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Top-Down vs. Bottom-Up Model-Based Methodologies for Distributed Control: A Comparative Experimental Study

机译:自上而下与自下而上的基于模型的分布式控制方法:比较实验研究

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Model-based synthesis of distributed controllers for multi-robot systems is commonly approached in either a top-down or bottom-up fashion. In this paper, we investigate the experimental challenges of both approaches, with a special emphasis on resource-constrained miniature robots. We make our comparison through a case study in which a group of 2-cm-sized mobile robots screen the environment for undesirable features, and destroy or neutralize them. First, we solve this problem using a top-down approach that relies on a graph-based representation of the system, allowing for direct optimization using numerical techniques (e.g., linear and non-linear convex optimization) under very unrealistic assumptions (e.g., infinite number of robots, perfect localization, global communication, etc.). We show how one can relax these assumptions in the context of resource-constrained robots, and explain the resulting impact on system performance. Second, we solve the same problem using a bottom-up approach, i.e., we build up computationally efficient and accurate models at multiple abstraction levels, and use them to optimize the robots' controller using evolutionary algorithms. Finally, we outline the differences between the top-down and bottom-up approaches, and experimentally compare their performance.
机译:基于模型的多机器人系统的分布式控制器的合成通常以自上而下或自下而上的方式接近。在本文中,我们调查了两种方法的实验挑战,特别强调资源受限的微型机器人。我们通过案例研究进行了比较,其中一组2厘米大小的移动机器人筛网为不良特征的环境,并破坏或中和它们。首先,我们使用依赖于系统的基于图形的基于图形的自上而下的方法来解决这个问题,允许在非常不切实际的假设下使用数值技术(例如,线性和非线性凸优化)直接优化(例如,无限的机器人数量,完善的本地化,全局通信等)。我们展示了如何在资源受限机器人的上下文中放宽这些假设,并解释导致对系统性能的影响。其次,我们使用自下而上的方法解决了同样的问题,即,我们以多种抽象级别建立计算上高效和准确的模型,并使用它们使用进化算法优化机器人控制器。最后,我们概述了自上而下和自下而上的方法之间的差异,并通过实验比较了他们的性能。

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