• Business
  • Markets
  • Politics
  • Crypto
  • Finance
  • Intelligence
    • Policy Intelligence
    • Security Intelligence
    • Economic Intelligence
    • Fashion Intelligence
  • Energy
  • Technology
  • Taxes
  • Creator Economy
  • Wealth Management
  • LBNN Blueprints
  • Business
  • Markets
  • Politics
  • Crypto
  • Finance
  • Intelligence
    • Policy Intelligence
    • Security Intelligence
    • Economic Intelligence
    • Fashion Intelligence
  • Energy
  • Technology
  • Taxes
  • Creator Economy
  • Wealth Management
  • LBNN Blueprints

AI-enabled control system helps autonomous drones stay on target in uncertain environments

Simon Osuji by Simon Osuji
June 10, 2025
in Artificial Intelligence
0
AI-enabled control system helps autonomous drones stay on target in uncertain environments
0
SHARES
0
VIEWS
Share on FacebookShare on Twitter


drone
Credit: CC0 Public Domain

An autonomous drone carrying water to help extinguish a wildfire in the Sierra Nevada might encounter swirling Santa Ana winds that threaten to push it off course. Rapidly adapting to these unknown disturbances inflight presents an enormous challenge for the drone’s flight control system.

Related posts

Big Tech Signs White House Data Center Pledge With Good Optics and Little Substance

Big Tech Signs White House Data Center Pledge With Good Optics and Little Substance

March 4, 2026
Trump’s War on Iran Could Screw Over US Farmers

Trump’s War on Iran Could Screw Over US Farmers

March 4, 2026

To help such a drone stay on target, MIT researchers developed a new, machine learning-based adaptive control algorithm that could minimize its deviation from its intended trajectory in the face of unpredictable forces like gusty winds.

The study is published on the arXiv preprint server.

Unlike standard approaches, the new technique does not require the person programming the autonomous drone to know anything in advance about the structure of these uncertain disturbances.

Instead, the control system’s artificial intelligence model learns all it needs to know from a small amount of observational data collected from 15 minutes of flight time.

Importantly, the technique automatically determines which optimization algorithm it should use to adapt to the disturbances, which improves tracking performance. It chooses the algorithm that best suits the geometry of specific disturbances this drone is facing.

The researchers train their control system to do both things simultaneously using a technique called meta-learning, which teaches the system how to adapt to different types of disturbances.

Taken together, these ingredients enable their adaptive control system to achieve 50% less trajectory tracking error than baseline methods in simulations and perform better with new wind speeds it didn’t see during training.

In the future, this adaptive control system could help autonomous drones more efficiently deliver heavy parcels despite strong winds or monitor fire-prone areas of a national park.

“The concurrent learning of these components is what gives our method its strength. By leveraging meta-learning, our controller can automatically make choices that will be best for quick adaptation,” says Navid Azizan, who is the Esther and Harold E. Edgerton Assistant Professor in the MIT Department of Mechanical Engineering and the Institute for Data, Systems, and Society (IDSS), a principal investigator of the Laboratory for Information and Decision Systems (LIDS), and the senior author of the paper.

Azizan is joined on the paper by lead author Sunbochen Tang, a graduate student in the Department of Aeronautics and Astronautics, and Haoyuan Sun, a graduate student in the Department of Electrical Engineering and Computer Science. The research was also presented at the Learning for Dynamics and Control Conference.

Finding the right algorithm

Typically, a control system incorporates a function that models the drone and its environment, and includes some existing information on the structure of potential disturbances. But in a real world filled with uncertain conditions, it is often impossible to hand-design this structure in advance.

Many control systems use an adaptation method based on a popular optimization algorithm, known as gradient descent, to estimate the unknown parts of the problem and determine how to keep the drone as close as possible to its target trajectory during flight. However, gradient descent is only one algorithm in a larger family of algorithms available to choose, known as mirror descent.

“Mirror descent is a general family of algorithms, and for any given problem, one of these algorithms can be more suitable than others. The name of the game is how to choose the particular algorithm that is right for your problem. In our method, we automate this choice,” Azizan says.

In their control system, the researchers replaced the function that contains some structure of potential disturbances with a neural network model that learns to approximate them from data. In this way, they don’t need to have an a priori structure of the wind speeds this drone could encounter in advance.

Their method also uses an algorithm to automatically select the right mirror-descent function while learning the neural network model from data, rather than assuming a user has the ideal function picked out already. The researchers give this algorithm a range of functions to pick from, and it finds the one that best fits the problem at hand.

“Choosing a good distance-generating function to construct the right mirror-descent adaptation matters a lot in getting the right algorithm to reduce the tracking error,” Tang adds.

Learning to adapt

While the wind speeds the drone may encounter could change every time it takes flight, the controller’s neural network and mirror function should stay the same so they don’t need to be recomputed each time.

To make their controller more flexible, the researchers use meta-learning, teaching it to adapt by showing it a range of wind speed families during training.

“Our method can cope with different objectives because, using meta-learning, we can learn a shared representation through different scenarios efficiently from data,” Tang explains.

In the end, the user feeds the control system a target trajectory and it continuously recalculates, in real-time, how the drone should produce thrust to keep it as close as possible to that trajectory while accommodating the uncertain disturbance it encounters.

In both simulations and real-world experiments, the researchers showed that their method led to significantly less trajectory tracking error than baseline approaches with every wind speed they tested.

“Even if the wind disturbances are much stronger than we had seen during training, our technique shows that it can still handle them successfully,” Azizan adds.

In addition, the margin by which their method outperformed the baselines grew as the wind speeds intensified, showing that it can adapt to challenging environments.

The team is now performing hardware experiments to test their control system on real drones with varying wind conditions and other disturbances.

They also want to extend their method so it can handle disturbances from multiple sources at once. For instance, changing wind speeds could cause the weight of a parcel the drone is carrying to shift in flight, especially when the drone is carrying sloshing payloads.

They also want to explore continual learning, so the drone could adapt to new disturbances without the need to also be retrained on the data it has seen so far.

“Navid and his collaborators have developed breakthrough work that combines meta-learning with conventional adaptive control to learn nonlinear features from data,” says Babak Hassibi, the Mose and Lillian S. Bohn Professor of Electrical Engineering and Computing and Mathematical Sciences at Caltech, who was not involved with this work.

“Key to their approach is the use of mirror descent techniques that exploit the underlying geometry of the problem in ways prior art could not. Their work can contribute significantly to the design of autonomous systems that need to operate in complex and uncertain environments.”

More information:
Sunbochen Tang et al, Meta-Learning for Adaptive Control with Automated Mirror Descent, arXiv (2024). DOI: 10.48550/arxiv.2407.20165

Journal information:
arXiv

Provided by
Massachusetts Institute of Technology

This story is republished courtesy of MIT News (web.mit.edu/newsoffice/), a popular site that covers news about MIT research, innovation and teaching.

Citation:
AI-enabled control system helps autonomous drones stay on target in uncertain environments (2025, June 10)
retrieved 10 June 2025
from https://techxplore.com/news/2025-06-ai-enabled-autonomous-drones-stay.html

This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
part may be reproduced without the written permission. The content is provided for information purposes only.





Source link

Previous Post

Inside ‘Culture Shock’ at Goldman Sachs, ‘Black Capitalism’

Next Post

Transparency: A strategic tool for mobilising climate finance – EnviroNews

Next Post
Transparency: A strategic tool for mobilising climate finance – EnviroNews

Transparency: A strategic tool for mobilising climate finance - EnviroNews

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

RECOMMENDED NEWS

Lulu Retail to join FTSE Global Equity Index Series

Lulu Retail to join FTSE Global Equity Index Series

9 months ago
FDA’s new accelerated pathway may open pharma up to risks, as well as benefits

FDA’s new accelerated pathway may open pharma up to risks, as well as benefits

6 months ago
Uk-Based Energean exits Moroccan offshore, returns licenses to Chariot

Uk-Based Energean exits Moroccan offshore, returns licenses to Chariot

10 months ago
Taiwan Army Unveils M1167 Humvee With Improved Combat, Armor Capabilities

Taiwan Army Unveils M1167 Humvee With Improved Combat, Armor Capabilities

11 months ago

POPULAR NEWS

  • Ghana to build three oil refineries, five petrochemical plants in energy sector overhaul

    Ghana to build three oil refineries, five petrochemical plants in energy sector overhaul

    0 shares
    Share 0 Tweet 0
  • Mahama attends Liberia’s 178th independence anniversary

    0 shares
    Share 0 Tweet 0
  • The world’s top 10 most valuable car brands in 2025

    0 shares
    Share 0 Tweet 0
  • Top 10 African countries with the highest GDP per capita in 2025

    0 shares
    Share 0 Tweet 0
  • Global ranking of Top 5 smartphone brands in Q3, 2024

    0 shares
    Share 0 Tweet 0

Get strategic intelligence you won’t find anywhere else. Subscribe to the Limitless Beliefs Newsletter for monthly insights on overlooked business opportunities across Africa.

Subscription Form

© 2026 LBNN – All rights reserved.

Privacy Policy | About Us | Contact

Tiktok Youtube Telegram Instagram Linkedin X-twitter
No Result
View All Result
  • Home
  • Business
  • Politics
  • Markets
  • Crypto
  • Economics
    • Manufacturing
    • Real Estate
    • Infrastructure
  • Finance
  • Energy
  • Creator Economy
  • Wealth Management
  • Taxes
  • Telecoms
  • Military & Defense
  • Careers
  • Technology
  • Artificial Intelligence
  • Investigative journalism
  • Art & Culture
  • LBNN Blueprints
  • Quizzes
    • Enneagram quiz
  • Fashion Intelligence

© 2023 LBNN - All rights reserved.