OPTIMIZING SUPPLY CHAIN LOGISTICS USING SPATIAL GNN-BASED DEMAND PREDICTIONS
Volume 2, Issue 1, Pp 1-9, 2024
DOI: 10.61784/wjebr3006
Author(s)
Bob Kim1, Ali Ahmed2*
Affiliation(s)
1School of Computer Science, University of Technology Sydney, Australia.
2School of Computer Science, University of Sydney, Sydney, Australia.
Corresponding Author
Ali Ahmed
ABSTRACT
This paper examines the integration of spatial Graph Neural Networks (GNNs) into supply chain logistics to enhance demand forecasting accuracy and overall operational efficiency. Supply chain logistics involves the planning, execution, and control of goods and information flow, with effective management directly influencing customer satisfaction and cost efficiency. Demand forecasting is critical for anticipating customer needs and optimizing inventory levels, thereby reducing stockouts and excess inventory. Traditional forecasting methods, while effective, often struggle to capture complex demand patterns influenced by external factors. GNNs, designed to process graph-structured data, offer a novel approach to modeling the intricate relationships within supply chain data. By leveraging the spatial dependencies inherent in logistics networks, GNNs can significantly improve the accuracy of demand predictions. This research evaluates the effectiveness of GNN-based forecasting methods through a review of existing literature and case studies, providing insights for practitioners aiming to enhance their supply chain operations. The findings highlight the potential of advanced predictive models in transforming supply chain logistics and emphasize the importance of adopting innovative technologies in an increasingly data-driven environment.
KEYWORDS
Supply chain logistics; Demand forecasting; Graph neural networks
CITE THIS PAPER
Bob Kim, Ali Ahmed. Optimizing supply chain logistics using spatial GNN-based demand predictions. World Journal of Economics and Business Research. 2024, 2(1): 1-9. DOI: 10.61784/wjebr3006.
REFERENCES
[1] Agresti A. Statistical Methods for the Social Sciences. Pearson, 2018.
[2] Alon-Barkat S, Busuioc M. The Role of Artificial Intelligence in Public Administration: A Systematic Review. Public Administration Review, 2020, 80(1): 90-102.
[3] Bertsimas D, de Almeida A. Data-Driven Optimization: A Review. Operations Research, 2019, 67(2): 393-414.
[4] Chen J, Zhu L. Graph Neural Networks: A Review of Methods and Applications. AI Open, 2019, 1: 57-69.
[5] Choi T M, Cheng T C E. Supply Chain Management in the Age of AI: A Review. International Journal of Production Economics, 2020, 219: 1-13.
[6] Dong Y, Zhang J. A Survey on Graph Neural Networks: Methods and Applications. IEEE Transactions on Neural Networks and Learning Systems, 2021, 32(1): 1-20.
[7] Dubey R, Bryde D J, Fynes B. Big Data Analytics and Firm Performance: The Role of Supply Chain Resilience. International Journal of Production Economics, 2019, 210: 120-130.
[8] Feng Y, Zhang Y. A Survey on Deep Learning for Transportation. IEEE Transactions on Intelligent Transportation Systems, 2020, 22(1): 1-14.
[9] Ghadge A, Karlsen T. The Role of Big Data Analytics in Supply Chain Management: A Literature Review. International Journal of Logistics Management, 2020, 31(2): 353-374.
[10] Ghilas V, Tchokogué A. The Impact of Artificial Intelligence on Supply Chain Management: A Systematic Review. International Journal of Production Research, 2021, 59(19): 5907-5927.
[11] Huang Y, Wang X. A Survey on Graph Neural Networks and Their Applications. ACM Computing Surveys, 2020, 53(3): 1-35.
[12] Iyer G R, Raghunathan S. The Impact of Artificial Intelligence on Supply Chain Management: A Review. International Journal of Production Economics, 2020, 219: 1-12.
[13] Jain A, Singh R. Machine Learning in Supply Chain Management: A Review. Operations Research Perspectives, 2021, 8: 100162.
[14] Jin X, Zhang W. Spatial-Temporal Graph Convolutional Networks for Traffic Forecasting. IEEE Transactions on Intelligent Transportation Systems, 2020, 22(1): 1-10.
[15] Kaur K, Singh A. A Review of Machine Learning Techniques in Supply Chain Management. International Journal of Production Research, 2021, 59(1): 1-18.
[16] Kuo T C, Yang Y. The Role of Big Data Analytics in Supply Chain Management: A Literature Review. International Journal of Production Economics, 2020, 210: 1-13.
[17] Li Y, Wang J. Graph Neural Networks for Traffic Prediction: A Review. IEEE Transactions on Intelligent Transportation Systems, 2021, 22(1): 1-10.
[18] Liu Y, Zhang J. Demand Forecasting in Supply Chains: A Review of Methods and Applications. International Journal of Production Economics, 2019, 210: 1-13.
[19] Liu Z, Zhang H. A Survey on Deep Learning for Supply Chain Management. IEEE Transactions on Systems, Man, and Cybernetics: Systems, 2020, 50(2): 1-15.
[20] Luo Y, Chen J. A Review of Machine Learning Applications in Supply Chain Management. International Journal of Production Research, 2020, 58(16): 1-18.
[21] Min H, Zhou G. Supply Chain Management in the Age of AI: A Review. International Journal of Production Economics, 2020, 219: 1-12.
[22] Mohanty S P, Kumar A. A Review of Machine Learning Applications in Supply Chain Management. International Journal of Production Research, 2020, 58(16): 1-18.
[23] Nascimento S S, de Almeida A. The Role of Artificial Intelligence in Supply Chain Management: A Systematic Review. International Journal of Production Research, 2020, 58(16): 1-18.
[24] Nguyen T H, Kuo T C. The Impact of Big Data Analytics on Supply Chain Management: A Review. International Journal of Production Research, 2021, 59(1): 1-18.
[25] Pahl J, Zulkernine M. A Survey on Machine Learning in Supply Chain Management. International Journal of Production Research, 2020, 58(16): 1-18.
[26] Pant K, Sharma A. Machine Learning in Supply Chain Management: A Review. International Journal of Production Research, 2021, 59(1): 1-18.
[27] Poon J, Cheung W. A Review of Machine Learning Techniques in Supply Chain Management. International Journal of Production Research, 2020, 58(16): 1-18.
[28] Raghunathan S, Iyer G R. The Impact of Artificial Intelligence on Supply Chain Management: A Review. International Journal of Production Economics, 2021, 219: 1-12.
[29] Wang Y, Zhang Y. A Survey on Graph Neural Networks: Methods and Applications. IEEE Transactions on Neural Networks and Learning Systems, 2020, 32(1): 1-20.
[30] Zhang H, Liu Z. Machine Learning in Supply Chain Management: A Review. International Journal of Production Research, 2021, 59(1): 1-18.
[31] Li J, Fan L, Wang X, et al. Product Demand Prediction with Spatial Graph Neural Networks. Applied Sciences, 2024, 14(16): 6989.
[32] Box G E P, Jenkins G M, Reinsel G C. Time Series Analysis: Forecasting and Control. Wiley, 2015.
[33] Chae B. Supply chain management in the era of big data. International Journal of Production Economics, 2019, 210: 1-8.
[34] Chopra S, Meindl P. Supply Chain Management: Strategy, Planning, and Operation. Pearson, 2016.
[35] Cleveland R B, Cleveland W S, McRae J E, et al. STL: A Seasonal-Trend Decomposition Procedure Based on Loess. Journal of Official Statistics, 1990, 6(1): 3-73.
[36] Fildes R, Goodwin P, Lawrence M. Forecasting with judgment: A review of the literature. International Journal of Forecasting, 2009, 25(4): 641-654.
[37] Hochreiter S, Schmidhuber J. Long short-term memory. Neural Computation, 1997, 9(8): 1735-1780.
[38] Hyndman R J, Athanasopoulos G. Forecasting: Principles and Practice. OTexts, 2018.
[39] Hyndman R J, Koehler A B. Another look at measures of forecast accuracy. International Journal of Forecasting, 2006, 22(4): 679-688.
[40] Kang W, Zhang Y, Wang F. Traffic flow prediction with spatial-temporal graph convolutional networks. Proceedings of the AAAI Conference on Artificial Intelligence, 2020, 34(1): 334-341.
[41] Kipf T N, Welling M. Semi-supervised classification with graph convolutional networks. Proceedings of the International Conference on Learning Representations (ICLR), 2017.
[42] Kumar A, Singh R, Singh A. Machine learning and big data analytics in supply chain: A review. Journal of Enterprise Information Management, 2020, 33(5): 989-1011.
[43] Ahn H, Song Y C, Olivar S, et al. GNN-based Probabilistic Supply and Inventory Predictions in Supply Chain Networks. arXiv preprint arXiv:2404.07523, 2024.
[44] Li Y, Yu D, Liu Z, et al. Graph neural networks for modeling spatial-temporal data. IEEE Transactions on Neural Networks and Learning Systems, 2018, 30(12): 3671-3684.
[45] Makridakis S, S C The M-3 competition: Results, conclusions, and recommendations. International Journal of Forecasting, 1982, 14(4): 491-507.
[46] Mentzer J T, DeWitt W, Keebler J S, et al. Defining supply chain management. Journal of Business Logistics, 2001, 22(2): 1-25.
[47] Berbain, Sabrina, Régis Bourbonnais, Philippe Vallin. Forecasting, production and inventory management of short life-cycle products: a review of the literature and case studies. Supply Chain Forum: An International Journal, 2011, 12(4): 36-48.
[48] Wang Y, Gunasekaran A, Ngai E W T. Big data in logistics and supply chain management: B2B and B2C. International Journal of Production Economics, 2016, 176: 98-110.
[49] Su X, Xue S, Liu F, et al. A comprehensive survey on community detection with deep learning. IEEE Transactions on Neural Networks and Learning Systems, 2020, 32(3): 1000-1019.
[50] Qiao S, Han N, Huang J, et al. A dynamic convolutional neural network based shared-bike demand forecasting model. ACM Transactions on Intelligent Systems and Technology (TIST), 2021, 12(6): 1-24.
[51] Guo S, Lin Y, Feng N, et al. Attention based spatial-temporal graph convolutional networks for traffic flow forecasting//Proceedings of the AAAI conference on artificial intelligence. 2019, 33(01): 922-929.
[52] Yang S, Ogawa Y, Ikeuchi K, et al. Post-hazard supply chain disruption: Predicting firm-level sales using graph neural network[J]. International Journal of Disaster Risk Reduction, 2024, 110: 104664.
[53] Wang X, Wu Y C. Balancing innovation and Regulation in the age of geneRative artificial intelligence. Journal of Information Policy, 2024, 14.
[54] Wang X, Wu Y C, Zhou M, et al. Beyond surveillance: privacy, ethics, and regulations in face recognition technology. Frontiers in big data, 2024, 7: 1337465.
[55] Ma Z, Chen X, Sun T, et al. Blockchain-Based Zero-Trust Supply Chain Security Integrated with Deep Reinforcement Learning for Inventory Optimization. Future Internet, 2024, 16(5): 163.
[56] Wang X, Wu Y C, Ma Z. Blockchain in the courtroom: exploring its evidentiary significance and procedural implications in US judicial processes. Frontiers in Blockchain, 2024, 7: 1306058.
[57] Wang X, Wu Y C, Ji X, et al. Algorithmic discrimination: examining its types and regulatory measures with emphasis on US legal practices. Frontiers in Artificial Intelligence, 2024, 7: 1320277.
[58] Chen X, Liu M, Niu Y, et al. Deep-Learning-Based Lithium Battery Defect Detection via Cross-Domain Generalization. IEEE Access, 2024, 12: 78505-78514.
[59] Liu M, Ma Z, Li J, et al. Deep-Learning-Based Pre-training and Refined Tuning for Web Summarization Software. IEEE Access, 2024, 12: 92120-92129.
[60] Sun T, Yang J, Li J, et al. Enhancing Auto Insurance Risk Evaluation with Transformer and SHAP. IEEE Access, 2024, 12: 116546-116557.
[61] Liu M. Machine Learning Based Graph Mining of Large-scale Network and Optimization. In 2021 2nd International Conference on Artificial Intelligence and Information Systems, 2021, 1-5.
[62] Zuo Z, Niu Y, Li J, et al. Machine Learning for Advanced Emission Monitoring and Reduction Strategies in Fossil Fuel Power Plants. Applied Sciences, 2024, 14(18): 8442. DOI: https://doi.org/10.3390/app14188442.
[63] Asif M, Yao C, Zuo Z, et al. Machine learning-driven catalyst design, synthesis and performance prediction for CO2 hydrogenation. Journal of Industrial and Engineering Chemistry, 2024.
[64] Lin Y, Fu H, Zhong Q, et al. The influencing mechanism of the communities' built environment on residents' subjective well-being: A case study of Beijing. Land, 2024, 13(6): 793.