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Nu—A Marine Life Monitoring and Exploration Submarine System

Technologies 2025 2 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 58 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Ali A. M. R. Behiry, Fikrat M. Hassan, Fikrat M. Hassan, Fikrat M. Hassan, Fikrat M. Hassan, Tarek Dafar, Tarek Dafar, Ahmed Hassan, Fikrat M. Hassan, Abdullah AlGohary, Abdullah AlGohary, Mounib Khanafer

Summary

This paper introduces Nu, a 3D-printed remotely operated underwater vehicle designed for marine life monitoring without the risks and costs of human diving. The submarine uses long-range wireless communication and onboard sensors to observe marine ecosystems while minimizing disturbance to underwater habitats.

Marine life exploration is constrained by factors such as limited scuba diving time, depth restrictions for divers, costly expeditions, safety risks to divers’ health, and minimizing harm to marine ecosystems, where traditional diving often risks disturbing marine life. This paper introduces Nu (named after an ancient Egyptian deity), a 3D-printed Remotely Operated Underwater Vehicle (ROUV) designed in an attempt to address these challenges. Nu employs Long Range (LoRa), a low-power and long-range communication technology, enabling wireless operation via a manual controller. The vehicle features an onboard live-feed camera with a separate communication system that transmits video to an external real-time machine learning (ML) pipeline for fish species classification, reducing human error by taxonomists. It uses Brushless Direct Current (BLDC) motors for long-distance movement and water pump motors for precise navigation, minimizing disturbance, and reducing damage to surrounding species. Nu’s functionality was evaluated in a controlled 2.5-m-deep body of water, focusing on connectivity, maneuverability, and fish identification accuracy. The fish detection algorithm achieved an average precision of 60% in identifying fish presence, while the classification model achieved 97% precision in assigning species labels, with unknown species flagged correctly. The testing of Nu in a controlled environment has met the system design expectations.

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