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Low power, non-intrusive 3D localization for underwater mobile robots

Suryansh Sharma, Daniel Van Passen, Ramjee Prasad, Kaushik Chowdhury

发表年份
2025
引用次数
2
访问权限
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摘要

Autonomous Underwater Vehicles (AUVs) face persistent challenges in localization compared to their counterparts on the ground due to limitations with methods like Global Positioning System (GPS). We propose a novel system for localization, Pisces, that leverages the Angle of Arrival (AoA) and Received Signal Strength Ratio (RSSR) of robot-mounted blue LED signals. This method provides a spectrally efficient training-free solution for estimating 3D underwater positions. The system remains effective despite high water turbidity with a relatively low impact on marine life compared to similar acoustic methods. Pisces is less complex, computationally efficient, and uses less power than camera-based solutions. Pisces enables robust relative localization, especially in swarms of robots with the potential for additional applications like docking. We demonstrate high localization accuracy with a Mean Absolute Error (MAE) of 0.031 m at 0.32 m separation and 0.16 m MAE at 1 m separation. Moreover, it achieved this with minimal power consumption, utilizing only 11 mA of transmitter LED current and performing 3D localization within 10 ms for distances up to 3 m. Suryansh Sharma and colleagues present Pisces, a system for 3D localization of autonomous underwater mobile robots using blue LED signals and photodiodes. It enhances efficiency and coordination in applications like environmental monitoring and underwater exploration, even in turbid water conditions.

关键词

UnderwaterMobile robotPower (physics)Computer scienceRobotArtificial intelligenceMarine engineeringGeologyEngineeringPhysics

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