Logistics optimization based on biomechanical principles and bionic algorithms and its innovative approach to intelligent supply chain management
Abstract
With the rapid development of the logistics industry, traditional supply chain management faces challenges such as inefficiency and resource wastage. Research on logistics optimization based on bionic algorithms, which is inspired by behavioral patterns and biomechanical principles, enabling these algorithms to effectively address complex issues like logistics path optimization, resource scheduling, and inventory management. In intelligent supply chain management, the application of bionic algorithms not only enhances the intelligence level of decision-making but also improves the adaptability and flexibility of the system. By integrating Internet of Things (IoT) technology, real-time monitoring of logistics resources is achieved, allowing bionic algorithms to comprehensively optimize the logistics process. A cloud computing-based platform architecture enables efficient information sharing among different participants, thereby improving the overall efficiency of the supply chain. This study explores practical applications of bionic algorithms in logistics optimization, demonstrating their effectiveness in enhancing logistics management accuracy, reducing costs, and improving customer satisfaction.
References
1. Balfaqih H. Artificial Intelligence in Logistics and Supply Chain Management: A Perspective on Research Trends and Challenges. In: Proceedings of International Conference on Business and Technology; 2022.
2. Brandtner P. Predictive Analytics and Intelligent Decision Support Systems in Supply Chain Risk Management—Research Directions for Future Studies. In: Proceedings of Seventh International Congress on Information and Communication Technology; 2022.
3. Doss AN, Maurya N, Guru K, et al. The Impact of Data Mining and Artificial Intelligence on Supply Chain Management and Environmental Performance. In: Proceedings of Second International Conference in Mechanical and Energy Technology; 2022.
4. Zander B, Lange K, Haasis HD, et al. Managing Interfaces Between Smart Factories and Digital Supply Chains. In: Proceedings of International Conference on Dynamics in Logistics; 2022.
5. Lan J, Lu M. Exploration of intelligent logistics supply chain management under the Internet of Things. Engineering Technology and Development; 2022.
6. Butdee S. Smart Manufacturing Platform Estimation for SME in Automotive Rubber Part Supply Chain Management. Global Congress on Manufacturing and Management; 2022.
7. Darshan M, Akella Sundeep VVS, Raswanth SR, et al. A Smart IoT Based Agro-Management System Using Distributed Ledger and Circular Supply Chain Methodology. In: Proceedings of the International Conference on Electrical and Electronics Engineering; 2022.
8. Rahmani MKI, Shuaib M, Alam S, et al. Blockchain-Based Trust Management Framework for Cloud Computing-Based Internet of Medical Things (IoMT): A Systematic Review. Khan R, ed. Computational Intelligence and Neuroscience. 2022; 2022: 1-14. doi: 10.1155/2022/9766844
9. Song H. Risk Management in Intelligent Supply Chain Finance. Smart Supply Chain Finance; 2022.
10. Pimenidis E, Patsavellas J, Tonkin M, et al. Blockchain and Artificial Intelligence Managing a Secure and Sustainable Supply Chain. Privacy and Freedom Protection in the Connected World. In: Proceedings of the 13th International Conference on Global Security; 2021.
11. Zhou J, Chen Y. Research on Intelligent Management of Municipal Solid Waste Emergency Supply Chain Based on Computer EPC Internet of Things System Environment. Journal of Physics: Conference Series. 2021.
12. Yang K. The —is based on jingdong 5G intelligent logistics Demonstration Zone. Research on Modern Transportation Technology; 2021.
13. De Giovanni P. Smart Contracts and Blockchain for Supply Chain Quality Management. Dynamic Quality Models and Games in Digital Supply Chains; 2020.
14. Ma R, Yang Z, Li C. The path of agility in the new retail supply chain under the background of the new development pattern of “double circulation”. Journal of Business Economics. 2022.
15. Xiang X, Sui Y, Long Z, Qian Q. Research on Optimization of Automobile Logistics Based on Whole Process Visualization Construction. Logistics Technology and Application; 2021.
16. Huang W. Intelligent Management System of Edible Mushroom Supply Chain under Internet of Things Technology. China Edible Mushrooms; 2020.
17. Yuan L, Food cold chain logistics information integration intelligent management system. Ningbo Renda Information Technology Co., Ltd.; 2019.
18. Zhang X. Research on Common Distribution and Path Optimization of IoT Cold Chain Logistics of Fresh Agricultural Products. Chongqing University of Technology; 2019.
19. Kang Y, Chen S, Xie S, et al. Logistics Optimized Load Carrier Elevator System Based on Internet of Things. Science and Technology Innovation Herald; 2018.
20. Luo M, Zhou Y. Research on The Architecture of Supply Chain Performance Intelligent Management System Based on MAS. China Market; 2019.
Copyright (c) 2025 Author(s)

This work is licensed under a Creative Commons Attribution 4.0 International License.
Copyright on all articles published in this journal is retained by the author(s), while the author(s) grant the publisher as the original publisher to publish the article.
Articles published in this journal are licensed under a Creative Commons Attribution 4.0 International, which means they can be shared, adapted and distributed provided that the original published version is cited.