无线传感器网络增量学习的在线融合

H. H. W. J. Bosman, Giovanni Iacca, H. Wörtche, A. Liotta
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引用次数: 13

摘要

越来越普遍的嵌入式系统为我们提供了大量的数据。在数据源附近执行分析可以减少数据,同时在发生意外行为(即观察到的系统中的异常)时提供信息。这项工作提出了一种新的在线异常检测方法,该方法基于可在分布式嵌入式系统上执行的分类器集成。我们考虑了基于预测误差的单维和多维输入分类器。单维时间序列输入的预测来自线性函数模型或数据窗口上的一般统计。多维输入源于当前和历史传感器值以及预测。我们使用启发式方法和Fisher组合概率检验来组合集成中的分类器输出。使用合成数据和实际数据对所提出的框架进行了彻底的测试。结果与已知的在有限资源系统上的异常检测方法进行了比较。虽然单个分类器的性能与已知方法相当,但我们的结果表明,使用分类器的集合大大增加了异常的整体检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Fusion of Incremental Learning for Wireless Sensor Networks
Ever-more ubiquitous embedded systems provide us with large amounts of data. Performing analysis close to the data source allows for data reduction while giving information when unexpected behavior (i.e. Anomalies in the system under observation) occurs. This work presents a novel approach to online anomaly detection, based on an ensemble of classifiers that can be executed on distributed embedded systems. We consider both single and multi-dimensional input classifiers that are based on prediction errors. Predictions of single-dimensional time series input come from either a linear function model or general statistics over a data window. Multi-dimensional input stems from current and historical sensor values as well as predictions. We combine the classifier outputs in the ensemble using a heuristic method and Fisher's combined probability test. The proposed framework is tested thoroughly using synthetic and real-world data. The results are compared to known methods for anomaly detection on limited-resource systems. While individual classifiers perform comparably to known methods, our results show that using an ensemble of classifiers increases the overall detection of anomalies considerably.
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