in real experiments.
机译:基于帐篷地图混沌Newton-Raphson优化基于神经网络预测控制(TCNR-NPC)是开发的,以应用于本文的长延迟永磁同步电动机(PMSM)系统。由于在预测控制器中使用的非线性模型,非线性优化方法变成了一个重要问题。为了克服常规非线性编程对初始条件敏感性的缺点,并保持最佳解决方案的准确性,组合混沌优化算法(COA)和Newton-Raphson(NR)。随着COA和NR基于NR的优化方法的比较,我们的方法,帐篷地图混沌牛顿-Raphson(TCNR)优化更容易达到全球最佳,因此,它将采用神经网络预测控制。结果发现,TCNR-NPC具有比GPC,修改的GPC,自适应扩展PSO的基于GPC的性能更好,基于PI控制器在真实实验中。

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