Novel Approach for Memory Storage Systems with Chaos-Chaos Intermittency

S. Nobukawa, Nobuhiko Wagatsuma, H. Nishimura, Keiichiro Inagaki, Teruya Yamanishi
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引用次数: 2

Abstract

In nonlinear systems with a barrier/threshold, the synchronization under a weak external input signal is strengthened using appropriate additive stochastic noise. This phenomenon is known as stochastic resonance. Recent progress in the application of stochastic resonance has shown that the presence of additive noise enhances memory functions in memory elements with bi-stable oscillations, even under extremely low power consumption. In addition to additive noise, deterministic chaotic behavior induces chaotic resonance, a phenomenon that is similar to stochastic resonance. Chaotic resonance emerges in nonlinear dynamical systems with chaos-chaos intermittency, where the chaotic orbit moves among separated attractor regions through an attractor-merging bifurcation. In previous studies, a higher sensitivity of chaotic resonance compared to that of stochastic resonance was reported. In this context, we hypothesized that memory devices based on chaotic resonance can be used to realize a novel device for storing memory with lower power consumption than in devices based on stochastic resonance. In this study, to prove this hypothesis, we induce the attractor-merging bifurcation in a cubic map system, which is the simplest model for emerging chaotic resonance. We use one approach for adjusting the internal system parameters under noise-free conditions and another for applying stochastic noise, which is similar to the conventional approach using stochastic resonance. By comparing the performance of these approaches, we reveal that the former exhibits a higher memory storing ability than the latter stochastic approach, even under weaker memory storage input signals. This superiority allows the development of memory devices with low power consumption. The method involving chaotic resonance facilitates the improvement of memory devices that were previously limited to the application of stochastic resonance.
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混沌-混沌间歇存储系统的新方法
在具有障碍/阈值的非线性系统中,采用适当的加性随机噪声来加强弱外部输入信号下的同步。这种现象被称为随机共振。随机共振应用的最新进展表明,即使在极低的功耗下,加性噪声的存在也能增强双稳态振荡存储元件的记忆功能。除了加性噪声外,确定性混沌行为还会引起混沌共振,这是一种类似于随机共振的现象。混沌共振出现在具有混沌-混沌间歇性的非线性动力系统中,混沌轨道通过吸引子合并分岔在分离的吸引子区域之间运动。在以往的研究中,混沌共振比随机共振具有更高的灵敏度。在这种情况下,我们假设基于混沌共振的存储器件可以实现比基于随机共振的器件更低功耗的存储器件。在本研究中,为了证明这一假设,我们在一个三次映射系统中引入了吸引子合并分岔,这是出现混沌共振的最简单模型。我们使用一种方法在无噪声条件下调整系统内部参数,另一种方法是应用随机噪声,这与使用随机共振的传统方法类似。通过比较这两种方法的性能,我们发现即使在较弱的记忆存储输入信号下,前者也比后者表现出更高的记忆存储能力。这种优势使得开发低功耗的存储器件成为可能。涉及混沌共振的方法有助于改进以前仅限于随机共振应用的存储器件。
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