Country for PR: Japan
Contributor: Kyodo News JBN
Tuesday, October 03 2023 - 19:00
AsiaNet
MANA Researchers Realize High-performance Physical Reservoir Computing with Multi-detection Chaotic Spin Wave Interference
TSUKUBA, Japan, Oct. 3, 2023 /Kyodo JBN-AsiaNet/ --

Researchers from the Research Center for Materials Nanoarchitectonics (MANA) 
present the first experimental demonstration of a physical reservoir computing 
system based on spin wave interference.

Image:
https://cdn.kyodonewsprwire.jp/prwfile/release/M105739/202309209888/_prw_PI1fl_VtMldn86.jpg


Novel technologies are shaping the modern world, and artificial intelligence 
(AI) systems are expected to play an important role in this transformation. 
Accordingly, demand for compact AI devices with low power consumption and high 
computational performance is growing rapidly. Recently, physical reservoir 
computing, which relies on a physical system to efficiently process 
information, has emerged as a promising technology for ubiquitous AI 
implementation. To be considered suitable for reservoir computing, the physical 
system must possess nonlinearity, short-term memory, and the ability to map in 
high dimensions. Notably, spin wave interference in ferromagnetic materials 
satisfies all three criteria and is considered a promising candidate for 
efficient reservoir computing. However, its experimental realization has 
remained elusive so far. 

Now, a research team led by Principal Investigator Kazuya Terabe from MANA has 
experimentally demonstrated a reservoir computing system based on 
multi-detection nonlinear spin wave interference for the first time. Their 
study involved Dr. Wataru Namiki as the first author and Dr. Takashi Tsuchiya 
as the corresponding author.

The team utilized an yttrium iron garnet single crystal with multi-antennas, 
which excited and detected multi-spin waves. The physical reservoir computing 
system showed excellent performance for a hand-written digit recognition task, 
second-order nonlinear dynamical tasks, and nonlinear autoregressive moving 
average (NARMA); specifically, a maximum testing accuracy rate of 89.6% for 
hand-written digit recognition and normalized mean square errors (MSEs) of 8.37 
x 10 to the power of minus 5 and 1.81 x 10 to the power of minus 2 for the 
nonlinear dynamical tasks and NARMA2, respectively. Notably, the MSEs are the 
best figures reported for any experimental physical reservoir. 

"The high performance can be attributed to a high nonlinearity and a large 
memory capacity of the multi-detection chaotic spin wave interference system. 
It can thus contribute to the implementation of integrated physical reservoir 
systems with real-world applications," concludes Dr. Tsuchiya.

Research Highlights Vol. 85
https://www.nims.go.jp/mana/research/highlights/vol85.html

MANA Research Highlights
https://www.nims.go.jp/mana/ebulletin/index.html


Source: Research Center for Materials Nanoarchitectonics (MANA), National 
Institute for Materials Science (NIMS)