Similar presentations:
Prediction of rare-earth-free permanent magnet via ML
1.
Predictionof rare-earth-free
permanent magnet via
ML
2.
What is magnet?Rare-earth magnet dominate the
magnet market
Efficiency of magnet is assessed using
hysteresis loop data
3.
Application of magnet4.
Rare-earth elementsRising prices and demand pose the challenge
of finding other materials for magnets
5.
ProblemThe magnetic properties of nanoparticles strongly depend on
the size, composition, and shape
Small number of qualified workers
Experimental selection
of nanoparticles for specific purposes:
- take a lot of time
- resource-intensive
6.
SolutionUse of alternative cheaper raw materials
Low threshold for entry into data driven material
science:
- Increase in the number of employees
Prediction of a hysteresis loop using minimal
input data:
- more effective than the experimental way
Parallel world of ML
7.
What are we planning to do?Data collection
Fe1.7Co0.3P
Machine learning
Size 28 nm
Hc, MR, Ms
8.
Competitors9.
ConsumersArnold Magnetic Technologies
Adams Magnetic Products Co.
Hitachi Metals Limited
BGRIMM Magnetic Materials and
Technology Co. Limited
Our Web service
10.
RoadmapR2 > 0.6
Data collection
Proof of concept
October – November
January
Model validation and
paper draft
May – June
Web service
250-300 lines
Descriptors engineering and
model training
November – January
Model selection and optimization
MVP
February – May
August
↑R2
↑lines
11.
Thank you forattention!
Naboychenko Olga
Chemistry and Artificial Intelligence
[email protected]