CRYPTOREPORTCLUB
  • Crypto news
  • AI
  • Technologies
Tuesday, July 1, 2025
No Result
View All Result
CRYPTOREPORTCLUB
  • Crypto news
  • AI
  • Technologies
No Result
View All Result
CRYPTOREPORTCLUB

Reinforcement learning for nuclear microreactor control

July 1, 2025
150
0

June 30, 2025

The GIST Reinforcement learning for nuclear microreactor control

Related Post

Federal judge denies OpenAI bid to keep deleting data amid newspaper copyright lawsuit

Federal judge denies OpenAI bid to keep deleting data amid newspaper copyright lawsuit

July 1, 2025
Five surprising facts about AI chatbots that can help you make better use of them

Five surprising facts about AI chatbots that can help you make better use of them

July 1, 2025
Sadie Harley

scientific editor

Andrew Zinin

lead editor

Editors' notes

This article has been reviewed according to Science X's editorial process and policies. Editors have highlighted the following attributes while ensuring the content's credibility:

fact-checked

trusted source

proofread

Reinforcement learning for nuclear microreactor control
A new machine learning approach models adjusting power output of the Holos-Quad microreactor design by HolosGen LLC. The multi-agent reinforcement learning approach trains more efficiently than previous approaches, taking a step forward towards more autonomous nuclear microreactors for operation in remote areas. Credit: HolosGen LLC.

A machine learning approach leverages nuclear microreactor symmetry to reduce training time when modeling power output adjustments, according to a study led by University of Michigan researchers, published in the journal Energy Conversion and Management: X.

Improved training efficiency will help researchers model reactors faster, taking a step toward real-time automated nuclear microreactor control for operation in remote locations or eventually in space.

These compact reactors—able to generate up to 20 megawatts of thermal energy that can be used directly as heat or converted to electricity—could be easily transported or potentially used in cargo ships that wish to take very long trips without refueling. If incorporated into an electrical grid, nuclear microreactors could provide stable, carbon-free energy when renewables like solar or wind are not abundantly available.

Small reactors sidestep the huge capital costs that come with large reactors, and partial automation of microreactor power output control would help keep costs low. In potential space applications—such as directly propelling a spacecraft or providing electrical power to the spacecraft's systems—nuclear microreactors would need to operate completely autonomously.

As a first step toward automation, researchers are simulating load-following—when power plants increase or decrease output to match the electricity demand of the grid. This process is relatively simple to model compared to reactor start-up, which includes rapidly changing conditions that are harder to predict.

The Holos-Quad microreactor design modeled in this study adjusts power through the position of eight control drums that center around the reactor's central core where neutrons split uranium atoms to produce energy. One side of the control drum's circumference is lined with a neutron-absorbing material, boron carbide.

When rotated inwards, the drums absorb neutrons from the core, causing the neutron population and the power to decrease. Rotating the cores outwards keeps more neutrons in the core, increasing power output.

"Deep reinforcement learning builds a model of system dynamics, enabling real-time control—something traditional methods like model predictive control often struggle to achieve due to the repetitive optimization needs," said Majdi Radaideh, an assistant professor of nuclear engineering and radiological sciences at U-M and senior author of the study.

The research team simulated load-following by control drum rotation based on reactor feedback with reinforcement learning—a machine learning paradigm that enables agents to make decisions through repeated interactions with their environment through trial and error. While deep reinforcement learning is highly effective, it requires extensive training which drives up computational time and cost.

For the first time, the researchers tested a multi-agent reinforcement learning approach that trains eight independent agents to control a specific drum while sharing information about the core as a whole. This framework exploits the microreactor's symmetry to help reduce training time by multiplying the learning experience.

The study evaluated the multi-agent reinforcement learning against two other models: a single-agent approach, where a single agent observes core status and controls all eight drums, and the industry-standard proportional-integral-derivative (PID) control, that uses a feedback-based control loop.

Reinforcement learning approaches achieved similar or superior load following compared to PID. In imperfect scenarios where sensors provided imperfect readings or when reactor conditions fluctuated, reinforcement learning maintained lower error rates than PID at up to 150% lower control costs—meaning it reached the solution with less effort.

The multi-agent approach trained at least twice as fast as the single-agent approach with only a slightly higher error rate.

The technique needs extensive validation in more complex, realistic conditions before real-world application, but the findings establish a more efficient path forward for reinforcement learning in autonomous nuclear microreactors.

"This study is a step toward a forward digital twin where reinforcement learning drives system actions. Next, we aim to close the loop with inverse calibration and high-fidelity simulations to enhance control accuracy," Radaideh said.

More information: Leo Tunkle et al, Nuclear microreactor transient and load-following control with deep reinforcement learning, Energy Conversion and Management: X (2025). DOI: 10.1016/j.ecmx.2025.101090

Provided by University of Michigan College of Engineering Citation: Reinforcement learning for nuclear microreactor control (2025, June 30) retrieved 1 July 2025 from https://techxplore.com/news/2025-06-nuclear-microreactor.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.

Explore further

New mathematical model: Punishments and rewards teach AI agents to make the right decisions shares

Feedback to editors

Share212Tweet133ShareShare27ShareSend

Related Posts

Federal judge denies OpenAI bid to keep deleting data amid newspaper copyright lawsuit
AI

Federal judge denies OpenAI bid to keep deleting data amid newspaper copyright lawsuit

July 1, 2025
0

June 30, 2025 The GIST Federal judge denies OpenAI bid to keep deleting data amid newspaper copyright lawsuit Sadie Harley scientific editor Andrew Zinin lead editor Editors' notes This article has been reviewed according to Science X's editorial process and policies. Editors have highlighted the following attributes while ensuring the...

Read moreDetails
Five surprising facts about AI chatbots that can help you make better use of them

Five surprising facts about AI chatbots that can help you make better use of them

July 1, 2025
The rise of ‘artificial historians’: AI as humanity’s record-keeper

The rise of ‘artificial historians’: AI as humanity’s record-keeper

July 1, 2025
Why human empathy still matters in the age of AI

Why human empathy still matters in the age of AI

July 1, 2025
Brain-computer interface robotic hand control reaches new finger-level milestone

Brain-computer interface robotic hand control reaches new finger-level milestone

June 30, 2025
Using generative AI to help robots jump higher and land safely

Using generative AI to help robots jump higher and land safely

June 30, 2025
Creating a 3D interactive digital room from simple video

Creating a 3D interactive digital room from simple video

June 30, 2025

Recent News

The best Prime Day robot vacuum deals for 2025

The best Prime Day robot vacuum deals for 2025

July 1, 2025
Google Keep no longer supports the Apple Watch

Google Keep no longer supports the Apple Watch

July 1, 2025

Dollar Index Suffers Worst Crash Since 1991; Bitcoin’s ‘Stochastic’ Points to Possible Drop Below $100K: Technical Analysis

July 1, 2025
The Morning After: Don’t let an AI run a vending machine

The Morning After: Don’t let an AI run a vending machine

July 1, 2025

TOP News

  • Apple details new fee structures for App Store payments in the EU

    Apple details new fee structures for App Store payments in the EU

    540 shares
    Share 216 Tweet 135
  • Buying Art from a Gallery. A Guide to Making the Right Choice

    534 shares
    Share 214 Tweet 134
  • New Pokémon Legends: Z-A trailer reveals a completely large model of Lumiose Metropolis

    564 shares
    Share 226 Tweet 141
  • Bitcoin Bullishness For Q3 Grows: What Happens In Every Post-Halving Year?

    534 shares
    Share 214 Tweet 134
  • Machine learning methods are best suited to catch liars, according to science of deception detection

    533 shares
    Share 213 Tweet 133
  • About Us
  • Contact Us
  • Privacy Policy
  • Terms of Use
Advertising: digestmediaholding@gmail.com

Disclaimer: Information found on cryptoreportclub.com is those of writers quoted. It does not represent the opinions of cryptoreportclub.com on whether to sell, buy or hold any investments. You are advised to conduct your own research before making any investment decisions. Use provided information at your own risk.
cryptoreportclub.com covers fintech, blockchain and Bitcoin bringing you the latest crypto news and analyses on the future of money.

© 2023-2025 Cryptoreportclub. All Rights Reserved

Welcome Back!

Login to your account below

Forgotten Password?

Retrieve your password

Please enter your username or email address to reset your password.

Log In
No Result
View All Result
  • Crypto news
  • AI
  • Technologies

Disclaimer: Information found on cryptoreportclub.com is those of writers quoted. It does not represent the opinions of cryptoreportclub.com on whether to sell, buy or hold any investments. You are advised to conduct your own research before making any investment decisions. Use provided information at your own risk.
cryptoreportclub.com covers fintech, blockchain and Bitcoin bringing you the latest crypto news and analyses on the future of money.

© 2023-2025 Cryptoreportclub. All Rights Reserved