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RFLS - Resilient Fault-proof Localization System in IoT and Crowd-based Sensing Applications

机译:RFL - 基于人群的传感应用中的RFL - 弹性故障定位系统

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In this paper, we consider the problem of event localization in the presence of anomalous nodes, in Internet of Things (IoT) and Mobile Crowd Sensing (MCS) systems. A sensing node could be anomalous due to faultiness in any of its components, or due to maliciousness, where it may forge and inject false readings. In both cases, anomalous nodes can significantly alter the task quality and outcome, which may lead to catastrophic consequences, especially in sensitive applications. The current localization systems are not designed to account for the probability of having anomalous readings, hence subjecting them to high errors. Additionally, current anomaly detection systems are not well suited for localization tasks because they are neither dynamic nor continuous, and they do not account for the radial-spreading patterns of data in localization tasks. To overcome these challenges, a Resilient Fault-proof Localization System (RFLS) is proposed, which a) includes an anomaly detection process designed specifically for localization tasks using means of data-based clustering and centroiding, b) dynamically integrates greedy- and genetic-based active nodes selection, Bayesian-based data fusion, and anomaly detection processes in one full localization system, and c) assesses and updates the nodes' reputations to ensure better performance in future tasks. The efficacy of the proposed system is validated by running experiments for single and sequential localization tasks, for varying conditions, and by using a real-life dataset of the vehicular mobility traces in the city of Cologne, Germany. The results demonstrate that anomalous nodes are efficiently detected, eliminated, and penalized, which in turn greatly improves the accuracy of the localization tasks.
机译:在本文中,我们认为在存在异常节点的情况下,在物联网(物联网)和移动人群传感(MCS)系统中,考虑事件定位问题。由于其任何组件中的故障,或由于恶意,感测节点可能是异常的,在那里它可能会伪造和注入错误读数。在这两种情况下,异常节点可以显着改变任务质量和结果,这可能导致灾难性后果,特别是在敏感的应用中。目前的本地化系统不设计用于考虑具有异常读数的概率,因此使它们进行高误差。此外,当前的异常检测系统不适合本地化任务,因为它们既不是动态也不连续,并且他们不考虑定位任务中的数据的径向扩展模式。为了克服这些挑战,提出了一种弹性的断层定位系统(RFL),该系统包括使用基于数据的群集和CentRoInding的方法专门用于本地化任务的异常检测过程,B)动态整合贪婪和遗传 - 基于主动节点选择,基于贝叶斯的数据融合和一个完整的本地化系统中的异常检测过程,以及C)评估和更新节点的声誉,以确保更好的未来任务性能。通过运行单一和顺​​序定位任务的实验,验证所提出的系统的功效,以进行不同的条件,并通过使用德国科隆市的车辆移动迹线的现实生活数据集。结果表明,经过有效地检测,消除和惩罚异常节点,这又大大提高了本地化任务的准确性。

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