TSUKUBA, Japan, Jan. 17,
2025 /PRNewswire/ -- Scientists from the Research
Center for Materials Nanoarchitectonics (MANA) have integrated
machine learning with traditional materials science to expedite the
discovery of kesterite-type thermoelectric materials, paving the
way for efficient energy conversion technologies.
Image:
https://cdn.kyodonewsprwire.jp/prwfile/release/M105739/202412242233/_prw_PI1fl_kDhuzYc5.jpg
Kesterite-type materials, like Cu2ZnSnS4, are promising
thermoelectric (TE) materials that convert waste heat into
electricity. These non-toxic materials are composed of abundant,
easily accessible elements and exhibit a figure of merit (zT), a
quantity level that measures thermoelectric efficiency, of greater
than 1 at temperatures between 300 and 800K (26 to 526C). Around 500K, kesterites undergo a transition from an
ordered cationic structure to a disordered one, which affects their
TE properties significantly. However, identifying optimal
manufacturing conditions is time-consuming and requires multiple
experiments.
Researchers from MANA used machine learning to accelerate this
process. In just four experimental cycles, they optimized the
sintering process, improving the thermoelectric performance of
Cu2.125Zn0.875SnS4 by 60%. The study was led by Dr. Cedric Bourges from the International Center for
Young Scientists, along with Guillaume
Lambard from the Center for Basic Research on Materials as
well as Naoki Sato, Makoto Tachibana, Satoshi Ishii, and Takao
Mori from MANA, NIMS, Japan.
The researchers employed Active Learning with Bayesian
Optimization (ALMLBO), which analyzes sintering parameters--such as
heating rate, sintering temperature, holding time, cooling rate,
and applied pressure--alongside thermoelectric properties obtained
from experiments. This approach recommended new experimental
conditions, and the process was repeated until the thermoelectric
properties improved, indicated by a stabilized zT.
The team began with data from 11 samples prepared using spark
plasma sintering, combining copper, zinc, tin, and sulfur powders
under partial vacuum. The ALMLBO model predicted sintering
conditions that achieved a record maximum zT of 0.44 at
725K. "This method showcases how
integrating machine learning with traditional materials science
accelerates discovery and optimization in complex material
systems," say the authors. This approach has the potential to be
extended to other materials, enabling rapid innovations in
photovoltaics, batteries, and electronics.
Research Highlights Vol. 92
https://www.nims.go.jp/mana/research/highlights/vol92.html
MANA Research Highlights
https://www.nims.go.jp/mana/ebulletin/index.html
View original
content:https://www.prnewswire.com/news-releases/mana-scientists-employ-active-machine-learning-to-enhance-thermoelectric-performance-of-materials-302353892.html
SOURCE Research Center for Materials Nanoarchitectonics (MANA),
National Institute for Materials Science (NIMS)