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首页> 外文期刊>International journal of unconventional computing >On Information Processing with Networks of Nano-Scale Switching Elements
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On Information Processing with Networks of Nano-Scale Switching Elements

机译:纳米开关元件网络信息处理研究

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Unconventional computing explores multi-scale platforms connecting molecular-scale devices into networks for the development of scalable neuromorphic architectures, often based on new materials and components with new functionalities. We review some work investigating the functionalities of locally connected networks of different types of switching elements as computational substrates. In particular, we discuss reservoir computing with networks of nonlinear nanoscale components. In usual neuromorphic paradigms, the network synaptic weights are adjusted as a result of a training/learning process. In reservoir computing, the non-linear network acts as a dynamical system mixing and spreading the input signals over a large state space, and only a readout layer is trained. We illustrate the most important concepts with a few examples, featuring memristor networks with time-dependent and history dependent resistances.
机译:非常规计算探索的多尺度平台通常将分子尺度的设备连接到网络中,以开发可扩展的神经形态架构,通常基于新材料和具有新功能的组件。我们回顾一些研究不同类型的开关元件作为计算基质的本地连接网络功能的工作。特别是,我们讨论了使用非线性纳米级分量网络进行的储层计算。在通常的神经形态范例中,由于训练/学习过程而调整了网络突触权重。在储层计算中,非线性网络充当动态系统,在较大的状态空间上混合并扩展输入信号,并且仅训练了一个读出层。我们用几个例子来说明最重要的概念,这些例子以忆阻器网络为基础,具有与时间和历史有关的阻力。

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