
Blockchain technologies have the potential to fundamentally change logistics and supply chain management. By leveraging the capabilities of blockchain technology, businesses can increase efficiency, reduce costs, and improve security and trust in operations. However, there are still difficulties to overcome in terms of uptake and implementation. This article examines the various blockchain technologies applicable in the field of logistics, presents the benefits and limitations of blockchain technologies in this aspect, and offers a summary of the existing technologies used in the logistics sector. According to this, blockchain-based models applicable both to a specific stage of the logistics process (e.g., transportation of goods, materials, and feedstocks; management of warehouse operations; cargo tracking; etc.) and related insurance services have been proposed. The proposed models have been tested in a lab environment on the HyperLedger Fabric platform, and the results show that they are fully functional.
blockchain, Blockchain, logistics, Blockchain-based Logistic Model, Hierarchical Model, hierarchical model, Logistics, blockchain-based logistic model, HyperLedger Fabric
blockchain, Blockchain, logistics, Blockchain-based Logistic Model, Hierarchical Model, hierarchical model, Logistics, blockchain-based logistic model, HyperLedger Fabric
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