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Dynamic Task Allocation for Robotic Network Cloud Systems

机译:机器人网络云系统动态任务分配

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Every robotic network cloud system can be seen as a graph with nodes as hardware with independent computational processing powers and edges as data transmissions between nodes. When assigning a task to a node we may change several values corresponding to the node such as distance to other nodes, the time to complete all of its tasks, the energy level of the node, energy consumed while performing all of its tasks, geometrical position, communication with other nodes, and so on. These values can be seen as fingerprints for the current state of the node which can be evaluated as a subspace of a hyperspace. We proposed a theoretical model describing how assigning tasks to a node will change the subspace of the hyperspace, and from that, we show how to obtain the optimal task allocation. We described the communication instability between nodes and the capability of nodes as subspaces of a hyperspace. We translate task scheduling to nodes as finding the maximum volume of the hyperspace.
机译:每个机器人网络云系统都可以被视为带有节点的图形,作为具有独立计算处理的硬件,以及作为节点之间的数据传输的特写源和边。 当向节点分配任务时,我们可以将与诸如与其他节点的距离的节点相对应的若干值,完成其所有任务的时间,节点的能量水平,在执行所有任务的同时消耗的能量,几何位置 ,与其他节点进行通信等。 这些值可以被视为可以评估为Hyperspace的子空间的节点的当前状态的指纹。 我们提出了一个理论模型,描述了对节点的分配任务是如何改变超空间的子空间,并从中展示如何获得最佳任务分配。 我们描述了节点之间的通信不稳定和节点的能力作为超空间的子空间。 我们将任务调度转换为节点作为查找超空间的最大卷。

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