Coupled networks of mass–spring resonators have attracted growing attention across multiple fundamental and applied research directions, including reservoir computing for artificial intelligence. This has led to the exploration of platforms capable of tasks such as acoustic-wave classification, smart sensing, predictive maintenance, and adaptive vibration control. This work introduces a multiphysics reservoir based on a two dimensional network of coupled nonlinear mass-spring resonators. Each mass has a magnetic tunnel junction on top of it, working as spin diode, used as a spintronic read-out. As a proof-of-concept, we have benchmarked this reservoir with the task of vowel-recognition reaching accuracy above 95%. Because the device accepts elastic excitations directly, signal injections are simplified, making it well suited for real time sensing and edge computation. We also studied the effect of nonlinearity, demonstrating how it influences the reservoir dynamics, and assessed its robustness under node-to-node variation of the elastic constants.
Magneto-Mechanical Reservoir Computing Combining a Two-Dimensional Network of Nonlinear Mass-Spring Resonators With Magnetic Tunnel Junctions / Grimaldi, A.; Rohe Salomon Da Rosa Rodrigues., D.; Meo, A.; Garescì, F.; Finocchio, G.. - In: IEEE TRANSACTIONS ON NANOTECHNOLOGY. - ISSN 1536-125X. - ELETTRONICO. - 25:(2026), pp. 180-187. [10.1109/tnano.2026.3688953]
Magneto-Mechanical Reservoir Computing Combining a Two-Dimensional Network of Nonlinear Mass-Spring Resonators With Magnetic Tunnel Junctions
Grimaldi, A.;Rohe Salomon Da Rosa Rodrigues. , D.;Meo, A.;
2026
Abstract
Coupled networks of mass–spring resonators have attracted growing attention across multiple fundamental and applied research directions, including reservoir computing for artificial intelligence. This has led to the exploration of platforms capable of tasks such as acoustic-wave classification, smart sensing, predictive maintenance, and adaptive vibration control. This work introduces a multiphysics reservoir based on a two dimensional network of coupled nonlinear mass-spring resonators. Each mass has a magnetic tunnel junction on top of it, working as spin diode, used as a spintronic read-out. As a proof-of-concept, we have benchmarked this reservoir with the task of vowel-recognition reaching accuracy above 95%. Because the device accepts elastic excitations directly, signal injections are simplified, making it well suited for real time sensing and edge computation. We also studied the effect of nonlinearity, demonstrating how it influences the reservoir dynamics, and assessed its robustness under node-to-node variation of the elastic constants.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

