Decentralized Supply Chain Management: Harnessing Blockchain for Autonomous Logistics
Abstract
This paper proposes a decentralized supply chain management framework using blockchain technology to enable autonomous logistics operations. By leveraging blockchain's distributed ledger, smart contracts, and IoT integration, supply chain participants can autonomously execute and track logistics processes, such as inventory management, transportation, and warehousing. The study investigates the potential of blockchain in reducing operational costs, enhancing efficiency, and minimizing delays in supply chain operations.
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Impact Factor :
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