Performance enhancement of a spin-wave-based reservoir computing system utilizing different physical conditions
Ryosho Nakane, Akira Hirose, and Gouhei Tanaka

TL;DR
This study demonstrates that optimizing magnetic conditions in a spin-wave reservoir computing device significantly improves computational performance by increasing the effective dimensionality of the output signals.
Contribution
The paper introduces a method to enhance spin-wave reservoir computing by varying magnetic fields and damping constants to increase output dimensionality and improve prediction accuracy.
Findings
Higher output dimensionality improves NARMA prediction accuracy.
Magnetic field and damping control spin dynamics and reservoir richness.
Significant reduction in prediction error with optimized conditions.
Abstract
The authors have numerically studied how to enhance reservoir computing performance by thoroughly extracting their spin-wave device potential for higher-dimensional information generation. The reservoir device has a 1-input exciter and 120-output detectors on the top of a continuous magnetic garnet film for spin-wave transmission. For various nonlinear and fading-memory dynamic phenomena distributing in the film space, small in-plane magnetic fields were used to prepare stripe domain structures and various damping constants at the film sides and bottom were explored. The ferromagnetic resonant frequency and relaxation time of spin precession clearly characterized the change in spin dynamics with the magnetic field and damping constant. The common input signal for reservoir computing was a 1 GHz cosine wave with random 6-valued amplitude modulation. A basic 120-dimensional reservoir…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Advanced Memory and Neural Computing · Neural Networks and Applications
