Author
Listed:
- Johanna Gonzalez
(Department of Forest Biomaterials, North Carolina State University, Raleigh, NC 27695, USA)
- Jingxin Wang
(Department of Forest Biomaterials, North Carolina State University, Raleigh, NC 27695, USA)
Abstract
Background : The constant growth in demand for sustainable energy products and the development of the circular economy have created a critical need for an efficient supply chain for biomass. However, the inherent challenges of biomass make its harvesting, collection, storage, and transport difficult, impacting logistical efficiency and the viability of bioenergy and bioproduct production. This study analyzes how combining artificial intelligence (AI) with multimodal transport can optimize and improve efficiency, as well as reduce costs, in biomass logistics. Methods : The study uses a tiered research framework that encompasses the physical domain (biomass limitations), the structural domain (mathematical modeling for multimodal transport), the intelligence domain (AI-based decision making), and the strategic approach. Results : The outcomes indicate that while truck transport is ideal for short distances, integrating rail and water transport through AI-driven optimization reduces costs and greenhouse gas emissions for long-distance travel. AI technologies, such as digital twins and machine learning, improve demand forecasting, real-time routing, and cargo consolidation, leading to enhanced prediction accuracy for transport costs. Conclusions : The integration of AI and multimodal networks builds resilient and sustainable biomass supply chains. However, full implementation requires addressing data fragmentation and investing in digital infrastructure to enable seamless coordination between supply chain stakeholders.
Suggested Citation
Johanna Gonzalez & Jingxin Wang, 2026.
"Optimizing Biomass Feedstock Logistics Using AI for Integrated Multimodal Transport in Bioenergy and Bioproduct Systems: A Review,"
Logistics, MDPI, vol. 10(3), pages 1-25, March.
Handle:
RePEc:gam:jlogis:v:10:y:2026:i:3:p:54-:d:1876069
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