Certain investigations on improving outlier detection accuracy in wireless sensor networks
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Abstract
Nowadays, wireless sensor networks (WSNs) are gaining popularity in a
newlinevariety of civilian and military applications. In WSN, data fusion or data
newlineaggregation is carried out to gather data in a cluster head (CH) from other nodes
newlinein that cluster. These aggregated data will be forwarded to the base station for
newlineanalysis. In a lively environment, WSN data that is measured and gathered may
newlinebe sometimes inaccurate. The issues about data reliability in WSNs imply that the
newlinesensor data can be inaccurate, which further affects the quality of the raw data and
newlinethe aggregated results that are forwarded to the base station for analysis.
newlineAdditionally, transmitting inaccurate data to the base station consumes needless
newlinebattery power, reducing the lifespan of the network. Identification of abnormal
newlineor inaccurate data that vary intensely from remaining data readings is considered
newlinesuspicious that needs to be focused on and researched. This issue is addressed
newlineas Outlier detection (OD) which performs the classification of normal data from
newlineabnormal data. Implementing OD in WSNs aids in removing inaccurate data
newlinetransmission from CH to the base station which is further considered in this
newlineresearch work.
newlineThe gathered sensor data may be imbalanced where the abnormal
newlineinstances are available in minimum amounts. When dealing with imbalanced
newlinedata, the OD system can suffer from yielding better detection accuracy and more
newlinefalse positives than false negatives. This challenging task motivated researchers
newlineto build an OD model to improve detection accuracy with less computation
newlinecomplexity and a reduced number of false alarms. This attracted researchers to
newlinedevelop an efficient OD model that should be able to classify abnormal
newlineinstances with high detection accuracy and reduce false alarms. In recent years,
newlineunsupervised outlier detection (UOD) using deep learning has proved to
newlineimprove classification accuracy when dealing with imbalanced data produced
newlineby various real-time applications.
newline