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Introducing MultiScale technique with CACM-RL

机译:用CaCM-RL介绍多尺度技术

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摘要

Control Adjoining Cell Mapping and Reinforcement Learning (CACM-RL) is a promising technique used to implement controllers. However, it needs many resources so that it can be only applied to simple problems. The contribution of this work is to describe MultiScale approach in order to be used together with CACM-RL technique to overcome its limitations. The main challenge is to verify and validate its efficiency in real-time and in resource-limited systems. MultiScale approach is truly useful when different levels of resolution are needed in the state space, regardless of the number of dimensions. In this way, a set of different regions inside the state space where each region has a specific optimal policy (also different resolutions) is defined. The results described in this article show the feasibility to run MultiScale in real time and find the minimum number of policies to solve the optimal control problem in an automatic way. In the considered test cases, a significant reduction in the total number of cells used is achieved when using MultiScale.
机译:控制邻接电池映射和增强学习(CACM-RL)是一种用于实施控制器的有希望的技术。但是,它需要许多资源,以便它只能应用于简单的问题。这项工作的贡献是描述多尺度方法,以便与CACM-RL技术一起使用以克服其限制。主要挑战是验证和验证其实时和资源限制系统的效率。当在状态空间中需要不同级别的分辨率时,多尺度方法是真正有用的,无论尺寸的数量如何。以这种方式,定义了每个区域的状态空间内的一组不同区域,其中每个区域具有特定的最佳策略(也不同分辨率)。本文中描述的结果显示了实时运行多尺度的可行性,并以自动方式查找最低策略数量以解决最佳控制问题。在考虑的测试病例中,使用MultiScale时实现了使用的细胞总数的显着降低。

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