Litcius/Paper detail

Data Fusion Approach for Collaborative Anomaly Intrusion Detection in Blockchain-Based Systems

Wei Liang, Lijun Xiao, Ke Zhang, Mingdong Tang, Dacheng He, Kuan‐Ching Li

2021IEEE Internet of Things Journal190 citationsDOI

Abstract

Blockchain technology is rapidly changing the transaction behavior and efficiency of businesses in recent years. Data privacy and system reliability are critical issues that is highly required to be addressed in Blockchain environments. However, anomaly intrusion poses a significant threat to a Blockchain, and therefore, it is proposed in this article a collaborative clustering-characteristic-based data fusion approach for intrusion detection in a Blockchain-based system, where a mathematical model of data fusion is designed and an AI model is used to train and analyze data clusters in Blockchain networks. The abnormal characteristics in a Blockchain data set are identified, a weighted combination is carried out, and the weighted coefficients among several nodes are obtained after multiple rounds of mutual competition among clustering nodes. When the weighted coefficient and a similarity matching relationship follow a standard pattern, an abnormal intrusion behavior is accurately and collaboratively detected. Experimental results show that the proposed algorithm has high recognition accuracy and promising performance in the real-time detection of attacks in a Blockchain.

Topics & Concepts

BlockchainComputer scienceData miningIntrusion detection systemCluster analysisAnomaly detectionSensor fusionDatabase transactionMatching (statistics)Anomaly (physics)Data setData modelingArtificial intelligenceDatabaseComputer securityStatisticsCondensed matter physicsPhysicsMathematicsNetwork Security and Intrusion DetectionAnomaly Detection Techniques and ApplicationsSpam and Phishing Detection