用函数逼近法合成简单显式MPC优化器

Juraj Holaza, B. Takács, M. Kvasnica
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引用次数: 6

摘要

显式模型预测控制(MPC)是一种有吸引力的控制策略,特别是当人们的目标是快速,计算量较少的MPC实现时。然而,阻碍显式MPC控制器成功应用的主要障碍在于内存占用的增加。在内存存储量有限的控制硬件中实现MPC时,这是该方法的主要限制。因此,在本文中,我们建议获得占用较少内存的显式MPC解决方案的更简单的表示。我们建议通过构建显式MPC优化器的更简单(尽管不是最优)表示来实现这一目标。这项任务是通过首先将一个更简单的显式优化器合成为一个分段仿射函数来完成的,该函数将状态测量映射到预测的控制输入序列。随后,对该函数的参数进行细化,以获得更好的性能。我们证明了这种函数近似问题总是可行的。通过实例验证了该方法的有效性。
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Synthesis of simple explicit MPC optimizers by function approximation
Explicit Model Predictive Control (MPC) is an attractive control strategy, especially when one aims at a fast, computationally less demanding implementation of MPC. However the major obstacle that prevents a successful application of explicit MPC controllers lies in the increased memory occupancy. This is a major limitation of the approach when aiming at implementing MPC in control hardware that has restricted amount of memory storage. Therefore in this paper we propose to obtain a much more simpler representation of explicit MPC solutions that occupy less memory. We propose to achieve this goal by constructing a simpler, albeit suboptimal, representation of the explicit MPC optimizer. This task is accomplished by first synthesizing a simpler explicit optimizer as a piecewise affine function that maps state measurements onto the predicted sequence of control inputs. Subsequently, parameters of such a function are refined as to achieve better performance. We show that such a function approximation problem is always feasible. Efficacy of the proposed procedure is demonstrated on several examples.
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