QoS-Aware Data Management Mechanisms for Optimal Resource Utilisation in Crowd-Assisted Shared Sensor Networks

Simone Bolettieri, R. Bruno
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引用次数: 1

Abstract

In this study, we focus on the problem of managing a hybrid, shared IoT-based monitoring system, in which stationary sensor devices are complemented with user-carried personal devices embedded with sensing capabilities. The envisioned crowd-assisted monitoring system must support the sharing of the sensing infrastructure among multiple concurrent sensing tasks that can have highly varying QoS requirements. In such a scenario, a key issue is to maximise the utilisation efficiency of the physical sensing resources and the QoS satisfaction of sensing tasks while limiting the redundancy of collected data. As in previous research, we advocate the use of an IoT Broker, an intermediary entity that (i) interacts with the IoT applications to collect their QoS requirements (i.e., spatial coverage, data notification frequency); and (ii) coordinates with the redundant sensor deployments and mobile devices to selectively activate and configure the data streams that are needed to fulfil application requirements in a cost-efficient way. Then, we have developed an optimisation framework to jointly select the set of physical sensing resources to activate and the data update frequency for maximising the overall sensing performance while limiting redundant data. A key feature of our proposed framework is to be privacy-friendly as it only requires coarse-grained space-time knowledge of device location. Extensive simulations under realistic WSN deployments and real-life mobility patterns confirm the efficiency of the proposed solution in terms of data-coverage gain and reduction of data redundancy with respect to classical non-hybrid monitoring systems.
群体辅助共享传感器网络中资源优化的qos感知数据管理机制
在本研究中,我们重点关注管理一个混合的、共享的基于物联网的监控系统的问题,在这个系统中,固定的传感器设备与用户携带的嵌入了传感功能的个人设备相辅相成。设想的人群辅助监控系统必须支持多个并发感知任务之间的感知基础设施共享,这些任务可能具有高度不同的QoS需求。在这种情况下,关键问题是在限制收集数据冗余的同时,最大限度地提高物理感知资源的利用效率和感知任务的QoS满意度。正如在之前的研究中,我们提倡使用物联网代理,这是一个中介实体,它(i)与物联网应用程序交互以收集其QoS要求(即空间覆盖,数据通知频率);(ii)协调冗余传感器部署和移动设备,以经济高效的方式选择性地激活和配置所需的数据流,以满足应用需求。然后,我们开发了一个优化框架,共同选择要激活的物理传感资源集和数据更新频率,以最大限度地提高整体传感性能,同时限制冗余数据。我们提出的框架的一个关键特征是隐私友好,因为它只需要设备位置的粗粒度时空知识。在真实的WSN部署和现实生活中的移动模式下进行的大量模拟证实了所提出的解决方案在数据覆盖增益和减少数据冗余方面的有效性,相对于传统的非混合监测系统。
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