Novel Network Intrusion Detection Based on Feature Filtering Using FLAME and New Cuckoo Selection in a Genetic Algorithm
Recently, networks have faced a significant challenge in terms of security due to constant
unauthorized access by hackers, resulting in the compromise of network user data. To enhance
network security, there are various approaches that can be employed, including the utilization
of firewalls, encryption, and antivirus software. Among these methods, one type of system that
can be implemented is an intrusion detection system (IDS), which actively monitors the network
to identify any intrusions. In order to effectively detect any unauthorized or malicious activities,
sophisticated techniques such as genetic algorithms, cuckoo searches, and FLAME are employed.
This research proposes a novel IDS that aims to improve the detection of intrusions. The proposed
IDS initially conducts feature filtration using fuzzy clustering through the local approximation of
the membership algorithm (FLAME), which effectively reduces the number of features that need to
be analyzed and processed.