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An Improved Lexicographic MO-MPC Based on Linear Decomposition

机译:基于线性分解的改进的词典MO-MPC

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A computational efficient multiobjective model predictive control (MO-MPC) scheme with prioritized objectives is proposed for linear time-invariant system with state and input constraints. The terminal states are decomposed into several auxiliary decision variables and then the traditional terminal control law is parameterized by using the several corresponding controller gains. According to the priorities of multiple objectives, the MO-MPC problem is reformulated as a multi-layer single objective one. Moreover, by establishing the conditions on the most important objective, the recursive feasibility and asymptotic stability properties of the designed MO-MPC are proved by the method of the triplet of the terminal constraints, terminal penalty functions and local state feedback laws. Finally, the advantages of the new MO-MPC are illustrated by a numerical example in terms of the enlargement of terminal set and the low computation loads.
机译:提出了具有优先级目标的计算有效的多目标模型预测控制(MO-MPC)方案,用于具有状态和输入约束的线性时间不变系统。终端状态被分解成几个辅助判决变量,然后通过使用几个相应的控制器增益来参数传统的终端控制法。根据多目标的优先级,Mo-MPC问题被重新重新重新重整为多层单个目标。此外,通过建立最重要的目标的条件,通过终端约束的三联体的方法,终端惩罚函数和地方反馈法律的方法证明了设计的MO-MPC的递归可行性和渐近稳定性。最后,在终端组的放大和低计算负载的扩大方面示出了新MO-MPC的优点。

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