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Comprehensive tempo-spatial data collection in crowd sensing using a heterogeneous sensing vehicle selection method

机译:使用异质感测车辆选择方法的人群感测中的综合时空数据收集

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The wide distribution of mobile vehicles installed with various sensing devices and wireless communication interfaces has made vehicular mobile crowd sensing possible in practice. However, owing to the heterogeneity of vehicles in terms of sensing interfaces and mobilities, collecting comprehensive tempo-spatial sensing data with only one sensing vehicle is impossible. Moreover, the sensing data collected may expire in the future; as a result, sensing vehicles may have to continuously collect sensing data to ensure the relevance of such data. Although including more sensing vehicles can improve the quality of collected sensing data, this step also requires additional cost. Thus, how to continuously collect comprehensive tempo-spatial sensing data with a limited number of heterogeneous sensing vehicles is a critical issue in vehicular mobile crowd sensing systems. In this work, a heterogeneous sensing vehicle selection (HVS) method for the collection of comprehensive tempo-spatial sensing data is proposed. On the basis of the spatial distribution and sensing interfaces of sensing vehicles and the tempo-spatial coverage of collected sensing data, a utility function is designed in HVS to estimate the sensing capacity of sensing vehicles. Then, according to the utilities of sensing vehicles and the restriction on the number of recruited sensing vehicles, sensing vehicle selection is modeled as a knapsack problem. Finally, a greedy optimal sensing vehicle selection algorithm is designed. Real trace-driven simulations show that the HVS algorithm can collect sensing data with a higher coverage ratio in a more uniform and continuous manner than existing mobile crowd sensing methods.
机译:装有各种传感设备和无线通信接口的移动车辆的广泛分布已使车辆移动人群传感在实践中成为可能。但是,由于车辆在传感接口和机动性方面的异质性,仅使用一辆传感车辆就无法收集全面的时空传感数据。而且,收集到的传感数据可能会在将来到期;结果,感测车辆可能必须连续收集感测数据以确保此类数据的相关性。尽管包括更多的传感车辆可以提高收集的传感数据的质量,但是此步骤还需要额外的成本。因此,如何利用有限数量的异类感测车辆连续收集综合的时空感测数据是车辆移动人群感测系统中的关键问题。在这项工作中,提出了一种用于收集综合时空传感数据的异构传感车辆选择(HVS)方法。基于传感车辆的空间分布和传感接口以及采集到的传感数据的时空覆盖范围,在HVS中设计了一个效用函数来估算传感车辆的传感能力。然后,根据感测车辆的用途和对招募的感测车辆的数量的限制,将感测车辆的选择建模为背包问题。最后,设计了一种贪婪的最优感知车辆选择算法。实际的跟踪驱动模拟显示,与现有的移动人群感应方法相比,HVS算法可以以更统一和连续的方式收集覆盖率更高的感应数据。

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