Close Menu
UK Daily: Tech, Science, Business & Lifestyle News UpdatesUK Daily: Tech, Science, Business & Lifestyle News Updates
    What's Hot

    Dartford Crossing QEII Bridge to close this weekend

    December 15, 2025

    M1 northbound between J13 and J14 | Northbound | Broken down vehicle

    December 14, 2025

    Grok got crucial facts wrong about Bondi Beach shooting

    December 14, 2025
    Facebook X (Twitter) Instagram
    Trending
    • Dartford Crossing QEII Bridge to close this weekend
    • M1 northbound between J13 and J14 | Northbound | Broken down vehicle
    • Grok got crucial facts wrong about Bondi Beach shooting
    • Councillors approve next steps for Hailsham housing development
    • Season 2 Streaming Details – Hollywood Life
    • Mesa shuts down credit card that rewarded cardholders for paying their mortgages
    • Memecoins Are Not Dead, but Will Return in Another Form: Crypto Exec
    • How Did the Actor Die? – Hollywood Life
    • London
    • Kent
    • Glasgow
    • Cardiff
    • Belfast
    Facebook X (Twitter) Instagram YouTube
    UK Daily: Tech, Science, Business & Lifestyle News UpdatesUK Daily: Tech, Science, Business & Lifestyle News Updates
    Subscribe
    Monday, December 15
    • Home
    • News
      1. Kent
      2. London
      3. Belfast
      4. Birmingham
      5. Cardiff
      6. Edinburgh
      7. Glasgow
      8. Liverpool
      9. Manchester
      10. Newcastle
      11. Nottingham
      12. Sheffield
      13. West Yorkshire
      Featured

      ‘Miniature’ mountain creature with ‘squeaker’-like call discovered as new species

      Science November 9, 2023
      Recent

      Dartford Crossing QEII Bridge to close this weekend

      December 15, 2025

      M1 northbound between J13 and J14 | Northbound | Broken down vehicle

      December 14, 2025

      Grok got crucial facts wrong about Bondi Beach shooting

      December 14, 2025
    • Lifestyle
      1. Celebrity
      2. Fashion
      3. Food
      4. Leisure
      5. Social Good
      6. Trending
      7. Wellness
      8. Event
      Featured

      Season 2 Streaming Details – Hollywood Life

      Celebrity December 14, 2025
      Recent

      Season 2 Streaming Details – Hollywood Life

      December 14, 2025

      How Did the Actor Die? – Hollywood Life

      December 14, 2025

      Who Is Josh Dun? 5 Things to Know About Debby Ryan’s Husband – Hollywood Life

      December 14, 2025
    • Science
    • Business
    • Sports

      Chatham Town through to round four, Maidstone United beaten by Yeovil on penalties

      December 13, 2025

      League 2 match reaction from Gills boss Gareth Ainsworth

      December 13, 2025

      Whitstable Town go five points clear, nine-man Larkfield & New Hythe lose at Phoenix Sports, Bearsted up to third

      December 13, 2025

      Leaders Folkestone Invicta win derby at Dartford, two wins in a row for Ashford United, Sittingbourne and Sheppey United hit the goal trail

      December 13, 2025

      League 2 match report from Priestfield Stadium

      December 13, 2025
    • Politics
    • Tech
    • Property
    • Press Release
    UK Daily: Tech, Science, Business & Lifestyle News UpdatesUK Daily: Tech, Science, Business & Lifestyle News Updates
    Home » A faster problem-solving tool that guarantees feasibility | MIT News

    A faster problem-solving tool that guarantees feasibility | MIT News

    bibhutiBy bibhutiDecember 9, 2025 Tech No Comments5 Mins Read
    Facebook Twitter LinkedIn WhatsApp Telegram
    Share
    Facebook Twitter LinkedIn Telegram WhatsApp



    Managing a power grid is like trying to solve an enormous puzzle.

    Grid operators must ensure the proper amount of power is flowing to the right areas at the exact time when it is needed, and they must do this in a way that minimizes costs without overloading physical infrastructure. Even more, they must solve this complicated problem repeatedly, as rapidly as possible, to meet constantly changing demand.

    To help crack this consistent conundrum, MIT researchers developed a problem-solving tool that finds the optimal solution much faster than traditional approaches while ensuring the solution doesn’t violate any of the system’s constraints. In a power grid, constraints could be things like generator and line capacity.

    This new tool incorporates a feasibility-seeking step into a powerful machine-learning model trained to solve the problem. The feasibility-seeking step uses the model’s prediction as a starting point, iteratively refining the solution until it finds the best achievable answer.

    The MIT system can unravel complex problems several times faster than traditional solvers, while providing strong guarantees of success. For some extremely complex problems, it could find better solutions than tried-and-true tools. The technique also outperformed pure machine learning approaches, which are fast but can’t always find feasible solutions.

    In addition to helping schedule power production in an electric grid, this new tool could be applied to many types of complicated problems, such as designing new products, managing investment portfolios, or planning production to meet consumer demand.

    “Solving these especially thorny problems well requires us to combine tools from machine learning, optimization, and electrical engineering to develop methods that hit the right tradeoffs in terms of providing value to the domain, while also meeting its requirements. You have to look at the needs of the application and design methods in a way that actually fulfills those needs,” says Priya Donti, the Silverman Family Career Development Professor in the Department of Electrical Engineering and Computer Science (EECS) and a principal investigator at the Laboratory for Information and Decision Systems (LIDS).

    Donti, senior author of an open-access paper on this new tool, called FSNet, is joined by lead author Hoang Nguyen, an EECS graduate student. The paper will be presented at the Conference on Neural Information Processing Systems.

    Combining approaches

    Ensuring optimal power flow in an electric grid is an extremely hard problem that is becoming more difficult for operators to solve quickly.

    “As we try to integrate more renewables into the grid, operators must deal with the fact that the amount of power generation is going to vary moment to moment. At the same time, there are many more distributed devices to coordinate,” Donti explains.

    Grid operators often rely on traditional solvers, which provide mathematical guarantees that the optimal solution doesn’t violate any problem constraints. But these tools can take hours or even days to arrive at that solution if the problem is especially convoluted.

    On the other hand, deep-learning models can solve even very hard problems in a fraction of the time, but the solution might ignore some important constraints. For a power grid operator, this could result in issues like unsafe voltage levels or even grid outages.

    “Machine-learning models struggle to satisfy all the constraints due to the many errors that occur during the training process,” Nguyen explains.

    For FSNet, the researchers combined the best of both approaches into a two-step problem-solving framework.

    Focusing on feasibility

    In the first step, a neural network predicts a solution to the optimization problem. Very loosely inspired by neurons in the human brain, neural networks are deep learning models that excel at recognizing patterns in data.

    Next, a traditional solver that has been incorporated into FSNet performs a feasibility-seeking step. This optimization algorithm iteratively refines the initial prediction while ensuring the solution does not violate any constraints.

    Because the feasibility-seeking step is based on a mathematical model of the problem, it can guarantee the solution is deployable.

    “This step is very important. In FSNet, we can have the rigorous guarantees that we need in practice,” Hoang says.

    The researchers designed FSNet to address both main types of constraints (equality and inequality) at the same time. This makes it easier to use than other approaches that may require customizing the neural network or solving for each type of constraint separately.

    “Here, you can just plug and play with different optimization solvers,” Donti says.

    By thinking differently about how the neural network solves complex optimization problems, the researchers were able to unlock a new technique that works better, she adds.

    They compared FSNet to traditional solvers and pure machine-learning approaches on a range of challenging problems, including power grid optimization. Their system cut solving times by orders of magnitude compared to the baseline approaches, while respecting all problem constraints.

    FSNet also found better solutions to some of the trickiest problems.

    “While this was surprising to us, it does make sense. Our neural network can figure out by itself some additional structure in the data that the original optimization solver was not designed to exploit,” Donti explains.

    In the future, the researchers want to make FSNet less memory-intensive, incorporate more efficient optimization algorithms, and scale it up to tackle more realistic problems.

    “Finding solutions to challenging optimization problems that are feasible is paramount to finding ones that are close to optimal. Especially for physical systems like power grids, close to optimal means nothing without feasibility. This work provides an important step toward ensuring that deep-learning models can produce predictions that satisfy constraints, with explicit guarantees on constraint enforcement,” says Kyri Baker, an associate professor at the University of Colorado Boulder, who was not involved with this work.

    “A persistent challenge for machine learning-based optimization is feasibility. This work elegantly couples end-to-end learning with an unrolled feasibility-seeking procedure that minimizes equality and inequality violations. The results are very promising and I look forward to see where this research will head,” adds Ferdinando Fioretto, an assistant professor at the University of Virginia, who was not involved with this work.



    Source link

    Featured Just In Top News
    Share. Facebook Twitter LinkedIn Email
    Previous ArticleClaude Code is coming to Slack, and that’s a bigger deal than it sounds
    Next Article Burglar jailed after being caught red-handed stealing cash from Maidstone shop
    bibhuti
    • Website

    Keep Reading

    Dartford Crossing QEII Bridge to close this weekend

    M1 northbound between J13 and J14 | Northbound | Broken down vehicle

    Grok got crucial facts wrong about Bondi Beach shooting

    Councillors approve next steps for Hailsham housing development

    Season 2 Streaming Details – Hollywood Life

    Mesa shuts down credit card that rewarded cardholders for paying their mortgages

    Add A Comment
    Leave A Reply Cancel Reply

    Editors Picks

    89th Utkala Dibasa Celebration Brings Odisha’s Vibrant Culture to London

    April 8, 2024

    US and EU pledge to foster connections to enhance research on AI safety and risk.

    April 5, 2024

    Holi Celebrations Across Various Locations in Kent Attract a Diverse Range of Community Participation

    March 25, 2024

    Plans for new Bromley tower blocks up to 14-storeys tall refused

    December 4, 2023
    Latest Posts

    Subscribe to News

    Get the latest sports news from NewsSite about world, sports and politics.

    Advertisement

    Recent Posts

    • Dartford Crossing QEII Bridge to close this weekend
    • M1 northbound between J13 and J14 | Northbound | Broken down vehicle
    • Grok got crucial facts wrong about Bondi Beach shooting
    • Councillors approve next steps for Hailsham housing development
    • Season 2 Streaming Details – Hollywood Life

    Recent Comments

    1. Register on Anycubic users say their 3D printers were hacked to warn of a security flaw
    2. Pembuatan Akun Binance on Braiins Becomes First Mining Pool To Introduce Lightning Payouts
    3. tadalafil tablets sale on The market is forcing cloud vendors to relax data egress fees
    4. cerebrozen reviews on Kent director of cricket Simon Cook adapting to his new role during the close season
    5. Glycogen Review on The little-known town just 5 miles from Kent border with stunning beaches and only 600 residents
    The News Times Logo
    Facebook X (Twitter) Pinterest Vimeo WhatsApp TikTok Instagram

    News

    • UK News
    • US Politics
    • EU Politics
    • Business
    • Opinions
    • Connections
    • Science

    Company

    • Information
    • Advertising
    • Classified Ads
    • Contact Info
    • Do Not Sell Data
    • GDPR Policy
    • Media Kits

    Services

    • Subscriptions
    • Customer Support
    • Bulk Packages
    • Newsletters
    • Sponsored News
    • Work With Us

    Subscribe to Updates

    Get the latest creative news from FooBar about art, design and business.

    © 2025 The News Times. Designed by The News Times.
    • Privacy Policy
    • Terms
    • Accessibility

    Type above and press Enter to search. Press Esc to cancel.

    Manage Cookie Consent
    To provide the best experiences, we use technologies like cookies to store and/or access device information. Consenting to these technologies will allow us to process data such as browsing behavior or unique IDs on this site. Not consenting or withdrawing consent, may adversely affect certain features and functions.
    Functional Always active
    The technical storage or access is strictly necessary for the legitimate purpose of enabling the use of a specific service explicitly requested by the subscriber or user, or for the sole purpose of carrying out the transmission of a communication over an electronic communications network.
    Preferences
    The technical storage or access is necessary for the legitimate purpose of storing preferences that are not requested by the subscriber or user.
    Statistics
    The technical storage or access that is used exclusively for statistical purposes. The technical storage or access that is used exclusively for anonymous statistical purposes. Without a subpoena, voluntary compliance on the part of your Internet Service Provider, or additional records from a third party, information stored or retrieved for this purpose alone cannot usually be used to identify you.
    Marketing
    The technical storage or access is required to create user profiles to send advertising, or to track the user on a website or across several websites for similar marketing purposes.
    • Manage options
    • Manage services
    • Manage {vendor_count} vendors
    • Read more about these purposes
    View preferences
    • {title}
    • {title}
    • {title}