Deep Learning Network Intrusion Detection with the Conv1d-Lstm Model: Integrating CNN and LSTM For Superior Performance
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Date
2024Author
Lukogo, Cikambasi Ciza
Muriira, Lawrence Mwenda
Murungi, Robert Mutua
Type
ArticleLanguage
enMetadata
Show full item recordAbstract
Increased cases of cyber-attack and the rising levels of sophistication presents a significant
threat to corporate networks, resulting in potential data breaches, financial losses, and
reputational harm. Traditional Intrusion Detection Systems, which rely on predefined
signatures and rules, have proven inadequate due to high false positive and false negative rates.
This study introduces an innovative AI-based intrusion detection model to enhance corporate
network security leveraging on deep learning techniques. The objective was to propose a
Conv1d-LSTM Model, integrating convolutional neural networks (CNN) and recurrent neural
networks (RNN) to analyze network traffic data from the CSE-CIC-IDS-2018 dataset, which
encompasses a wide array of attack types, and provides a realistic representation of modern
network traffic. This deep learning model effectively detects complex patterns and temporal
dependencies in the data. The performance of the innovated model was evaluated using
precision, accuracy, recall, and F1 score, to demonstrate its superior detection capabilities
compared to conventional Intrusion Detection Systems (IDS). Additionally, a comparative
analysis of CNN and RNN performance on the same dataset was conducted, highlighting the
strengths and limitations of each approach. This research underscores the importance of
integrating advanced AI methodologies into IDS frameworks to protect corporate networks
from cyber threats.
Publisher
International Journal of Professional Practice (IJPP)