Close Menu
    Trending
    • Undetectable AI vs. Grammarly’s AI Humanizer: What’s Better with ChatGPT?
    • Do You Really Need a Foundation Model?
    • xAI lanserar AI-sällskap karaktärer genom Grok-plattformen
    • How to more efficiently study complex treatment interactions | MIT News
    • Claude får nya superkrafter med verktygskatalog
    • How Metrics (and LLMs) Can Trick You: A Field Guide to Paradoxes
    • Så här påverkar ChatGPT vårt vardagsspråk
    • Deploy a Streamlit App to AWS
    ProfitlyAI
    • Home
    • Latest News
    • AI Technology
    • Latest AI Innovations
    • AI Tools & Technologies
    • Artificial Intelligence
    ProfitlyAI
    Home » Robotic probe quickly measures key properties of new materials | MIT News
    Artificial Intelligence

    Robotic probe quickly measures key properties of new materials | MIT News

    ProfitlyAIBy ProfitlyAIJuly 4, 2025No Comments6 Mins Read
    Share Facebook Twitter Pinterest LinkedIn Tumblr Reddit Telegram Email
    Share
    Facebook Twitter LinkedIn Pinterest Email

    Scientists are striving to find new semiconductor supplies that would enhance the effectivity of photo voltaic cells and different electronics. However the tempo of innovation is bottlenecked by the velocity at which researchers can manually measure vital materials properties.

    A completely autonomous robotic system developed by MIT researchers may velocity issues up.

    Their system makes use of a robotic probe to measure an vital electrical property referred to as photoconductance, which is how electrically responsive a cloth is to the presence of sunshine.

    The researchers inject materials-science-domain information from human specialists into the machine-learning mannequin that guides the robotic’s resolution making. This allows the robotic to determine one of the best locations to contact a cloth with the probe to achieve probably the most details about its photoconductance, whereas a specialised planning process finds the quickest method to transfer between contact factors.

    Throughout a 24-hour take a look at, the totally autonomous robotic probe took greater than 125 distinctive measurements per hour, with extra precision and reliability than different synthetic intelligence-based strategies.

    By dramatically rising the velocity at which scientists can characterize vital properties of latest semiconductor supplies, this methodology may spur the event of photo voltaic panels that produce extra electrical energy.

    “I discover this paper to be extremely thrilling as a result of it offers a pathway for autonomous, contact-based characterization strategies. Not each vital property of a cloth may be measured in a contactless means. If you’ll want to make contact along with your pattern, you need it to be quick and also you wish to maximize the quantity of knowledge that you just acquire,” says Tonio Buonassisi, professor of mechanical engineering and senior creator of a paper on the autonomous system.

    His co-authors embody lead creator Alexander (Aleks) Siemenn, a graduate pupil; postdocs Basita Das and Kangyu Ji; and graduate pupil Fang Sheng. The work seems at present in Science Advances.

    Making contact

    Since 2018, researchers in Buonassisi’s laboratory have been working towards a totally autonomous supplies discovery laboratory. They’ve lately targeted on discovering new perovskites, that are a category of semiconductor supplies utilized in photovoltaics like photo voltaic panels.

    In prior work, they developed strategies to quickly synthesize and print distinctive mixtures of perovskite materials. In addition they designed imaging-based methods to find out some vital materials properties.

    However photoconductance is most precisely characterised by inserting a probe onto the fabric, shining a lightweight, and measuring {the electrical} response.

    “To permit our experimental laboratory to function as rapidly and precisely as doable, we needed to give you an answer that will produce one of the best measurements whereas minimizing the time it takes to run the entire process,” says Siemenn.

    Doing so required the mixing of machine studying, robotics, and materials science into one autonomous system.

    To start, the robotic system makes use of its onboard digital camera to take a picture of a slide with perovskite materials printed on it.

    Then it makes use of laptop imaginative and prescient to chop that picture into segments, that are fed right into a neural community mannequin that has been specifically designed to include area experience from chemists and supplies scientists.

    “These robots can enhance the repeatability and precision of our operations, however you will need to nonetheless have a human within the loop. If we don’t have a great way to implement the wealthy information from these chemical specialists into our robots, we aren’t going to have the ability to uncover new supplies,” Siemenn provides.

    The mannequin makes use of this area information to find out the optimum factors for the probe to contact primarily based on the form of the pattern and its materials composition. These contact factors are fed right into a path planner that finds probably the most environment friendly means for the probe to achieve all factors.

    The adaptability of this machine-learning strategy is particularly vital as a result of the printed samples have distinctive shapes, from round drops to jellybean-like buildings.

    “It’s virtually like measuring snowflakes — it’s tough to get two which might be an identical,” Buonassisi says.

    As soon as the trail planner finds the shortest path, it sends alerts to the robotic’s motors, which manipulate the probe and take measurements at every contact level in fast succession.

    Key to the velocity of this strategy is the self-supervised nature of the neural community mannequin. The mannequin determines optimum contact factors instantly on a pattern picture — with out the necessity for labeled coaching information.

    The researchers additionally accelerated the system by enhancing the trail planning process. They discovered that including a small quantity of noise, or randomness, to the algorithm helped it discover the shortest path.

    “As we progress on this age of autonomous labs, you actually do want all three of those experience — {hardware} constructing, software program, and an understanding of supplies science — coming collectively into the identical workforce to have the ability to innovate rapidly. And that’s a part of the key sauce right here,” Buonassisi says.

    Wealthy information, fast outcomes

    As soon as that they had constructed the system from the bottom up, the researchers examined every element. Their outcomes confirmed that the neural community mannequin discovered higher contact factors with much less computation time than seven different AI-based strategies. As well as, the trail planning algorithm persistently discovered shorter path plans than different strategies.

    Once they put all of the items collectively to conduct a 24-hour totally autonomous experiment, the robotic system performed greater than 3,000 distinctive photoconductance measurements at a price exceeding 125 per hour.

    As well as, the extent of element offered by this exact measurement strategy enabled the researchers to determine hotspots with greater photoconductance in addition to areas of fabric degradation.

    “Having the ability to collect such wealthy information that may be captured at such quick charges, with out the necessity for human steering, begins to open up doorways to have the ability to uncover and develop new high-performance semiconductors, particularly for sustainability purposes like photo voltaic panels,” Siemenn says.

    The researchers wish to proceed constructing on this robotic system as they try to create a totally autonomous lab for supplies discovery.

    This work is supported, partially, by First Photo voltaic, Eni by means of the MIT Power Initiative, MathWorks, the College of Toronto’s Acceleration Consortium, the U.S. Division of Power, and the U.S. Nationwide Science Basis.



    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Previous ArticleRethinking Data Science Interviews in the Age of AI
    Next Article My Honest Advice for Aspiring Machine Learning Engineers
    ProfitlyAI
    • Website

    Related Posts

    Artificial Intelligence

    Do You Really Need a Foundation Model?

    July 16, 2025
    Artificial Intelligence

    How to more efficiently study complex treatment interactions | MIT News

    July 16, 2025
    Artificial Intelligence

    How Metrics (and LLMs) Can Trick You: A Field Guide to Paradoxes

    July 16, 2025
    Add A Comment
    Leave A Reply Cancel Reply

    Top Posts

    How to Write Queries for Tabular Models with DAX

    April 22, 2025

    Merging design and computer science in creative ways | MIT News

    April 28, 2025

    For healthy hearing, timing matters | MIT News

    April 7, 2025

    Google Släpper den ultimata 68-sidiga guiden till prompt engineering för API-användare

    April 12, 2025

    Changing the conversation in health care | MIT News

    July 9, 2025
    Categories
    • AI Technology
    • AI Tools & Technologies
    • Artificial Intelligence
    • Latest AI Innovations
    • Latest News
    Most Popular

    Top AI Technologies: Transforming Business Operations Guide

    April 10, 2025

    En ny rapport avslöjar våra AI-favoriter

    June 29, 2025

    Alibaba Cloud presenterar AI-modeller och verktyg för internationella kunder

    April 10, 2025
    Our Picks

    Undetectable AI vs. Grammarly’s AI Humanizer: What’s Better with ChatGPT?

    July 16, 2025

    Do You Really Need a Foundation Model?

    July 16, 2025

    xAI lanserar AI-sällskap karaktärer genom Grok-plattformen

    July 16, 2025
    Categories
    • AI Technology
    • AI Tools & Technologies
    • Artificial Intelligence
    • Latest AI Innovations
    • Latest News
    • Privacy Policy
    • Disclaimer
    • Terms and Conditions
    • About us
    • Contact us
    Copyright © 2025 ProfitlyAI All Rights Reserved.

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