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Home / Archives / Volume-6 / Issue-3 / Article-5

Volume - 6 | Issue - 3 | september 2024

Fake Product Detection with Blockchain Technology Open Access
Ebuka Orioha   126
Pages: 316-331
Cite this article
Orioha, Ebuka. "Fake Product Detection with Blockchain Technology." Journal of Artificial Intelligence and Capsule Networks 6, no. 3 (2024): 316-331
Published
02 September, 2024
Abstract

Consumers and brands are at serious risk due to the growth of counterfeit goods, especially in regions like Nigeria. Conventional techniques, such border inspections and market raids by the Standards Organization of Nigeria (SON), are inadequate for detecting counterfeit goods. To ensure traceability, transparency, and immutability in the supply chain, this article suggests utilizing blockchain technology. The decentralized and encrypted characteristics of blockchain, when bolstered by smart contracts, enable efficient product tracking from producers to end users, hence impeding the infiltration of fake goods. Using a permissioned blockchain network, this system attempts to confirm the legitimacy of products at every point along the supply chain—manufacturers, distributors, retailers, and end users. The Remix IDE is used to deploy and test Ethereum-based smart contracts that were created in Solidity for the proposed system. This blockchain-based strategy aims to decrease the spread of counterfeit goods, protect consumer confidence, and preserve brand reputation. To offer a user-friendly interface for wider accessibility, future advancements will link this system with decentralized apps (DApps).

Keywords

Blockchain Fake Product Decentralized Apps (DApp) Smart Contract

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