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A Semismooth Predictor Corrector Method for Real-Time Constrained Parametric Optimization with Applications in Model Predictive Control

机译:实时约束参数优化的半光滑预测器校正方法及其在模型预测控制中的应用

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Real-time optimization problems are ubiquitous in control and estimation, and are typically parameterized by incoming measurement data and/or operator commands. This paper proposes solving parameterized constrained nonlinear programs using a semismooth predictor-corrector (SSPC) method. Nonlinear complementarity functions are used to reformulate the first order necessary conditions of the optimization problem into a parameterized non-smooth root-finding problem. Starting from an approximate solution, a semismooth Euler-Newton algorithm is proposed for tracking the trajectory of the primal-dual solution as the parameter varies in time. Active set changes are naturally handled by the SSPC method, which only requires the solution of linear systems of equations. The paper establishes conditions under which the solution trajectories of the root-finding problem are well behaved and provides sufficient conditions for ensuring boundedness of the tracking error. Numerical case studies, featuring the application of the SSPC method to nonlinear model predictive control, are reported and demonstrate the advantages of the proposed method.
机译:实时优化问题在控制和估计中无处不在,并且通常由输入的测量数据和/或操作员命令进行参数化。本文提出了一种使用半平滑预测器-校正器(SSPC)方法求解参数化约束非线性程序的方法。非线性互补函数用于将优化问题的一阶必要条件重新表述为参数化的非平滑根查找问题。从一个近似解开始,提出了一种半光滑的Euler-Newton算法,用于跟踪随参数变化的原始对偶解的轨迹。主动集更改自然由SSPC方法处理,该方法仅需要求解线性方程组。该文确定了寻根问题的求解轨迹表现良好的条件,并为确保跟踪误差的有界性提供了充分的条件。数值案例研究以SSPC方法在非线性模型预测控制中的应用为特色,并进行了报道,并证明了该方法的优点。

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