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Mote-Based Online Anomaly Detection Using Echo State Networks

机译:基于回声状态网络的基于微粒的在线异常检测

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摘要

Sensor networks deployed for scientific data acquisition must inspect measurements for faults and events of interest. Doing so is crucial to ensure the relevance and correctness of the collected data. In this work we unify fault and event detection under a general anomaly detection framework. We use machine learning techniques to classify measurements that resemble a training set as normal and measurements that significantly deviate from that set as anomalies. Furthermore, we aim at an anomaly detection framework that can be implemented on motes, thereby allowing them to continue collecting scientifically-relevant data even in the absence of network connectivity. The general consensus thus far has been that learning-based techniques are too resource intensive to be implemented on mote-class devices. In this paper, we challenge this belief. We implement an anomaly detection algorithm using Echo State Networks (ESN), a family of sparse neural networks, on a mote-class device and show that its accuracy is comparable to a PC-based implementation. Furthermore, we show that ESNs detect more faults and have fewer false positives than rule-based fault detection mechanisms. More importantly, while rule-based fault detection algorithms generate false negatives and misclassify events as faults, ESNs are general, correctly identifying a wide variety of anomalies.
机译:部署用于科学数据采集的传感器网络必须检查测量值是否存在感兴趣的故障和事件。这样做对于确保所收集数据的相关性和正确性至关重要。在这项工作中,我们统一了一般异常检测框架下的故障和事件检测。我们使用机器学习技术将类似于训练集的度量分类为正常,将与训练集显着偏离的度量分类为异常。此外,我们的目标是可以在节点上实现的异常检测框架,从而使它们即使在没有网络连接的情况下也可以继续收集与科学相关的数据。迄今为止,普遍共识是基于学习的技术过于资源密集,无法在微粒级设备上实现。在本文中,我们挑战了这一信念。我们在微型设备上使用稀疏神经网络家族Echo State Networks(ESN)实现了异常检测算法,并证明了其准确性可与基于PC的实现相媲美。此外,我们显示,与基于规则的故障检测机制相比,ESN可以检测到更多的故障并且具有更少的误报。更重要的是,尽管基于规则的故障检测算法会产生假阴性并将事件错误分类为故障,但ESN却很普遍,可以正确识别各种异常情况。

著录项

  • 来源
    《 》|2009年|P.72-86|共15页
  • 会议地点 Marina del Rey CA(US);Marina del Rey CA(US)
  • 作者单位

    Dept. of Computer Science, University of Copenhagen, Copenhagen, Denmark;

    Dept. of Computer Science, Johns Hopkins University, Baltimore MD, USA;

    rnDept. of Computer Science, University of Copenhagen, Copenhagen, Denmark;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP212;
  • 关键词

    anomaly detection; real-time; wireless sensor networks;

    机译:异常检测;即时的;无线传感器网络;

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