Optimal Location Assignment for Data-Driven Warehouse Towards Digital Supply Chain Twin
No Thumbnail Available
Date
2023
Authors
Journal Title
Journal ISSN
Volume Title
Abstract
Warehouses, as one of the critical components of supply chain management in Industry 4.0, play an important role in e-commerce operational efficiency. A crucial prerequisite for managing warehouses is to decide the locations of products (blocks) that can maximize overall space utilization, called a Block Location Problem (BLP). BLP basically determines the product locations to achieve maximum space utilization. One of the most innovative approaches to solving BLP is the use of drones as a block transportation strategy. Existing works have been mainly focused on 2D grid models while 3D flight movement is ignored. Thus, in this paper, we develop a novel data-driven warehouse model for digital supply chain twins. For this purpose, a warehouse digital twin (WDT) architecture is defined by creating a virtual replica of a warehouse that contains the features and interactions of its real-world counterpart. Then, we formalize the BLP in a 3D grid model to decide the location of blocks in a warehouse and to provide efficient space utilization by minimizing the energy consumption of drone cargo equipment. Finally, we propose a genetic algorithm-based solution to solve the storage location assignment. Performance evaluation results demonstrate that our proposed algorithm achieves more block utilization and less energy consumption when compared to the greedy solution. © 2023 IEEE.
Description
Keywords
3D modeling , Digital storage , Drones , Electronic commerce , Genetic algorithms , Industry 4.0 , Location , Supply chain management , Warehouses , Block location problem , Critical component , Data driven , Digital supply chain , Energy-consumption , Grid model , Location assignment , Location problems , Optimal locations , Space utilization , Energy utilization