echemi logo
Product
  • Product
  • Supplier
  • Inquiry
    Home > Biochemistry News > Biotechnology News > The team of Associate Professor Yao Zhenpeng of Shanghai Jiaotong University published a review paper on AI-accelerated material discovery in Nature Reviews Materials

    The team of Associate Professor Yao Zhenpeng of Shanghai Jiaotong University published a review paper on AI-accelerated material discovery in Nature Reviews Materials

    • Last Update: 2022-10-25
    • Source: Internet
    • Author: User
    Search more information of high quality chemicals, good prices and reliable suppliers, visit www.echemi.com
      

    Recently, the internationally renowned academic journal Nature Reviews Materials published online the review article "Machine learning for a sustainable energy future" by the team and cooperation team of Associate Professor Yao Zhenpeng of the School of Materials Science and Engineering of Shanghai Jiao Tong University, which provides a forward-looking direction
    for the related promotion of machine learning in energy materials, equipment, management and other fields 。 The paper is based on Shanghai Jiao Tong University as the first author, and Associate Professor Yao Zhenpeng from the School of Materials Science and Engineering of Shanghai Jiao Tong University is the first author
    .

    The transition from fossil to renewable energy is a major global challenge that requires advances across the energy industry at the material, equipment and systems levels to enable efficient collection, storage, conversion and management
    of renewable energy.
    Researchers in the energy sector have begun to use machine learning techniques to enable these advances (Figure 1).

    Figure 1 Traditional and machine learning-accelerated material development paradigms

    In the material review, the team highlights the latest advances in energy research driven by machine learning, outlines current challenges and looks ahead, and describes the prerequisites needed to take full advantage of machine learning techniques
    .
    The team introduced a set of Materials Accelerated Development Performance Indicators (XPIs) to compare the differences and improvement opportunities
    of different machine learning paradigms for energy research advancement.
    Recent advances
    in the application of machine learning to energy harvesting (photovoltaics), storage (batteries), conversion (electrocatalysis), and management (smart grids) were also discussed and evaluated.
    Finally, a potential area of research for machine learning in the energy sector is outlined (Figure 2).

    Figure 2 Application development direction of machine learning in the renewable field

    In addition, the team also published a review "On scientific understanding with artificial intelligence" in Nature Reviews Physics at the same time, which systematically summarized the latest progress
    of artificial intelligence in the field of promoting the establishment of scientific theories 。 In recent years, the team has carried out extensive research in the fields of electrochemical energy storage, high-throughput experiments and calculations, and deep machine learning, and has successively conducted research in Science, Nature Energy, Nature Catalysis, Nature Machine Intelligence, Science Advances, Nature Communications, Matter, and Accounts of A series of research papers
    have been published in academic journals such as Chemical Research.

    School of Materials
    School of Materials Science and Engineering
    This article is an English version of an article which is originally in the Chinese language on echemi.com and is provided for information purposes only. This website makes no representation or warranty of any kind, either expressed or implied, as to the accuracy, completeness ownership or reliability of the article or any translations thereof. If you have any concerns or complaints relating to the article, please send an email, providing a detailed description of the concern or complaint, to service@echemi.com. A staff member will contact you within 5 working days. Once verified, infringing content will be removed immediately.

    Contact Us

    The source of this page with content of products and services is from Internet, which doesn't represent ECHEMI's opinion. If you have any queries, please write to service@echemi.com. It will be replied within 5 days.

    Moreover, if you find any instances of plagiarism from the page, please send email to service@echemi.com with relevant evidence.