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Original Research

CYBER ATTACK DETECTION AND PREVENTION WITH IHBF-ML IN IOT

K.VENKATAGURUNATHAM NAIDU 1, Dr. RAJAVARMAN.V.N 2, Dr. ANANTHAN.T.V 3, and Dr. RAMAMOORTHY.S 4.

Vol 18, No 05 ( 2023 )   |  DOI: 10.17605/OSF.IO/487GS   |   Author Affiliation: Research scholar, Department of Computer Science and Engineering, Dr. MGR Educational and Research Institute, Chennai, Tamilnadu, India 1; Professor, Department of Computer Science and Engineering, Dr. MGR Educational and Research Institute, Chennai, Tamilnadu, India 2,3,4.   |   Licensing: CC 4.0   |   Pg no: 148-169   |   Published on: 11-05-2023

Abstract

The Internet of Things (IoT) has been deployed in a vast range of applications with exponential increases in data size and complexity. Existing forensic techniques are not effective for the accuracy and detection rate of security issues in IoT forensics. Cyber forensic comprises huge volume constraints that are processing huge volumes of data in the Information and Communication Technology (ICT) comprises of IoT devices and platforms. Trust blockchain is effective technology those are utilized to assess the tamper-proof records in all transaction in the IoT environment. With the implementation of trust blockchain the record and transaction are processed with a distributed ledger that is managed by the network nodes. The challenge associated with the trust blockchain in IoT forensics is cost and security. To achieve significant cost-effectiveness organizations, need to evaluate the risks and benefits associated with IoT forensics in the trust blockchain technology. In this paper, developed a Block Chain Enabled Cyber-Physical system with distributed storage. The developed Blockchain model is termed as Integrated Hadoop Blockchain Forensic Machin Learning (IHBF-ML). The IHBF-ML model uses the Hadoop Distributed File System (HDFS) with cyberspace to improve security. Within the IHBF-ML model IoT data communication is established with the smart contract. The smart contract-based blockchain process uses the Machine Learning model integrated with Cat Boost classification model for anomaly detection. Cost in IoT forensic is minimized with the parallel processing of the data through MapReduce Framework for the traffic translation, extraction, and analysis of the dynamic feature traffic from the IoT environment. The experimental analysis stated that constructed IHBF-ML model reduces the cost by ~25% than the other conventional blockchain Ethereum and EOS.


Keywords

Blockchain, IoT Forensic, Hadoop Distributed File System (HDFS), Smart Contracts, MapReduce, Machine Learning, Ethereum