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Optimal preconditioning and iteration complexity bounds for gradient-based optimization in model predictive control

机译:用于模型预测控制中基于梯度的优化的最佳预处理和迭代复杂度界限

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In this paper, optimization problems arising in model predictive control (MPC) and in distributed MPC are solved by applying a fast gradient method to the dual of the MPC optimization problem. Although the development of fast gradient methods has improved the convergence rate of gradient-based methods considerably, they are still sensitive to ill-conditioning of the problem data. Since similar optimization problems are solved several times in the MPC controller, the optimization data can be preconditioned offline to improve the convergence rate of the fast gradient method online. A natural approach to precondition the dual problem is to minimize the condition number of the Hessian matrix. However, in MPC the Hessian matrix usually becomes positive semi-definite only, i.e., the condition number is infinite and cannot be minimized. In this paper, we show how to optimally precondition the optimization data by solving a semidefinite program, where optimally refers to the preconditioning that minimizes an explicit iteration complexity bound. Although the iteration bounds can be crude, numerical examples show that the preconditioning can significantly reduce the number of iterations needed to achieve a prespecified accuracy of the solution.
机译:本文通过对MPC优化问题的对偶应用快速梯度法来解决模型预测控制(MPC)和分布式MPC中出现的优化问题。尽管快速梯度方法的发展已大大提高了基于梯度的方法的收敛速度,但它们仍然对问题数据的不良状态敏感。由于在MPC控制器中多次解决了类似的优化问题,因此可以离线预处理优化数据,以提高在线快速梯度方法的收敛速度。预处理对偶问题的自然方法是最小化Hessian矩阵的条件数。但是,在MPC中,Hessian矩阵通常仅变为正半定的,即条件数是无限的并且不能被最小化。在本文中,我们展示了如何通过求解半定程序来优化预处理优化数据,其中,优化处理是指将显式迭代复杂度范围最小化的预处理。尽管迭代边界可能很粗糙,但数值示例表明,预处理可以显着减少实现预定精度的解决方案所需的迭代次数。

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