A voltage-responsive strongly dipolar-coupled macrospin network with emergent dynamics for computing
Abstract: Emergent behavior,which arises from local interactions between simple elements,is pervasive in nature. It underlies the exceptional energy-efficient computing in our brains. However,realizing such dynamics in artificial materials, particularly under low-energy stimuli, remains a fundamental challenge.Here we harness and amplify them to construct a strongly dipolar-coupled network of SmCo5 macrospins at wafer scale, which can exhibit intrinsic interaction-driven collective dynamics in response to voltage pulses. The network combines three essential ingredients,i.e.strong dipolar coupling enabled by large single-domain macrospin, giant voltage control of coercivity over nearly 1000-fold, the largest reported to date, and a disordered network topology with frustrated Ising-like energy landscape. When stimulated by 1 V pulses, the network enters a regime where interaction-driven magnetic behaviors emerge, including spontaneous demagnetization, greatly enhanced magnetization modulation, reversible freeze and resume evolution and stochastic convergence toward low-energy magnetic configurations. All these behaviors are completely absent at the single-nanomagnet level. Furthermore, by constructing micromagnetic models of the strongly dipolar-coupled macrospin networks calibrated to experiments, we show that the resulting nonlinear, high-dimensional collective dynamics, which are characteristic of strongly-interacting systems, can enable accurate chaotic Mackey-Glass prediction and multiclass drone-signal classification. Our work establishes the voltage-responsive strongly-coupled SmCo5 network as a mesoscopic platform for probing emergent magnetic dynamics previously inaccessible under ambient conditions.It also suggests a fundamental distinct route towards scalable,low-voltage computing, one rooted in native physical interaction-driven collective dynamics at the network level.
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