Litcius/Paper detail

Cyber attack detection in IOT-WSN devices with threat intelligence using hidden and connected layer based architectures

S. Nandhini, A. Mounika Rajeswari, N. R. Shanker

2024Journal of Cloud Computing Advances Systems and Applications12 citationsDOIOpen Access PDF

Abstract

In this paper, cyber-attacks in IOT-WSN are detected through proposed optimized-Neural Network algorithms such as (i) Equilibrium Optimizer Neural Network (EO-NN), (ii) Particle Swarm Optimization (PSO-NN), (iii) Single Candidate Optimizer Neural Network (SCO-NN) and (iv) Single Candidate Optimizer Long Short-Term Memory (SCO-LSTM) with different connecting, hidden neural network layers and threat intelligence data. The proposed algorithms detect the attacker node, which frequently changes the behaviour such as attacker node/ normal node. Existing IDS system detects the attacks in WSN and unable to detect the changing behavior attacker nodes in IOT-WSN. The behaviour of attacker node changes from normal behaviour to attacker behaviour due to nodes connected to internet continuously. The classification accuracy rates of proposed SCO-LSTM algorithm without and with threat intelligence are about 99.7% and 99.89%, respectively.

Topics & Concepts

Computer scienceInternet of ThingsLayer (electronics)Application layerComputer securityCyber-attackComputer networkOperating systemChemistrySoftware deploymentOrganic chemistryNetwork Security and Intrusion DetectionSecurity in Wireless Sensor NetworksInternet of Things and AI