Incentivizing Opportunistic Data Collection for Time-Sensitive IoT Applications

P. Kortoçi, Abbas Mehrabi, Carlee Joe-Wong, M. D. Francesco
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引用次数: 3

Abstract

Urban environments are the most prevalent application scenario for the Internet of Things (IoT). In this context, effective data collection and forwarding to a cloud (or edge) server are particularly important. This work leverages opportunistic data collection based on the mobile crowd sourcing (MCS) paradigm for time-sensitive IoT applications. Specifically, it introduces an incentive mechanism for the crowd to collect data that are valuable to data consumers in terms of regions of interest and time constraints. The proposed approach successfully incorporates the willingness of the crowd to participate in the data collection as part of the related incentives. It also ensures collection of valuable data via selective user incentivization. Accordingly, a weighted social welfare maximization problem is defined for users to decide which sensors to visit subject to deadline constraints. Following the NP-hardness of the problem, an online heuristic algorithm is proposed for sensors to dynamically incentivize mobile users with a low message and time complexity. The proposed solution is shown to be effective for time-sensitive quality data collection through extensive simulations on realistic mobility traces. It significantly increases the overall social welfare as well as the amount of collected data compared to other approaches.
激励对时间敏感的物联网应用的机会性数据收集
城市环境是物联网(IoT)最普遍的应用场景。在这种情况下,有效的数据收集和转发到云(或边缘)服务器尤为重要。这项工作利用基于移动人群外包(MCS)范例的机会性数据收集,用于时间敏感的物联网应用。具体来说,它引入了一种激励机制,鼓励人们在兴趣区域和时间限制方面收集对数据消费者有价值的数据。所提出的方法成功地将人群参与数据收集的意愿作为相关激励措施的一部分。它还通过选择性用户激励确保收集有价值的数据。据此,定义了一个加权的社会福利最大化问题,供用户在截止日期约束下决定访问哪些传感器。根据问题的np -硬度,提出了一种传感器在线启发式算法,以较低的消息复杂度和时间复杂度动态激励移动用户。通过对真实移动轨迹的大量仿真,证明了该方法对时间敏感的高质量数据采集是有效的。与其他方法相比,它显着增加了整体社会福利以及收集的数据量。
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