Neuromorphic Computing Based on Parametrically-Driven Oscillators and Frequency Combs
Mahadev Sunil Kumar, Adarsh Ganesan
TLDR
This paper explores neuromorphic computing with parametrically-driven oscillators, finding optimal performance in the parametric resonance regime.
Key contributions
- Explored a two-mode parametrically-driven oscillator as a reservoir computer for chaotic prediction.
- Achieved optimal prediction performance in the parametric resonance regime, maintaining coherence.
- Found frequency-comb states, despite high dimensionality, offer inconsistent and often degraded performance.
- Identified key parameters (modulation, detuning, damping) to control computational performance.
Why it matters
This research establishes parametric resonance as a robust and efficient operating regime for neuromorphic computing using oscillators. It provides crucial design principles for developing future physical systems with optimal computational capabilities. This work advances the understanding of how intrinsic dynamics can be harnessed for complex computations.
Original Abstract
Parametrically driven oscillators provide a natural platform for neuromorphic computation, where nonlinear mode coupling and intrinsic dynamics enable both memory and high-dimensional transformation. Here, we investigate a two-mode system exhibiting 2:1 parametric resonance and demonstrate its operation as a reservoir computer across distinct dynamical regimes, including sub-threshold, parametric resonance, and frequency-comb states. By encoding input signals into the drive amplitude and sampling the resulting temporal and spectral responses, we perform one step-ahead prediction of benchmark chaotic systems, including Mackey-Glass, Rossler, and Lorenz dynamics. We find that optimal computational performance is achieved within the parametric resonance regime, where nonlinear interactions are activated while temporal coherence is preserved. In contrast, although frequency-comb states introduce increased spectral dimensionality, their performance is not consistently good across their existence band and also degrades in the chaotic comb regime due to loss of phase coherence. Mapping prediction error over parameter space reveals a direct correspondence between computational capability and the underlying bifurcation structure, with low-error regions aligned with the parametric resonance boundary. We further show that the input modulation, the detuning from the frequency matching condition, damping ratio, and input data rate systematically control the accessible dynamical regimes and thereby the computational performance. These results establish parametric resonance as a robust operating regime for oscillator-based reservoir computing and provide design principles for tuning physical systems toward optimal neuromorphic functionality.
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