Please use this identifier to cite or link to this item: http://bura.brunel.ac.uk/handle/2438/33532
Title: Smart Logistics Model for Supply Chain Management via Brain-Inspired Geometric Deep Networks
Authors: Khaleghi, M
Pashootanizadeh, F
Khaleghi, N
Sheykhivand, S
Danishvar, S
Ghezavati, V
Keywords: brain-inspired networks;supply chain logistics;healthcare supply chain;hybrid networks;geometric deep learning;smart logistics;supply chain management;particle swarm optimization
Issue Date: 22-Jun-2026
Publisher: MDPI
Citation: Khaleghi, M. et al. (2026) 'Smart Logistics Model for Supply Chain Management via Brain-Inspired Geometric Deep Networks', Biomimetics, 11 (6), 440, pp. 1–48. doi: 10.3390/biomimetics11060440.
Abstract: Systematic logistics plays a key role in fostering profitable development in supply chains. An intelligent logistics model can help create a more agile, sustainable, and resilient supply chain. In recent years, several brain-inspired deep learning architectures, such as long short-term memory networks, graph neural networks, and convolutional neural networks, have been introduced for intelligent decision-making tasks. From a biomimetic perspective, these models are inspired by biological information-processing mechanisms. Convolutional neural networks reflect hierarchical procedures similar to those in the visual cortex, graph neural networks mimic communication among biological neurons, and LSTM networks are motivated by short-term and long-term memory mechanisms in the brain. Inspired by these biomimetic computational principles, this study proposes a novel hybrid deep learning strategy composed of LSTM, convolutional layers and GraphSAGE geometric layers for smart supply chain logistics management. This strategy enables leveraging information pertaining to LSTM-based long-term dependencies, convolutional local patterns and graph-related hidden connections of the supply chain dataset for intelligent decision-making. The GraphSAGE framework helps with scalable graph learning, which enhances predictive accuracy in the case of unseen data. The optimizer in the proposed methodology performs sequential optimization using the biomimetic particle swarm optimizer and the Adam approach (PSO-Adam), considering the hybrid cost function. The prediction of logistics parameters is investigated using five datasets, including DataCo, Shipping, Smart Logistics, Hospital Supply Chain, and Pharmaceutical Supply Chain. The average accuracies of 97.8%, 100%, 96.6%, 98.7% and 99.4% are obtained for practical multi-category logistics parameter forecasts. The evaluation metrics for ten logistics predictions confirm the effectiveness of the proposed intelligent logistics model and highlight the potential of biomimetic geometric networks for complex supply chain decision-making. The model is a cost-efficient approach with consideration of the prediction capabilities, helping to reduce the occurrence of logistics risks, increase the productivity of the supply chain and affect the supply chain visibility, customer satisfaction, and industry reputation.
Description: Data Availability Statement: The datasets used in this study are publicly available at the following address links: https://www.kaggle.com/datasets/vanpatangan/hospital-supply-chain; https://www.kaggle.com/datasets/mohammedashraf000/pharmaceutical-supply-chain-optimization; https://www.kaggle.com/datasets/nayanack/shipping; https://www.kaggle.com/datasets/ziya07/smart-logistics-supply-chain-dataset; https://www.kaggle.com/datasets/shashwatwork/dataco-smart-supply-chain-for-big-data-analysis; https://www.kaggle.com/datasets/azminetoushikwasi/supplygraph-supply-chain-planning-using-gnns (all accessed on 18 May 2026).
URI: https://bura.brunel.ac.uk/handle/2438/33532
DOI: https://doi.org/10.3390/biomimetics11060440
Other Identifiers: ORCiD: Farshad Pashootanizadeh https://orcid.org/0009-0005-1855-6837
ORCiD: Sebelan Danishvar https://orcid.org/0000-0002-8258-0437
Appears in Collections:Department of Mechanical and Aerospace Engineering Research Papers

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