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Subsequent Convergence of Iterative Methods with Applications to Real-Time Model-Predictive Control

机译:迭代方法的后续收敛及其在实时模型预测控制中的应用

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摘要

In performing online model-predictive control of dynamical systems, it is necessary to solve a sequence of optimization problems (typically quadratic programs) in real time so as to generate the best trajectory. Since only a low fixed number of iterations can be executed in real time, it is not possible to solve each quadratic program to optimality. However, numerical experiments show that, if we use information from the numerical solution of the previous quadratic program to construct a warm start for the current quadratic program, there is a time step after which the usual stopping criteria will be satisfied within the fixed number of iterations for all subsequent optimization problems. This phenomenon is called subsequent convergence and will be analyzed for families of nonlinear equations. Computational results are presented to illustrate the theory and associated computational artifacts.
机译:在执行动力学系统的在线模型预测控制时,有必要实时解决一系列优化问题(通常是二次程序),以便生成最佳轨迹。由于只能实时执行少量固定的迭代,因此不可能将每个二次程序求解到最优。但是,数值实验表明,如果我们使用前一个二次程序的数值解中的信息来构建当前二次程序的热启动,则会有一个时间步长,在此之后,通常的停止标准将在固定的数量范围内得到满足。所有后续优化问题的迭代。这种现象称为后续收敛,并将针对非线性方程族进行分析。给出计算结果以说明理论和相关的计算伪像。

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