Research Article Open Access Double-Blind Peer Review

DEVELOPING AN ADAPTIVE INTELLIGENT MULTI-AGENT SYSTEM FOR ENHANCED NETWORK PROTECTION

Nkechi Uzoamaka Okoro
Published 19 February 2025
Vol. 11, No. 1 (2023)
pp. 32-48
CC BY 4.0
  1. 1
    Nkechi Uzoamaka Okoro
    Department of Computer Science, Faculty of Physical Sciences, Imo State University, Owerri, Nigeria
    NG

The aim of this research is to design an adaptive intelligent multi-agent for network protection, the objective is to provide a
faster network by application of the multi-agent concept of a distributed artificial intelligence idea, to enhance the network
intrusion detection systems (IDS) of existing technology, to provide a system that allows a network element to engage in
adaptive behavior by easy communicating and sharing of resources in other to solve a problem faster and to provide an enhance
system that could monitor intruders into a network. The motivation towards this study is from the inability to protect the
network during request of multiple transactions and network failure due to attack on the network. An object oriented analysis
design methodology (OOADM) will be used for the system analysis and design while employing the unifield modeling language
(UML) for the development of the multi-agent network protection architecture and the programming language will be PHP,
HTML and MySQL as backend and database design. These development tools were chosen because of their simplicity and
flexibility in coding, easy integration and deployment. The expected results will be an adaptive intelligent multi-agent network
protection system that will solve the current problems witnessed by many organizations network on the issues of network
attack, delay on the processing of requested transactions and constant network failure. The proposed system is intended to
apply multiple agents architectural model to processes request as they come in by unique communication between the in the
system agents. The communication will help speed-up processing speed of the network and hence report any witnessed attack
made from any angle for an immediate action

JournalArtificial Intelligence, Machine Learning, and Data Science Journal
ISSN3064-8270
Volume / IssueVol. 11, No. 1 (2023)
Pages32-48
Published19 February 2025
Access Open Access
LicenseCC BY 4.0 — reuse with attribution
PublisherKeith Publications
Okoro, N. (2025). DEVELOPING AN ADAPTIVE INTELLIGENT MULTI-AGENT SYSTEM FOR ENHANCED NETWORK PROTECTION. Artificial Intelligence, Machine Learning, and Data Science Journal, Vol. 11 No. 1, pp. 32-48

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