A Novel Blockchain-Based Framework for Secure IoT Ecosystems
Abstract
The rapid proliferation of Internet of Things (IoT) devices has raised concerns about data security and privacy. This paper proposes a novel blockchain-based framework to secure IoT ecosystems. By utilizing decentralized ledger technology, the framework ensures data integrity, authenticity, and traceability across IoT networks. A hybrid consensus mechanism is introduced to balance energy efficiency and security. The framework is evaluated on smart home and industrial IoT scenarios, demonstrating its effectiveness in mitigating cyber threats while maintaining system performance. The proposed solution addresses critical challenges in IoT security, paving the way for safer and more reliable IoT applications.
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