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Optimal sensor scheduling for resource-constrained localization of mobile robot formations

机译:资源受限的移动机器人编队最优传感器调度

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This paper addresses the problem of resource allocation in formations of mobile robots localizing as a group. Each robot receives measurements from various sensors that provide relative (robot-to-robot) and absolute positioning information. Constraints on the sensors' bandwidth, as well as communication and processing requirements, limit the number of measurements that are available or can be processed at each time step. The localization uncertainty of the group, determined by the covariance matrix of the equivalent continuous-time system at steady state, is expressed as a function of the sensor measurements' frequencies. The trace of the weighted covariance matrix is selected as the optimization criterion, under linear constraints on the measuring frequency of each sensor and the cumulative rate of the extended Kalman filter updates. This formulation leads to a convex optimization problem (semidefinite program) whose solution provides the sensing frequencies, for each sensor on every robot, required in order to maximize the positioning accuracy of the group. Simulation and experimental results are presented that demonstrate the applicability of this method and provide insight into the properties of the resource-constrained cooperative localization problem.
机译:本文解决了以本地化为一组的移动机器人编队中的资源分配问题。每个机器人都从各种传感器接收测量值,这些传感器提供相对(机器人到机器人)和绝对定位信息。传感器带宽以及通信和处理要求的限制限制了每个时间步可用或可以处理的测量数量。该组的定位不确定性由稳态下等效连续时间系统的协方差矩阵确定,表示为传感器测量频率的函数。在每个传感器的测量频率和扩展卡尔曼滤波器更新的累积速率受到线性约束的情况下,选择加权协方差矩阵的迹线作为优化准则。这种表述导致了凸优化问题(半定程序),其解决方案为每个机器人上的每个传感器提供了所需的感测频率,以最大化组的定位精度。仿真和实验结果表明,该方法的适用性并为资源受限的协作定位问题的性质提供了见识。

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