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No-Regret Learning for Coalitional Model Predictive Control ?

机译:非遗憾学习联盟模型预测控制

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In this paper, we introduce a learning approach for the controller structure in coalitional model predictive control (MPC) schemes. In this context, the local control entities can dynamically perform in a decentralized manner or assemble into groups of controllers that coordinate their control actions, i.e.,coalitions.Such control strategy aims at maximizing system performance while reducing the coordination and computation burden. In this paper, we pose a multi-armed bandit problem where thearmsare a set of possible controller structures and theplayerperforms as a supervisory layer that can periodically change the composition of the coalitions. The goal is to use real-time observations to progressively learn the controller structure that best suits the needs of the system. A heuristic learning algorithm and illustrative results are provided.
机译:在本文中,我们介绍了联盟模型预测控制(MPC)方案中的控制器结构的学习方法。在这种情况下,本地控制实体可以以分散的方式动态地执行或组装成一组控制器,该控制器组协调其控制动作,即联盟控制策略旨在最大限度地提高系统性能,同时降低协调和计算负担。在本文中,我们造成了多武装的强盗问题,其中一组可能的控制器结构和作为监控层的PlayerErperforms,可以定期改变联盟的组成。目标是使用实时观察来逐步学习最适合系统需求的控制器结构。提供了一种启发式学习算法和说明性结果。

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