ScienceDaily
Your source for the latest research news
Follow Facebook Twitter LinkedIn Subscribe RSS Feeds Newsletters
New:
  • Baby Dinosaurs Were 'Little Adults'
  • Half of Sun-Like Stars Could Host Rocky Planets
  • Early Big-Game Hunters Were Likely Female
  • Positive Outlook Predicts Less Memory Decline
  • Touch and Taste? It's All in the Tentacles
  • Where Were Jupiter and Saturn Born?
  • A Drop in Human Temperature
  • Vampire Bats: Social Distancing While Sick
  • Water Discovered On Sunlit Surface of Moon
  • OSIRIS-REx: Significant Amount of Asteroid
advertisement
Follow all of ScienceDaily's latest research news and top science headlines!
Science News
from research organizations

1

2

Optimizing the design of new materials

New approach determines optimal materials designs with minimal data

Date:
November 9, 2020
Source:
Northwestern University
Summary:
A new approach combines statistical inference, optimization theory, and computational materials physics to design new materials without large amounts of existing data.
Share:
FULL STORY

Northwestern University researchers have developed a new computational approach to accelerate the design of materials exhibiting metal-insulator transitions (MIT), a rare class of electronic materials that have shown potential to jumpstart future design and delivery of faster microelectronics and quantum information systems -- foundational technologies behind Internet of Things devices and large-scale data centers that power how humans work and interact with others.

advertisement

The new strategy, a collaboration between Professors James Rondinelli and Wei Chen, integrated techniques from statistical inference, optimization theory, and computational materials physics. The approach combines multi-objective Bayesian optimization with latent-variable Gaussian processes to optimize ideal features in a family of MIT materials called complex lacunar spinels.

When researchers search for new materials, they typically look in places where existing data on similar materials already exists. The design of many classes of materials properties have been accelerated in existing works with data-driven methods aided by high-throughput data generation coupled with methods like machine learning.

Such approaches, however, have not been available for MIT materials, categorized by their ability to reversibly switch between electrically conducting and insulating states. Most MIT models are constructed to describe a single material, making generation of the models often challenging. At the same time, conventional machine learning methods have shown limited predictive capability because of the absence of available data, making the design of new MIT materials difficult.

"Researchers understand how to distill information from large materials datasets where it exists and when suitable features are available," said Rondinelli, professor of materials science and engineering and the Morris E. Fine Professor in Materials and Manufacturing at the McCormick School of Engineering, and corresponding author of the study. "But what do you do when you don't have large datasets or the necessary features? Our work disrupts this status quo by building predicative and explorative models without requiring large datasets or features starting from a small dataset."

A paper describing the work, titled "Featureless Adaptive Optimization Accelerates Functional Electronic Materials Design," was published on November 6 in the journal Applied Physics Review.

advertisement

The research team's method, called advanced optimization engine (AOE), bypasses traditional machine learning-based discovery models by using a latent variable Gaussian process modeling approach, which only requires the chemical compositions of materials to discern their optimum nature. This allowed the Bayesian optimization-based AOE to efficiently search for materials with optimal band gap (electrical resistivity/conductivity) tunability and thermal stability (synthesizability) -- two defining features for useful materials.

To validate their approach, the team analyzed hundreds of chemical combinations using density function theory-based simulations and found 12 previously unidentified compositions of complex lacunar spinels that showed optimal functionality and synthesizability. These MIT materials are known to host unique spin textures, a necessary feature to power the future Internet of Things and other resource-intensive technologies.

"This advance overcomes traditional limitations imposed by chemical intuition-based materials designs," said Chen, Wilson-Cook Professor in Engineering Design and professor and chair of mechanical engineering, and a co-author on the study. "By reframing functional materials design as an optimization problem, we have not only found a solution to the challenge of working with limited data, but also demonstrated the ability to efficiently discover optimal new materials for future electronics."

While the researchers tested their method on inorganic materials, they believe the approach can also be applied to organic materials, such as the design of protein sequences in biomaterials or monomer sequences in polymeric materials. The model also offers guidance on making better decisions toward the optimal design of materials by choosing ideal candidate compounds to simulate.

"Our method paves the way forward for optimization of multiple properties and the co-design of complex multifunctional materials where prior data and knowledge is sparse," Rondinelli said.

Work on this study was born from a project exploring Bayesian optimization in materials discovery within the Predictive Science and Engineering Design (PSED) interdisciplinary cluster program sponsored by The Graduate School at Northwestern. It was supported by funding from the National Science Foundation and the Advanced Research Projects Agency -- Energy's (ARPA-E) DIFFERENTIATE program, which seeks to use emerging AI technologies to tackle major energy and environmental challenges.

"This work highlights the impact of the collaborative PSED interdisciplinary design cluster," Chen said. "It also emphasizes the crucial advances occurring in AI and machine learning at Northwestern in design and optimization."

make a difference: sponsored opportunity

Story Source:

Materials provided by Northwestern University. Original written by Alex Gerage. Note: Content may be edited for style and length.


Journal Reference:

  1. Yiqun Wang, Akshay Iyer, Wei Chen, James M. Rondinelli. Featureless adaptive optimization accelerates functional electronic materials design. Applied Physics Reviews, 2020; 7 (4): 041403 DOI: 10.1063/5.0018811

Cite This Page:

  • MLA
  • APA
  • Chicago
Northwestern University. "Optimizing the design of new materials: New approach determines optimal materials designs with minimal data." ScienceDaily. ScienceDaily, 9 November 2020. <www.sciencedaily.com/releases/2020/11/201109074127.htm>.
Northwestern University. (2020, November 9). Optimizing the design of new materials: New approach determines optimal materials designs with minimal data. ScienceDaily. Retrieved November 9, 2020 from www.sciencedaily.com/releases/2020/11/201109074127.htm
Northwestern University. "Optimizing the design of new materials: New approach determines optimal materials designs with minimal data." ScienceDaily. www.sciencedaily.com/releases/2020/11/201109074127.htm (accessed November 9, 2020).

  • RELATED TOPICS
    • Matter & Energy
      • Civil Engineering
      • Materials Science
      • Engineering and Construction
      • Weapons Technology
      • Construction
      • Nanotechnology
      • Electronics
      • Spintronics
advertisement

  • RELATED TERMS
    • Materials science
    • Constructal theory
    • Nanotechnology
    • Metallurgy
    • Construction
    • Circuit design
    • Triboelectric effect
    • Formaldehyde

1

2

3

4

5
RELATED STORIES

How to Discover New Materials Quickly
July 10, 2019 — A lot hinges on new materials, including efficient energy conversion for environmentally friendly engines of the future. In the past and still today, chance plays a great role for the discovery of ...
Machine Learning Used to Identify High-Performing Solar Materials
Mar. 5, 2019 — Thanks to a study that combines the power of supercomputing with data science and experimental methods, researchers have developed a novel 'design to device' approach to identify promising ...
Computers Create Recipe for Two New Magnetic Materials
Apr. 15, 2017 — Material scientists have predicted and built two new magnetic materials, atom-by-atom, using high-throughput computational models. The success marks a new era for the large-scale design of new ...
New Approach to Determining How Atoms Are Arranged in Materials
Aug. 23, 2016 — Researchers have developed a novel approach to characterizing how atoms are arranged in materials, using Bayesian statistical methods to glean new insights into the structure of materials. The work ...
FROM AROUND THE WEB

ScienceDaily shares links with sites in the TrendMD network and earns revenue from third-party advertisers, where indicated.
  Print   Email   Share

advertisement

1

2

3

4

5
Most Popular
this week

SPACE & TIME
Where Were Jupiter and Saturn Born?
NASA's SOFIA Discovers Water on Sunlit Surface of Moon
About Half of Sun-Like Stars Could Host Rocky, Potentially Habitable Planets
MATTER & ENERGY
Reviving Cells After a Heart Attack
'Transparent Solar Cells' Can Take Us Towards a New Era of Personalized Energy
Luminescent Wood Could Light Up Homes of the Future
COMPUTERS & MATH
Video Games Can Change Your Brain
Ultrapotent COVID-19 Vaccine Candidate Designed Via Computer
A New Spin on Atoms Gives Scientists a Closer Look at Quantum Weirdness
advertisement

Strange & Offbeat
 

SPACE & TIME
Final Dance of Unequal Black Hole Partners
Has the Hidden Matter of the Universe Been Discovered?
Seeing Dark Matter in a New Light
MATTER & ENERGY
Scientists Design Magnets With Outstanding Properties
A New Candidate Material for Quantum Spin Liquids
New Technology Allows Cameras to Capture Colors Invisible to the Human Eye
COMPUTERS & MATH
Research Lays Groundwork for Ultra-Thin, Energy Efficient Photodetector on Glass
Secrets Behind 'Game of Thrones' Unveiled by Data Science and Network Theory
An Underwater Navigation System Powered by Sound
SD
  • SD
    • Home Page
    • Top Science News
    • Latest News
  • Home
    • Home Page
    • Top Science News
    • Latest News
  • Health
    • View all the latest top news in the health sciences,
      or browse the topics below:
      Health & Medicine
      • Allergy
      • Alternative Medicine
      • Birth Control
      • Cancer
      • Diabetes
      • Diseases
      • Heart Disease
      • HIV and AIDS
      • Obesity
      • Stem Cells
      • ... more topics
      Mind & Brain
      • ADD and ADHD
      • Addiction
      • Alzheimer's
      • Autism
      • Depression
      • Headaches
      • Intelligence
      • Psychology
      • Relationships
      • Schizophrenia
      • ... more topics
      Living Well
      • Parenting
      • Pregnancy
      • Sexual Health
      • Skin Care
      • Men's Health
      • Women's Health
      • Nutrition
      • Diet and Weight Loss
      • Fitness
      • Healthy Aging
      • ... more topics
  • Tech
    • View all the latest top news in the physical sciences & technology,
      or browse the topics below:
      Matter & Energy
      • Aviation
      • Chemistry
      • Electronics
      • Fossil Fuels
      • Nanotechnology
      • Physics
      • Quantum Physics
      • Solar Energy
      • Technology
      • Wind Energy
      • ... more topics
      Space & Time
      • Astronomy
      • Black Holes
      • Dark Matter
      • Extrasolar Planets
      • Mars
      • Moon
      • Solar System
      • Space Telescopes
      • Stars
      • Sun
      • ... more topics
      Computers & Math
      • Artificial Intelligence
      • Communications
      • Computer Science
      • Hacking
      • Mathematics
      • Quantum Computers
      • Robotics
      • Software
      • Video Games
      • Virtual Reality
      • ... more topics
  • Enviro
    • View all the latest top news in the environmental sciences,
      or browse the topics below:
      Plants & Animals
      • Agriculture and Food
      • Animals
      • Biology
      • Biotechnology
      • Endangered Animals
      • Extinction
      • Genetically Modified
      • Microbes and More
      • New Species
      • Zoology
      • ... more topics
      Earth & Climate
      • Climate
      • Earthquakes
      • Environment
      • Geography
      • Geology
      • Global Warming
      • Hurricanes
      • Ozone Holes
      • Pollution
      • Weather
      • ... more topics
      Fossils & Ruins
      • Ancient Civilizations
      • Anthropology
      • Archaeology
      • Dinosaurs
      • Early Humans
      • Early Mammals
      • Evolution
      • Lost Treasures
      • Origin of Life
      • Paleontology
      • ... more topics
  • Society
    • View all the latest top news in the social sciences & education,
      or browse the topics below:
      Science & Society
      • Arts & Culture
      • Consumerism
      • Economics
      • Political Science
      • Privacy Issues
      • Public Health
      • Racial Disparity
      • Religion
      • Sports
      • World Development
      • ... more topics
      Business & Industry
      • Biotechnology & Bioengineering
      • Computers & Internet
      • Energy & Resources
      • Engineering
      • Medical Technology
      • Pharmaceuticals
      • Transportation
      • ... more topics
      Education & Learning
      • Animal Learning & Intelligence
      • Creativity
      • Educational Psychology
      • Educational Technology
      • Infant & Preschool Learning
      • Learning Disorders
      • STEM Education
      • ... more topics
  • Quirky
    • Top News
    • Human Quirks
    • Odd Creatures
    • Bizarre Things
    • Weird World
Free Subscriptions

Get the latest science news with ScienceDaily's free email newsletters, updated daily and weekly. Or view hourly updated newsfeeds in your RSS reader:

  • Email Newsletters
  • RSS Feeds
Follow Us

Keep up to date with the latest news from ScienceDaily via social networks:

  • Facebook
  • Twitter
  • LinkedIn
Have Feedback?

Tell us what you think of ScienceDaily -- we welcome both positive and negative comments. Have any problems using the site? Questions?

  • Leave Feedback
  • Contact Us
About This Site  |  Staff  |  Reviews  |  Contribute  |  Advertise  |  Privacy Policy  |  Editorial Policy  |  Terms of Use
Copyright 2020 ScienceDaily or by other parties, where indicated. All rights controlled by their respective owners.
Content on this website is for information only. It is not intended to provide medical or other professional advice.
Views expressed here do not necessarily reflect those of ScienceDaily, its staff, its contributors, or its partners.
Financial support for ScienceDaily comes from advertisements and referral programs, where indicated.
— CCPA: Do Not Sell My Information — — GDPR: Privacy Settings —