Data - Driven Optimization of Production Efficiency and Resilience in Global Supply Chains
DOI:
https://doi.org/10.53469/wjimt.2024.07(05).05Keywords:
Supply Chain Optimization, Data-Driven Strategies, Production Efficiency, Resource Management, Cost SavingsAbstract
Our study presents a data-driven framework designed to simultaneously enhance supply chain resilience and optimize operational efficiency. By addressing key gaps in existing research, particularly the integration of risk management and resource optimization across the entire supply chain, this work offers a comprehensive approach to improving supply chain robustness. The framework was empirically tested within the context of Company A's global product management operations, where we quantified the economic impact of underutilized production capacities and assessed the benefits of strategic resource reallocation. Our analysis demonstrated that by optimizing idle production lines, resource utilization could be improved by 18%, resulting in annual cost savings of approximately $1.2 million. Additionally, the framework enhanced overall supply chain resilience by 25%, as evidenced by reduced recovery times and improved operational continuity during disruptions. These findings not only provide empirical support for the framework's effectiveness but also offer practical insights for businesses seeking to strengthen their supply chains in the face of increasing global uncertainties. The research contributes to the theoretical advancement of supply chain resilience and operational efficiency while offering actionable strategies for industry practitioners. The proposed framework serves as a scalable model adaptable to various industry contexts, thereby enhancing the resilience and competitiveness of enterprises in an increasingly volatile market environment.
References
Haji, M., & Himpel, F. (2024). Building Resilience in Food Security: Sustainable Strategies Post-COVID-19. Sustainability, 16(3), 995.
Zhong, Y., Liu, Y., Gao, E., Wei, C., Wang, Z., & Yan, C. (2024). Deep Learning Solutions for Pneumonia Detection: Performance Comparison of Custom and Transfer Learning Models. medRxiv, 2024-06.
Bag, S., Wood, L. C., Xu, L., Dhamija, P., & Kayikci, Y. (2020). Big data analytics as an operational excellence approach to enhance sustainable supply chain performance. Resources, conservation and recycling, 153, 104559.
Gao, H., Wang, H., Feng, Z., Fu, M., Ma, C., Pan, H., ... & Li, N. (2016). A novel texture extraction method for the sedimentary structures' classification of petroleum imaging logging. In Pattern Recognition: 7th Chinese Conference, CCPR 2016, Chengdu, China, November 5-7, 2016, Proceedings, Part II 7 (pp. 161-172). Springer Singapore.
Oliveira-Dias, D., Maqueira-Marín, J. M., & Moyano-Fuentes, J. (2022). The link between information and digital technologies of industry 4.0 and agile supply chain: Mapping current research and establishing new research avenues. Computers & Industrial Engineering, 167, 108000.
Li, W., Li, H., Gong, A., Ou, Y., & Li, M. (2018, August). An intelligent electronic lock for remote-control system based on the internet of things. In journal of physics: conference series (Vol. 1069, No. 1, p. 012134). IOP Publishing.
Ngo, V. M., Quang, H. T., Hoang, T. G., & Binh, A. D. T. (2024). Sustainability‐related supply chain risks and supply chain performances: The moderating effects of dynamic supply chain management practices. Business Strategy and the Environment, 33(2), 839-857.
Gu, W., Zhong, Y., Li, S., Wei, C., Dong, L., Wang, Z., & Yan, C. (2024). Predicting Stock Prices with FinBERT-LSTM: Integrating News Sentiment Analysis. arXiv preprint arXiv:2407.16150.
Ivanov, D., & Dolgui, A. (2021). A digital supply chain twin for managing the disruption risks and resilience in the era of Industry 4.0. Production Planning & Control, 32(9), 775-788.
Yang, J. (2024). Data-Driven Investment Strategies in International Real Estate Markets: A Predictive Analytics Approach. International Journal of Computer Science and Information Technology, 3(1), 247-258.
Yang, J. (2024). Comparative Analysis of the Impact of Advanced Information Technologies on the International Real Estate Market. Transactions on Economics, Business and Management Research, 7, 102-108.
Yang, J. (2024). Application of Business Information Management in Cross-border Real Estate Project Management. International Journal of Social Sciences and Public Administration, 3(2), 204-213.
Mena, C., Humphries, A., & Choi, T. Y. (2013). Toward a theory of multi‐tier supply chain management. Journal of Supply Chain Management, 49(2), 58-77.
Wang, C., Yang, H., Chen, Y., Sun, L., Wang, H., & Zhou, Y. (2012). Identification of Image-spam Based on Perimetric Complexity Analysis and SIFT Image Matching Algorithm. JOURNAL OF INFORMATION &COMPUTATIONAL SCIENCE, 9(4), 1073-1081.
Wang, C., Sun, L., Wei, J., & Mo, X. (2012). A new trojan horse detection method based on negative selection algorithm. In Proceedings of 2012 IEEE International Conference on Oxide Materials for Electronic Engineering (OMEE) (pp. 367-369).
Tuboalabo, A., Buinwi, J. A., Buinwi, U., Okatta, C. G., & Johnson, E. (2024). Leveraging business analytics for competitive advantage: Predictive models and data-driven decision making. International Journal of Management & Entrepreneurship Research, 6(6), 1997-2014.
Zhou, R. (2024). Understanding the Impact of TikTok's Recommendation Algorithm on User Engagement. International Journal of Computer Science and Information Technology, 3(2), 201-208.
Zhou, R. (2024). Advanced Embedding Techniques in Multimodal Retrieval Augmented Generation A Comprehensive Study on Cross Modal AI Applications. Journal of Computing and Electronic Information Management, 13(3), 16-22.
Mishra, R., Singh, R. K., & Subramanian, N. (2022). Impact of disruptions in agri-food supply chain due to COVID-19 pandemic: contextualised resilience framework to achieve operational excellence. The International Journal of Logistics Management, 33(3), 926-954.
Liu, J., Li, K., Zhu, A., Hong, B., Zhao, P., Dai, S., ... & Su, H. (2024). Application of Deep Learning-Based Natural Language Processing in Multilingual Sentiment Analysis. Mediterranean Journal of Basic and Applied Sciences (MJBAS), 8(2), 243-260.
Sundarakani, B., Ajaykumar, A., & Gunasekaran, A. (2021). Big data driven supply chain design and applications for blockchain: An action research using case study approach. Omega, 102, 102452.
Xu, T. (2024). Comparative Analysis of Machine Learning Algorithms for Consumer Credit Risk Assessment. Transactions on Computer Science and Intelligent Systems Research, 4, 60-67.
Xu, T. (2024). Credit Risk Assessment Using a Combined Approach of Supervised and Unsupervised Learning. Journal of Computational Methods in Engineering Applications, 1-12.
Xu, Q., Feng, Z., Gong, C., Wu, X., Zhao, H., Ye, Z., ... & Wei, C. (2024). Applications of Explainable AI in Natural Language Processing. Global Academic Frontiers, 2(3), 51-64.
Waters, D. (2011). Supply chain risk management: vulnerability and resilience in logistics. Kogan Page Publishers.
Wang, C., Yang, H., Chen, Y., Sun, L., Zhou, Y., & Wang, H. (2010). Identification of Image-spam Based on SIFT Image Matching Algorithm. JOURNAL OF INFORMATION &COMPUTATIONAL SCIENCE, 7(14), 3153-3160.
Negri, M., Cagno, E., Colicchia, C., & Sarkis, J. (2021). Integrating sustainability and resilience in the supply chain: A systematic literature review and a research agenda. Business Strategy and the environment, 30(7), 2858-2886.
Zhang, Y., & Fan, Z. (2024). Memory and Attention in Deep Learning. Academic Journal of Science and Technology, 10(2), 109-113.
Zhang, Y., & Fan, Z. (2024). Research on Zero knowledge with machine learning. Journal of Computing and Electronic Information Management, 12(2), 105-108.
Adeleke, A. K., Montero, D. J. P., Olu-lawal, K. A., & Olajiga, O. K. (2024). Statistical techniques in precision metrology, applications and best practices. Engineering Science & Technology Journal, 5(3), 888-900.
Lin, Y. Discussion on the Development of Artificial Intelligence by Computer Information Technology.
Lin, Y. (2023). Optimization and Use of Cloud Computing in Big Data Science. Computing, Performance and Communication Systems, 7(1), 119-124.
Lin, Y. (2024). Application and Challenges of Computer Networks in Distance Education. Computing, Performance and Communication Systems, 8(1), 17-24.
Lin, Y. (2024). Design of urban road fault detection system based on artificial neural network and deep learning. Frontiers in neuroscience, 18, 1369832.
Lin, Y. (2023). Construction of Computer Network Security System in the Era of Big Data. Advances in Computer and Communication, 4(3).
Jahin, M. A., Shovon, M. S. H., Shin, J., Ridoy, I. A., & Mridha, M. F. (2024). Big Data-Supply Chain Management Framework for Forecasting: Data Preprocessing and Machine Learning Techniques. Archives of Computational Methods in Engineering, 1-27.
Bo, S., Zhang, Y., Huang, J., Liu, S., Chen, Z., & Li, Z. (2024). Attention Mechanism and Context Modeling System for Text Mining Machine Translation. arXiv preprint arXiv:2408.04216.
Yao, Y. (2024, May). Design of Neural Network-Based Smart City Security Monitoring System. In Proceedings of the 2024 International Conference on Computer and Multimedia Technology (pp. 275-279).
Mondal, A., Giri, B. K., Roy, S. K., Deveci, M., & Pamucar, D. (2024). Sustainable-resilient-responsive supply chain with demand prediction: An interval type-2 robust programming approach. Engineering Applications of Artificial Intelligence, 133, 108133.
Wang, Z., Yan, H., Wei, C., Wang, J., Bo, S., & Xiao, M. (2024). Research on Autonomous Driving Decision-making Strategies based Deep Reinforcement Learning. arXiv preprint arXiv:2408.03084.
Wang, J., Zhang, H., Zhong, Y., Liang, Y., Ji, R., & Cang, Y. (2024). Advanced Multimodal Deep Learning Architecture for Image-Text Matching. arXiv preprint arXiv:2406.15306.
Wang, J., Li, X., Jin, Y., Zhong, Y., Zhang, K., & Zhou, C. (2024). Research on image recognition technology based on multimodal deep learning. arXiv preprint arXiv:2405.03091.
Oyewole, A. T., Okoye, C. C., Ofodile, O. C., & Ejairu, E. (2024). Reviewing predictive analytics in supply chain management: Applications and benefits. World Journal of Advanced Research and Reviews, 21(3), 568-574.
Xia, Y., Liu, S., Yu, Q., Deng, L., Zhang, Y., Su, H., & Zheng, K. (2023). Parameterized Decision-making with Multi-modal Perception for Autonomous Driving. arXiv preprint arXiv:2312.11935.
Liu, M., & Li, Y. (2023, October). Numerical analysis and calculation of urban landscape spatial pattern. In 2nd International Conference on Intelligent Design and Innovative Technology (ICIDIT 2023) (pp. 113-119). Atlantis Press.
Sun, L. (2023). A New Perspective on Cybersecurity Protection: Research on DNS Security Detection Based on Threat Intelligence and Data Statistical Analysis. Computer Life, 11(3), 35-39.
Purwaningsih, E., Muslikh, M., Suhaeri, S., & Basrowi, B. (2024). Utilizing blockchain technology in enhancing supply chain efficiency and export performance, and its implications on the financial performance of SMEs. Uncertain Supply Chain Management, 12(1), 449-460.
Soana, V., Shi, Y., & Lin, T. A Mobile, Shape-Changing Architectural System: Robotically-Actuated Bending-Active Tensile Hybrid Modules.
Qiu, L., & Liu, M. (2024). Innovative Design of Cultural Souvenirs Based on Deep Learning and CAD.
Shi, Y., Ma, C., Wang, C., Wu, T., & Jiang, X. (2024, May). Harmonizing Emotions: An AI-Driven Sound Therapy System Design for Enhancing Mental Health of Older Adults. In International Conference on Human-Computer Interaction (pp. 439-455). Cham: Springer Nature Switzerland.
Tu, H., Shi, Y., & Xu, M. (2023, May). Integrating conditional shape embedding with generative adversarial network-to assess raster format architectural sketch. In 2023 Annual Modeling and Simulation Conference (ANNSIM) (pp. 560-571). IEEE.
Zhang, Y., Yang, K., Wang, Y., Yang, P., & Liu, X. (2023, July). Speculative ECC and LCIM Enabled NUMA Device Core. In 2023 3rd International Symposium on Computer Technology and Information Science (ISCTIS) (pp. 624-631). IEEE.
Sun, L. (2024). Securing supply chains in open source ecosystems: Methodologies for determining version numbers of components without package management files. Journal of Computing and Electronic Information Management, 12(1), 32-36.