ROLGDec 7, 2025

Energy-Efficient Navigation for Surface Vehicles in Vortical Flow Fields

arXiv:2512.06912v1h-index: 3
Originality Incremental advance
AI Analysis

This addresses the problem of long-duration missions under strict energy budgets for autonomous ocean vehicles, representing a domain-specific incremental improvement.

The paper tackled energy-efficient navigation for autonomous surface vehicles in vortical flow fields, achieving 30-50% energy savings compared to state-of-the-art methods through a reinforcement learning approach.

For centuries, khalasi have skillfully harnessed ocean currents to navigate vast waters with minimal effort. Emulating this intuition in autonomous systems remains a significant challenge, particularly for Autonomous Surface Vehicles tasked with long duration missions under strict energy budgets. In this work, we present a learning-based approach for energy-efficient surface vehicle navigation in vortical flow fields, where partial observability often undermines traditional path-planning methods. We present an end to end reinforcement learning framework based on Soft Actor Critic that learns flow-aware navigation policies using only local velocity measurements. Through extensive evaluation across diverse and dynamically rich scenarios, our method demonstrates substantial energy savings and robust generalization to previously unseen flow conditions, offering a promising path toward long term autonomy in ocean environments. The navigation paths generated by our proposed approach show an improvement in energy conservation 30 to 50 percent compared to the existing state of the art techniques.

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