论文标题

重复任务的协作学习模型预测控制

Collaborative learning model predictive control for repetitive tasks

论文作者

Chanfreut, Paula, Maestre, José María, Camacho, Eduardo F., Borrelli, Francesco

论文摘要

本文提出了一个基于云的学习模型预测控制器,该模型集成了三个交互组件:一组代理,必须学会执行一组有限的任务,并以最低的本地成本;将任务分配给代理商的协调员;和云存储数据以促进代理商的学习。这些任务包括在一组目标状态之间反复旅行,同时满足输入和状态约束。反过来,每个可能任务的状态约束可能会随时间变化。为了处理它,定义了不同的操作模式,这些模式建立了不同的限制。通过求解局部模型预测控制(MPC)问题,在这些问题中可以找到代理的输入,这些问题是从先前的轨迹定义的终端集和成本。每个代理收集的数据都上传到云,并使所有同行都可以访问。同样,利用任务之间的相似性来加速学习过程。拟议方法的适用性通过仿真结果说明。

This paper presents a cloud-based learning model predictive controller that integrates three interacting components: a set of agents, which must learn to perform a finite set of tasks with the minimum possible local cost; a coordinator, which assigns the tasks to the agents; and the cloud, which stores data to facilitate the agents' learning. The tasks consist in traveling repeatedly between a set of target states while satisfying input and state constraints. In turn, the state constraints may change in time for each of the possible tasks. To deal with it, different modes of operation, which establish different restrictions, are defined. The agents' inputs are found by solving local model predictive control (MPC) problems where the terminal set and cost are defined from previous trajectories. The data collected by each agent is uploaded to the cloud and made accessible to all their peers. Likewise, similarity between tasks is exploited to accelerate the learning process. The applicability of the proposed approach is illustrated by simulation results.

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