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Low-complexity first-order constraint linearization methods for efficient nonlinear MPC

机译:有效非线性MPC的低复杂度一阶约束线性化方法

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In this paper, we analyze first-order methods to find a KKT point of the nonlinear optimization problems arising in Model Predictive Control (MPC). The methods are based on a projected gradient and constraint linearization approach, that is, every iteration is a gradient step, projected onto a linearization of the constraints around the current iterate. We introduce an approach that uses a simple ℓpmerit function, which has the computational advantage of not requiring any estimate of the dual variables and keeping the penalty parameter bounded. We then prove global convergence of the proposed method to a KKT point of the nonlinear problem. The first-order methods can be readily implemented in practice via the novel tool FalcOpt. The performance is then illustrated on numerical examples and compared with conventional methods.
机译:在本文中,我们分析了一阶方法以找到模型预测控制(MPC)中出现的非线性优化问题的KKT点。这些方法基于投影梯度和约束线性化方法,也就是说,每次迭代都是一个梯度步骤,投影到当前迭代周围约束的线性化上。我们介绍一种使用简单ℓ的方法 p 优点函数,其计算优势是不需要对偶变量进行任何估计,并且使惩罚参数保持有界。然后,我们证明了所提方法对非线性问题的KKT点的全局收敛性。通过新颖的工具FalcOpt可以很容易地在实践中实现一阶方法。然后在数值示例中说明了性能,并与常规方法进行了比较。

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