Top Page | English | 简体中文 | 繁體中文 | 한국어 | 日本語
Friday, 2 December 2022, 20:00 HKT/SGT
Share:
    

Source: Science and Technology of Advanced Materials
Revealing crystal structures robotically
Machine learning and robotic process automation combine to speed up and simplify a process used to determine crystal structures.

TSUKUBA, Japan, Dec 2, 2022 - (ACN Newswire) - Researchers at the National Institute for Materials Science (NIMS) in Japan have automated a complex and labour-intensive process for analysing the results of X-ray diffraction studies, which are used to determine the structure of crystalline materials. The team described the development and application of their technique in the journal Science and Technology of Advanced Materials: Methods.

By combining machine learning with robotic process automation, researchers automated a mathematical procedure that determines the structure of crystalline materials. (Credit: ktsdesign/123rf)

X-rays fired at a crystal interact with the geometric arrangement of its particles and are diffracted in many directions in a complex pattern of rays that depends on the crystal's precise structure. Experts analyse the pattern and intensity of the diffracted X-rays to determine the crystal's internal arrangement. This is a powerful and widely used process for revealing the three-dimensional atomic structure of new materials.

A well-established mathematical procedure, called Rietveld analysis, is used for interpreting X-ray diffraction data, but it is time-consuming and requires manual trial-and-error refinement of the results.

"To reduce human costs and resources, we have developed a robotic process automation (RPA) system that we apply to an existing Rietveld analysis program called RIETAN-FP," says Ryo Tamura of the NIMS team. "By using our new procedure, with the help of machine learning, we have succeeded in performing Rietveld analysis automatically," Tamura adds.

The automation can be run on a personal computer and can reduce human error as well as greatly speed up the data analysis.

Tamura explains that the field of materials science already relies on numerous graphical user interface (GUI) applications to calculate a material's properties, control experimental equipment, or analyse material data. He says that combining this new RPA and machine learning ability with these applications achieves a "closed loop" to automatically design and analyse materials with minimal human intervention.

The researchers verified the accuracy of their procedure by analysing samples of powdered compounds whose crystal structures are already known. The ability to determine the structures from powdered samples is one of the great strengths of Rietveld analysis. It avoids the need to grow large single crystals, which can be extremely difficult to obtain for some materials.

"Automating Rietveld analysis brings a very powerful new tool into the entire field of materials science," Tamura concludes.

The researchers are now working to further refine their procedure to make it suitable for more complex crystal structures. Another aim is to explore the use of their machine learning RPA strategy for more general applications in materials science. The possibilities include numerous simulation methods used for calculating material properties, and also applications for controlling experimental equipment. The success achieved thus far with X-ray diffraction could just be the start for Rietveld robotics.

Further information
Ryo Tamura
National Institute for Materials Science
Email: tamura.ryo@nims.go.jp

About Science and Technology of Advanced Materials: Methods (STAM Methods)

STAM Methods is an open access sister journal of Science and Technology of Advanced Materials (STAM), and focuses on emergent methods and tools for improving and/or accelerating materials developments, such as methodology, apparatus, instrumentation, modeling, high-through put data collection, materials/process informatics, databases, and programming. https://www.tandfonline.com/STAM-M

Dr. Yasufumi Nakamichi
STAM Methods Publishing Director
Email: NAKAMICHI.Yasufumi@nims.go.jp

Press release distributed by Asia Research News for Science and Technology of Advanced Materials.


Topic: Press release summary
Source: Science and Technology of Advanced Materials

Sectors: Science & Nanotech
http://www.acnnewswire.com
From the Asia Corporate News Network


Copyright © 2024 ACN Newswire. All rights reserved. A division of Asia Corporate News Network.



Science and Technology of Advanced Materials
Dec 3, 2024 23:15 HKT/SGT
Machine learning used to optimise polymer production
Oct 25, 2024 23:00 HKT/SGT
Machine learning can predict the mechanical properties of polymers
July 30, 2024 20:00 HKT/SGT
Dual-action therapy shows promise against aggressive oral cancer
Apr 17, 2024 22:00 HKT/SGT
A new spin on materials analysis
Apr 12, 2024 18:00 HKT/SGT
Kirigami hydrogels rise from cellulose film
Feb 27, 2024 08:00 HKT/SGT
Sensing structure without touching
Nov 21, 2023 07:00 HKT/SGT
Nano-sized probes reveal how cellular structure responds to pressure
Nov 17, 2023 10:00 HKT/SGT
Machine learning techniques improve X-ray materials analysis
Nov 14, 2023 20:00 HKT/SGT
A bio-inspired twist on robotic handling
Oct 17, 2023 08:00 HKT/SGT
GPT-4 artificial intelligence shows some competence in chemistry
More news >>
 News Alerts
Copyright © 2024 ACN Newswire - Asia Corporate News Network
Home | About us | Services | Partners | Events | Login | Contact us | Privacy Policy | Terms of Use | RSS
US: +1 214 890 4418 | China: +86 181 2376 3721 | Hong Kong: +852 8192 4922 | Singapore: +65 6549 7068 | Tokyo: +81 3 6859 8575

Connect With us: