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Blockchain‐Enabled Privacy‐Preserving Anomaly Detection and Reputation Framework for <scp>VANETs</scp>

M. Kiran KumarDepartment of CSE School of Technology, GITAM (Deemed to Be University) Hyderabad IndiaYogini BoroleDepartment of Mechatronics Engineering Marathwada Mitrmandal's Institute of Technology Pune IndiaShrabani MallickDr. B.R Ambekar Institute of Technology Sri Vijaya Puram Andaman and Nicobar Islands IndiaYogesh ChabaGuru Jambheshwar University of Science and Technology Hisar Haryana IndiaSanjeev KumarGuru Jambheshwar University of Science and Technology Hisar Haryana IndiaShakir KhanCollege of Computer and Information Sciences Imam Mohammad Ibn Saud Islamic University (IMSIU) Riyadh Saudi ArabiaFatimah AlhayanDepartment of Information Systems, College of Computer and Information Sciences Princess Nourah bint Abdulrahman University Riyadh Saudi ArabiaNavruzbek ShavkatovDepartment of Corporate Finance and Securities Tashkent State University of Economics Tashkent UzbekistanRupesh GuptaChitkara University Institute of Engineering and Technology Chitkara University Chandigarh Punjab India
ABI

Аннотация

ABSTRACT To address issues in traditional vehicular network trust mechanisms such as the untrustworthiness of centralized reputation servers, threats to user privacy, and limited detection scope a blockchain‐based vehicular network anomaly detection and reputation model with privacy protection is proposed. Leveraging blockchain technology, a distributed and trustworthy reputation update framework for vehicular networks is designed. The evaluation data is encrypted and computed using a multi‐key fully homomorphic encryption technique, which reduces the danger of user privacy leakage. An adaptive adjustment approach is implemented for the retrospective time interval to improve anomaly detection. This strategy stops hostile cars from evading detection by exploiting reputation updates. According to the simulation results, which demonstrate accuracy with low false positive rates in identifying malicious cars, the suggested method effectively protects user privacy while attaining high anomaly detection rates. The detection rate for unusual vehicle behavior is increased by 38.56% as compared to conventional systems. This increased detection rate implies that the technique is better at differentiating between typical and anomalous processes, which improves network dependability and safety.

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