Enhancing IIoT security through blockchain-enabled workload analysis in fog computing environments.
Jitendra Kumar Samriya, Amit Kumar, Ashok Bhansali, Meena Malik, Shin-Hung Pan, Varsha Arya, Wadee Alhalabi, Brij B Gupta
Abstract
Open AccessRobots and software are utilized in industrial automation to run machinery and processes in a variety of sectors. Numerous applications incorporate machine learning, the Internet of Things (IoT), and other methods to offer clever features that enhance user experience. Businesses and individuals can successfully accomplish both commercial and noncommercial requirements with the help of such technologies. Due to high risk as well as inefficiency of traditional procedures, organisations are expected to automate industrial processes. Aim of this research is to propose novel technique in workload analysis for fog network and blockchain model in security improvement for IIoT application. Here the IIoT network malicious activity is analysed using blockchain reinforcement gaussian neural network. Then the manufacturing industry workload analysis is carried out using fog cloud based virtual machine multilayer perceptron model. The experimental analysis is carried out for various security dataset in manufacturing industry in terms of latency, QoS, accuracy, reliability, data integrity.