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Location-Aware Worker Selection for Mobile Opportunistic Crowdsensing in VANETs

机译:VANET中用于移动机会性人群感知的位置感知工作者选择

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Worker selection for location-based crowdsensing can be described as the strategy of choosing the proper cooperative participants to complete the allocated tasks in specified regions. Due to the mobility pattern of vehicles and regular road networks, the Vehicular Ad-hoc Networks (VANETs) are expected to provide many opportunities for task execution in opportunistic crowdsensing, enabling some emerging applications. To fulfill tasks with the least execution time under the spatial-temporal restrictions, we propose a Location-Aware Worker Selection scheme (LAWS) for mobile opportunistic crowdsensing in urban areas. Different from the traditional worker selection schemes assigning a task to one designated worker, LAWS exploits the vehicles contacts provided by taxicabs and buses and makes full advantage of prior knowledge of vehicles to promote the performance of task execution. Real-world vehicle traces are introduced to construct the extensive simulations. The simulation results show that our scheme outperforms the well-known algorithms, e.g., Epidemic, Prophet, in terms of the task execution success ratio, the execution time and the network load.
机译:基于位置的人群感知的工人选择可以描述为选择合适的合作参与者以完成指定区域中分配的任务的策略。由于车辆和常规道路网络的移动性模式,车载自组织网络(VANET)有望在机会性人群感知中为任务执行提供许多机会,从而使一些新兴应用成为可能。为了在时空限制下以最少的执行时间完成任务,我们提出了一种位置感知的工人选择方案(LAWS),用于城市地区的移动机会式人群感知。与传统的工人选拔方案将任务分配给一个指定的工人不同,LAWS利用出租车和公共汽车提供的车辆联系方式,并充分利用车辆的先验知识来促进任务执行的性能。引入了真实的车辆轨迹以构建广泛的仿真。仿真结果表明,在任务执行成功率,执行时间和网络负载方面,我们的方案优于知名算法Epidemic,Prophet。

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