Smart City Gnosys

Smart city article details

Title Metaheuristic Firefly And C5.0 Algorithms Based Intrusion Detection For Critical Infrastructures
ID_Doc 36771
Authors Adeyiola A.Q.; Saheed Y.K.; Misra S.; Chockalingam S.
Year 2023
Published 2023 3rd International Conference on Applied Artificial Intelligence, ICAPAI 2023
DOI http://dx.doi.org/10.1109/ICAPAI58366.2023.10193917
Abstract Wireless Sensor Networks (WSN) are groups of stand-alone gadgets that typically feature one or more sensors (for example, light level, temperature), with relatively limited computing capabilities, and a wireless connection that enable interaction with a base station. Today, WSN is being implemented within critical infrastructures such as connected vehicles, drones, smart cities, smart grids, and surveillance systems. The major issue of WSN is that they are primarily focused on security issues linked to packet transfer across network's multiple sensor nodes. Intrusion detection is essential due to the growing importance of WSN security. To address this flaw in WSN, an effective wrapper feature selection founded on the Firefly algorithm (FFA) is developed for the selection of significant attributes in this paper. This wrapper-based feature selection solution reduces time consumption to a higher extent while also increasing the network's lifetime and scalability. In the first phase of this work, data preprocessing was performed with a minimum-maximum normalization approach, subsequently, FFA was used for feature dimensionality reduction and C5.0 for the classification. The simulations were done using the UNSW-NB1S benchmark data, and the suggested firefly with C5.0 (FFA-C5.0) has an accuracy of 98.7%. © 2023 IEEE.
Author Keywords C5.0 Algorithm; Firefly Algorithm; Intrusion Detection; Minimum Maximum Normalization; UNSW-NB15; Wireless Sensor Networks


Similar Articles


Id Similarity Authors Title Published
23838 View0.858Pandey V.K.; Prakash S.; Gupta T.K.; Sinha P.; Yang T.; Rathore R.S.; Wang L.; Tahir S.; Bakhsh S.T.Enhancing Intrusion Detection In Wireless Sensor Networks Using A Tabu Search Based Optimized Random ForestScientific Reports, 15, 1 (2025)