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Spectrum Enforcement and Localization Using Autonomous Agents With Cardinality

机译:使用具有基数的自治代理进行频谱执行和本地化

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The distributed nature of policy violations in spectrum sharing necessitate the use of mobile autonomous agents (e.g., UAVs, self-driving cars, and crowdsourcing) to implement cost-effective enforcement systems. We define this problem as multiagent planning with cardinality (MPC), where cardinality represents multiple, unique agents visiting each infraction location to collectively improve the accuracy of the enforcement tasks. Designed as a practical and deployable system, our solution leverages crowdsourced information to determine the optimum cardinality and provide a routing schedule for the agents to achieve the desired level of accuracy of detection and localization at minimum possible cost. We show that by estimating spatial orientation of the agents with single antenna, the accuracy is improved by 96% over crowdsourcing only. Using geographical maps as the basis, we solve the scheduling problem with a 3-approximation ratio in polynomial time that exhibits statistically similar performance under variety of urban locale across multiple continents. The longest path traversed by an agent on average is 1.2 km per unit diagonal length of a rectangular geographic area, even when there are twice as many infractions as agents. Deploying UAVs to the estimated region of infraction improves localization accuracy by ≈70% compared to ground vehicles.
机译:频谱共享中违反政策的分布式性质需要使用移动自主代理(例如,无人机,无人驾驶汽车和众包)来实施具有成本效益的执法系统。我们将此问题定义为具有基数(MPC)的多主体规划,其中基数表示访问每个违规位置的多个唯一代理,以共同提高执行任务的准确性。设计为实用且可部署的系统,我们的解决方案利用众包信息来确定最佳基数,并为代理提供路由安排,以最低的可能成本实现所需的检测和定位准确度。我们显示,通过使用单个天线估计代理的空间方向,与仅众包相比,准确性提高了96%。以地理地图为基础,我们以多项式时间中的3逼近比解决了调度问题,该调度问题在多大洲的各种城市环境下均表现出统计上相似的性能。代理商遍历的最长路径平均为矩形地理区域每单位对角线长度1.2 km,即使违规次数是代理商的两倍。与地面车辆相比,将UAV部署到估计的违规区域可使定位精度提高约70%。

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