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Anomaly Detection in Wireless Sensor Networks Data by Using Histogram Based Outlier Score Method

机译:基于直方图的离群值法在无线传感器网络数据中的异常检测

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Data anomaly detection in wireless sensor networks, which is one of the important technologies and study areas, is a method that enhances data quality and data reliability. Besides data enhancing methods such as estimating missing data, deduplication, noise removal; anomaly detection is important in terms of finding data patterns which are out of normal data. This stage influences next analysis and decision processes and plays an important role in determining events, faults or unexcepted but meaningful patterns. This study proposes the Histogram Based Outlier Score (HBOS) method to detect anomalies in data acquired by wireless sensor networks. In respect to anomaly detection methods used in this area, such as data classification, data clustering, statistical, distance based and support vector machines based approaches, histogram based algorithms are unsupervised and provide fast solutions.
机译:无线传感器网络中的数据异常检测是重要的技术和研究领域之一,是一种提高数据质量和数据可靠性的方法。除了数据增强方法外,例如估计丢失的数据,重复数据删除,噪声消除;就发现异常数据而言,异常检测非常重要。此阶段影响下一个分析和决策过程,并在确定事件,故障或无例外但有意义的模式中起重要作用。这项研究提出了一种基于直方图的离群值(HBOS)方法来检测无线传感器网络获取的数据中的异常。关于该领域中使用的异常检测方法,例如数据分类,数据聚类,统计,基于距离和基于支持向量机的方法,基于直方图的算法不受监督并提供快速解决方案。

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