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Proportional-Integral Projected Gradient Method for Model Predictive Control

机译:模型预测控制的比例积分预测梯度方法

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Recently there has been an increasing interest in primal-dual methods for model predictive control (MPC), which require minimizing the (augmented) Lagrangian at each iteration. We propose a novel first order primal-dual method, termed proportional-integral projected gradient method, for MPC where the underlying finite horizon optimal control problem has both state and input constraints. Instead of minimizing the (augmented) Lagrangian, each iteration of our method only computes a single projection onto the state and input constraint set. Our method ensures that, along a sequence of averaged iterates, both the distance to optimum and the constraint violation converge to zero at a rate of O(1/k) if the objective function is convex, where k is the iteration number. If the objective function is strongly convex, this rate can be improved to O(1/k2) for the distance to optimum and O(1/k3) for the constraint violation. We compare our method against existing methods via a trajectory-planning example with convexified keep-out-zone constraints.
机译:最近,对模型预测控制(MPC)的原始双向方法越来越兴趣,这需要在每次迭代时最小化(增强)拉格朗日。我们提出了一种新颖的一阶原语 - 双重方法,称为比例积分预定的梯度方法,用于MPC,其中底层有限的地平线最佳控制问题具有状态和输入约束。而不是最小化(增强)拉格朗日,我们的方法的每次迭代都仅计算到状态和输入约束集上的单个投影。我们的方法确保沿着平均迭代的序列,如果目标函数是凸的,则以o(1 / k)的速率将距离和约束违规会聚到零,其中k是迭代号。如果目标函数强烈凸起,则此速率可以提高到O(1 / K. 2 )对于最佳和O(1 / K. 3 )对于违规而言。我们通过使用凸面的延伸区域约束,通过轨迹规划示例进行比较我们对现有方法的方法。

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