Reinforcement learning allows underwater robots to locate and track objects underwater

Scientists from the Institut de Ciències del Mar (ICM-CSIC) in Barcelona, in collaboration with the Monterey Bay Aquarium Research Institute (MBARI) in California, the Universitat Politècnica de Catalunya (UPC), and the Universitat de Girona (UdG), have achieved a groundbreaking development in underwater robotics. They have demonstrated, for the first time, that reinforcement learning, a type of machine learning where a neural network learns the best actions to perform based on rewards, enables autonomous vehicles and underwater robots to locate and track marine objects and animals effectively.

The use of underwater robotics has become increasingly important for exploring the depths of the ocean, as these vehicles can reach depths of up to 4,000 meters and provide valuable in-situ data that complements satellite observations. This technology is instrumental in studying various phenomena, including CO2 capture by marine organisms, which plays a role in climate change regulation.

Reinforcement learning, commonly employed in control, robotics, and natural language processing applications like ChatGPT, allows neural networks to optimize specific tasks that would otherwise be challenging to achieve. By training the robots with this learning method, the researchers successfully optimized the trajectory of the vehicles, enabling them to locate and track moving underwater objects with precision.

Ivan Masmitjà, the lead author of the study, emphasizes the significance of this learning approach in advancing ecological research, such as studying migration and movement of marine species at different scales, using autonomous robots. Additionally, the technology’s progress will facilitate real-time monitoring of oceanographic instruments through a network of robots, with some operating on the surface and others on the seabed, transmitting data via satellite.

The team employed range acoustic techniques to estimate the position of objects based on distance measurements taken from different points. However, the accuracy of object localization depended on where the acoustic range measurements were taken. To address this issue, artificial intelligence, specifically reinforcement learning, was crucial in identifying the best points and determining the optimal trajectory for the robot.

The neural networks were trained using the computer cluster at the Barcelona Supercomputing Center (BSC-CNS), which houses one of Europe’s most powerful supercomputers. This significantly accelerated the parameter adjustments for different algorithms compared to conventional computers.

Overall, this breakthrough in underwater robotics and the successful application of reinforcement learning pave the way for more in-depth ecological studies, as well as enhanced oceanographic monitoring, through a network of autonomous underwater robots.

Posted in

Aihub Team

Leave a Comment





Healthcare AI Expansion: From Experimental Use to Enterprise-Wide Impact

AI Ethics, Governance & Risk Management: Building Trust in the Age of Intelligent Systems

Generative AI likely to augment rather than destroy jobs

AI Infrastructure & Unified Stacks: The Backbone of Scalable AI in 2026

AI Sports Predictions & Analytics: A Complete 2025 Guide to Machine Learning in Sports

The 2025 Shift from Nvidia GPUs to Google TPUs and the $6.32B Inference Cost Challenge

Space-Based Data Centers: The Next Frontier of AI Computing in 2025

Top 5 Free Online File Converters in 2026: Powerful and Versatile Tools

The Top 10 AI Trends That Defined 2025: A Year-End Intelligence Review

The 1 nm Wall: How Computing Advances When Chips Can’t Shrink Further

The 10 AI Robotics Companies Driving Intelligent Automation in 2026

Anthropic Launches Claude Cowork, Raising Questions About Leadership in Enterprise AI

Superlinear Raises €6M to Power the Future of Enterprise Orchestration with AI

Generative AI & Large Language Models

AI for Climate Change and Sustainability

Top 4 Types of AI

Game-Changing Assist: How AI is Revolutionizing the World of Sports

Artificial Intelligence and Machine Learning

Groundbreaking soft valve technology enabling sensing and control integration in soft robots

Groundbreaking soft valve technology enabling sensing and control integration in soft robots

AI and Digital MarketingThe Future is Now: AI-Powered Digital Marketing StrategiesAI and Digital Marketing

UK and Israel sign £1.7m tech collaboration deal

UK and Israel sign £1.7m tech collaboration deal

'Brainless' robot can navigate complex obstacles

‘Brainless’ robot can navigate complex obstacles

Welcome to AI Hub.Today – A leading online platform

“Truly Mind-Boggling” Breakthrough: Graphene Surprise Could Help Generate Hydrogen Cheaply and Sustainably

“Truly Mind-Boggling” Breakthrough: Graphene Surprise Could Help Generate Hydrogen Cheaply and Sustainably

Verbal nonsense reveals limitations of AI chatbots

Verbal nonsense reveals limitations of AI chatbots

How AI helps travel industry

Building reliable Machine Learning models with limited training data

Building reliable Machine Learning models with limited training data

Blue Walker 3 satellite establishes its first 5G connection

Blue Walker 3 satellite establishes its first 5G connection

UK net zero policies revised: Rishi Sunak announces delays to EV transition

UK net zero policies revised: Rishi Sunak announces delays to EV transition

Ecology and artificial intelligence: Stronger together

Ecology and artificial intelligence: Stronger together

Evolution wired human brains to act like supercomputers

Evolution wired human brains to act like supercomputers