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Nonlinear model predictive control using multi-model approach based on Fractal Dimension Measurement

机译:基于分形维数的多模型非线性模型预测控制

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A nonlinear discrete time system can be locally linearized and represented by a multi-model structure, and model's switching operation will affect system's performances. A novel switching strategy is proposed to make the multi-model system satisfy the given performances, namely, Fractal Dimension Measurement (shortened as FDM) of Euclid Norms between working points and the equilibrium point acts as a criterion for switching. A model predictive control strategy based on Laguerre functions is designed to make each linear system optimize for a given cost function. The simulation results are presented to validate the method.
机译:非线性离散时间系统可以局部线性化并由多模型结构表示,并且模型的切换操作将影响系统的性能。提出了一种新颖的切换策略,以使多模型系统满足给定的性能,即工作点与平衡点之间的欧几里得范数的分形维数测量(简称FDM)充当切换标准。设计了基于Laguerre函数的模型预测控制策略,以使每个线性系统针对给定的成本函数进行优化。仿真结果表明了该方法的有效性。

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