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Low-Power Distributed Data Flow Anomaly-Monitoring Technology for Industrial Internet of Things

机译:工业物联网的低功耗分布式数据流异常监控技术

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摘要

In recent years, the industrial use of the internet of things (IoT) has been constantly growing and is now widespread. Wireless sensor networks (WSNs) are a fundamental technology that has enabled such prevalent adoption of IoT in industry. WSNs can connect IoT sensors and monitor the working conditions of such sensors and of the overall environment, as well as detect unexpected system events in a timely and accurate manner. Monitoring large amounts of unstructured data generated by IoT devices and collected by the big-data analytics systems is a challenging task. Furthermore, detecting anomalies within the vast amount of data collected in real time by a centralized monitoring system is an even bigger challenge. In the context of the industrial use of the IoT, solutions for monitoring anomalies in distributed data flow need to be explored. In this paper, a low-power distributed data flow anomaly-monitoring model (LP-DDAM) is proposed to mitigate the communication overhead problem. As the data flow monitoring system is only interested in anomalies, which are rare, and the relationship among objects in terms of the size of their attribute values remains stable within any specific period of time, LP-DDAM integrates multiple objects as a complete set for processing, makes full use of the relationship among the objects, selects only one “representative” object for continuous monitoring, establishes certain constraints to ensure correctness, and reduces communication overheads by maintaining the overheads of constraints in exchange for a reduction in the number of monitored objects. Experiments on real data sets show that LP-DDAM can reduce communication overheads by approximately 70% when compared to an equivalent method that continuously monitors all objects under the same conditions.
机译:近年来,物联网(IoT)的工业用途一直在不断增长,现在已经广泛使用。无线传感器网络(WSN)是一项基本技术,已使IoT在工业中得到如此广泛的采用。 WSN可以连接IoT传感器并监视此类传感器以及整个环境的工作状况,以及及时准确地检测出意外的系统事件。监视由IoT设备生成并由大数据分析系统收集的大量非结构化数据是一项艰巨的任务。此外,通过集中监控系统实时检测大量数据中的异常是一个更大的挑战。在物联网的工业用途的背景下,需要探索用于监视分布式数据流异常的解决方案。本文提出了一种低功耗的分布式数据流异常监控模型(LP-DDAM)来缓解通信开销问题。由于数据流监视系统仅对异常情况感兴趣,这种情况很少见,并且对象之间的属性值大小关系在任何特定时间段内都保持稳定,因此LP-DDAM将多个对象集成为一个完整的处理,充分利用对象之间的关系,仅选择一个“代表”对象进行连续监视,建立一定的约束条件以确保正确性,并通过保持约束条件的开销来减少通信开销,以换取减少的监视数量对象。在真实数据集上进行的实验表明,与在相同条件下连续监视所有对象的等效方法相比,LP-DDAM可以将通信开销减少大约70%。

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