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

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Date

2018

Authors

Ilker Kalayci
Tuncay Ercan

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Publisher

IEEE

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Abstract

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.

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Keywords

internet of things, anomaly detection, wireless sensor networks, sensor data, data quality, data reliability, histogram-based anomaly detection,, DATA QUALITY, Data Reliability, Sensor Data, Anomaly Detection, Wireless Sensor Networks, Histogram-Based Anomaly Detection, Internet of Things

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Source

2nd International Symposium on Multidisciplinary Studies and Innovative Technologies (ISMSIT)

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Start Page

337

End Page

342
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