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Evaluation method of module granularity partition for intelligent service robot based on D-S evidence theory

机译:基于D-S证据理论的智能服务机器人模块粒度分区评估方法

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The granularity partition for functional modules is a fundamental research topic in robot distributed control technology. How to evaluate the module partition scheme with different granularity, and then obtain the optimum scheme is the urgent problem. In this paper, we proposed a novel evaluation strategy for the granularity partition of functional modules in robotic system using RTM as control platform based on D-S evidence theory. The fuzzy clustering algorithm is primarily used to get the collection of granularity partition schemes for RT Components encapsulated by the platform of OpenRTM. As the two source of evidence, the indices of cohesion and coupling for the robotic system are achieved to measure the degree of module independence by analyzing the correlation matrix of RT Components. Then the Dempster's combination rule and the priority method for utility intervals are applied to obtain the optimal partition granularity. In the end, the effectiveness and progressiveness of the novel evaluation strategy are verified by applying it to the robotic 3D mapping system.
机译:功能模块的粒度划分是机器人分布式控制技术的基础研究课题。如何评估不同粒度的模块划分方案,然后获得最优方案是当务之急。本文基于D-S证据理论,提出了一种以RTM为控制平台的机器人系统功能模块粒度划分的新评估策略。模糊聚类算法主要用于获取OpenRTM平台封装的RT组件的粒度划分方案的集合。作为两个证据来源,通过分析RT组件的相关矩阵,获得了机器人系统的内聚力和耦合指数,以测量模块的独立程度。然后应用Dempster的组合规则和效用间隔的优先级方法来获得最佳分区粒度。最后,通过将其应用于机器人3D映射系统,验证了该新颖评估策略的有效性和先进性。

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