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On-Line Tuning Scheme for the Generalized Predictive Controller via Simulation Optimization

机译:基于仿真优化的广义预测控制器在线调整方案

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摘要

Predictive control has recently received much attention from researchers. However a challenging problem to be solved is how to tune the parameters of the predictive controller. So far, only few guidelines related to tuning of the parameters of predictive controllers have been provided in literature. In practice, these parameters are generally off-line determined by the designers' experience. From the point of view of process control, it is difficult to find out the optimal parameters for the control system based on a single quadratic performance index, which is used in the standard predictive control algorithm. The fuzzy decision-making function is investigated in this paper. Firstly, M control actions are achieved by unconstrained predictive control algorithm, and fuzzy goals and fuzzy constraints are then calculated and the global satisfaction degree is obtained by fuzzy inference. Moreover, the weighting coefficient λ in the cost function is tuned using simulation optimization according to the fuzzy criteria.
机译:预测控制最近受到研究人员的广泛关注。然而,有待解决的挑战性问题是如何调整预测控制器的参数。迄今为止,文献中仅提供了与调整预测控制器参数有关的准则。实际上,这些参数通常由设计者的经验离线确定。从过程控制的角度来看,很难根据标准预测控制算法中使用的单个二次性能指标来找到控制系统的最佳参数。研究了模糊决策函数。首先,通过无约束预测控制算法实现M个控制动作,然后计算模糊目标和模糊约束,并通过模糊推理获得全局满意度。此外,根据模糊标准,使用仿真优化来调整成本函数中的加权系数λ。

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