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A nonlinear model predictive control strategy based on dynamic fuzzy model using two-step optimization method

机译:基于动态模糊模型的两步优化方法的非线性模型预测控制策略

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The dynamic fuzzy model implements a set of local dynamic models, identified by the least square method, to approximate the dynamics of a nonlinear process. The nonlinear predictive controller consists of a multi-step predictor based on a dynamic fuzzy model, an output optimizer and a robust filter. The output is optimized by two steps, the descent-gradient method first, and then a linear optimization. The robust filter with one adjustable parameter can resist the model mis-match and improve the transient performance. The simulation of pH neutralization process is given to demonstrate the better performance of the proposed control scheme compared with a conventional DMC controller.
机译:动态模糊模型实现了一组用最小二乘法确定的局部动态模型,以近似非线性过程的动力学。非线性预测控制器由基于动态模糊模型的多步预测器,输出优化器和鲁棒滤波器组成。通过两个步骤对输出进行优化,首先是下降梯度法,然后是线性优化。具有一个可调参数的鲁棒滤波器可以抵抗模型失配并改善瞬态性能。给出了pH中和过程的仿真结果,以证明与传统DMC控制器相比,所提出的控制方案具有更好的性能。

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