EcoFair-CH-MARL: Scalable Constrained Hierarchical Multi-Agent RL with Real-Time Emission Budgets and Fairness Guarantees
Saad Alqithami

TL;DR
EcoFair-CH-MARL is a scalable multi-agent reinforcement learning framework that ensures emission constraints and fairness in maritime logistics, demonstrating significant improvements in efficiency, sustainability, and equity through novel theoretical and practical innovations.
Contribution
It introduces a hierarchical MARL framework with provable emission bounds, dynamic fairness rewards, and scalable architecture, advancing regulation-compliant multi-agent coordination.
Findings
Up to 15% lower emissions compared to baselines.
12% higher throughput in maritime experiments.
45% improvement in fair-cost metrics.
Abstract
Global decarbonisation targets and tightening market pressures demand maritime logistics solutions that are simultaneously efficient, sustainable, and equitable. We introduce EcoFair-CH-MARL, a constrained hierarchical multi-agent reinforcement learning framework that unifies three innovations: (i) a primal-dual budget layer that provably bounds cumulative emissions under stochastic weather and demand; (ii) a fairness-aware reward transformer with dynamically scheduled penalties that enforces max-min cost equity across heterogeneous fleets; and (iii) a two-tier policy architecture that decouples strategic routing from real-time vessel control, enabling linear scaling in agent count. New theoretical results establish O(\sqrt{T}) regret for both constraint violations and fairness loss. Experiments on a high-fidelity maritime digital twin (16 ports, 50 vessels) driven by automatic…
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Taxonomy
TopicsMaritime Transport Emissions and Efficiency · Maritime Navigation and Safety · Maritime Ports and Logistics
