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Adaptive Information Collection by Robotic Sensor Networks for Spatial Estimation

机译:机器人传感器网络的空间信息自适应估计

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This work deals with trajectory optimization for a robotic sensor network sampling a spatio-temporal random field. We examine the optimal sampling problem of minimizing the maximum predictive variance of the estimator over the space of network trajectories. This is a high-dimensional, multi-modal, nonsmooth optimization problem, known to be NP-hard even for static fields and discrete design spaces. Under an asymptotic regime of near-independence between distinct sample locations, we show that the solutions to a novel generalized disk-covering problem are solutions to the optimal sampling problem. This result effectively transforms the search for the optimal trajectories into a geometric optimization problem. Constrained versions of the latter are also of interest as they can accommodate trajectories that satisfy a maximum velocity restriction on the robots. We characterize the solution for the unconstrained and constrained versions of the geometric optimization problem as generalized multicircumcenter trajectories, and provide algorithms which enable the network to find them in a distributed fashion. Several simulations illustrate our results.
机译:这项工作涉及对时空随机场进行采样的机器人传感器网络的轨迹优化。我们研究了在网络轨迹空间上最小化估计器的最大预测方差的最佳采样问题。这是一个高维,多模式,不平滑的优化问题,即使对于静态字段和离散的设计空间,也很难解决NP问题。在不同样本位置之间具有近似独立性的渐近状态下,我们表明,新颖的广义磁盘覆盖问题的解决方案是最优抽样问题的解决方案。该结果有效地将对最佳轨迹的搜索转换为几何优化问题。后者的约束版本也很有趣,因为它们可以适应满足机器人最大速度限制的轨迹。我们将几何优化问题的无约束和受约束版本的解决方案特征化为广义多中心轨迹,并提供使网络能够以分布式方式找到它们的算法。几种模拟说明了我们的结果。

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