论文标题
通过自旋纳米神经元的相互同步结合事件
Binding events through the mutual synchronization of spintronic nano-neurons
论文作者
论文摘要
大脑在独特的概念中自然地结合了来自不同来源的事件。假设该过程是通过刺激出现时位于大脑不同区域的神经元的瞬时相互同步发生的。通过同步结合的这种机制可以直接在由耦合振荡器组成的神经网络中实现。为此,振荡器必须能够在对应于单个类的输入范围内相互同步,否则仍然保持不同步。在这里,我们表明,自旋纳米振荡器相互同步的出色能力以及通过在宽范围内调谐振荡器频率来精确控制相互同步的可能性,从而可以识别模式识别。我们在一个简单的任务上进行实验证明,三个自旋纳米振荡器可以结合连续事件,从而识别和区分时间序列。这项工作是构建神经网络的一步,该神经网络利用其组件的非线性动态特性来执行脑启发的计算。
The brain naturally binds events from different sources in unique concepts. It is hypothesized that this process occurs through the transient mutual synchronization of neurons located in different regions of the brain when the stimulus is presented. This mechanism of binding through synchronization can be directly implemented in neural networks composed of coupled oscillators. To do so, the oscillators must be able to mutually synchronize for the range of inputs corresponding to a single class, and otherwise remain desynchronized. Here we show that the outstanding ability of spintronic nano-oscillators to mutually synchronize and the possibility to precisely control the occurrence of mutual synchronization by tuning the oscillator frequencies over wide ranges allows pattern recognition. We demonstrate experimentally on a simple task that three spintronic nano-oscillators can bind consecutive events and thus recognize and distinguish temporal sequences. This work is a step forward in the construction of neural networks that exploit the non-linear dynamic properties of their components to perform brain-inspired computations.