Summary

Asia-Pacific Network Operations and Management Symposium

2022

Session Number:PS1

Session:

Number:PS1-13

Network Intrusion Detection System Using 2D Anomaly Detection

Min Seok Kim ,   Jong Hoon Shin ,   Choong Seon Hong,  

pp.-

Publication Date:2022/09/28

Online ISSN:2188-5079

DOI:10.34385/proc.70.PS1-13

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Summary:
As connected devices diversified, the attack surfaces and types of network intrusion increased. The conventional intrusion detection methods, such as rule-based methods, cannot detect novel attack types due to their design. For deep learning method research, RNN or LSTM-based anomaly detection exists. However, this method requires high computational power, making it difficult to implement in environments where GPU or TPU cannot be utilized. This paper introduces a 2D anomaly detection method for network intrusion detection. The proposed 2D anomaly detection method requires less computational power than the LSTM or RNN model but performs comparably. Our methods can detect multiple packets at once. Provided methods require less computational power, they can be implemented in an environment with low computational power, i.e. IoT devices. The existing accuracy calculation methods cannot accurately evaluate the proposed methods遯カ繝サmultiple packet detection. Therefore, this paper proposes a novel calculate on method for multiple anomaly detection. The UNSW-NB15 Dataset was used for training and testing and achieved 99.51%, 97.84%, and 97.88% accuracy on each binary, gray, original method.