Artificial nanophotonic neuron with internal memory for biologically inspired and reservoir network computing

D. Winge, Magnus Borgström, E. Lind, A. Mikkelsen
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Abstract

Neurons with internal memory have been proposed for biological and bio-inspired neural networks, adding important functionality. We introduce an internal time-limited charge-based memory into a III–V nanowire (NW) based optoelectronic neural node circuit designed for handling optical signals in a neural network. The new circuit can receive inhibiting and exciting light signals, store them, perform a non-linear evaluation, and emit a light signal. Using experimental values from the performance of individual III–V NWs we create a realistic computational model of the complete artificial neural node circuit. We then create a flexible neural network simulation that uses these circuits as neuronal nodes and light for communication between the nodes. This model can simulate combinations of nodes with different hardware derived memory properties and variable interconnects. Using the full model, we simulate the hardware implementation for two types of neural networks. First, we show that intentional variations in the memory decay time of the nodes can significantly improve the performance of a reservoir network. Second, we simulate the implementation in an anatomically constrained functioning model of the central complex network of the insect brain and find that it resolves an important functionality of the network even with significant variations in the node performance. Our work demonstrates the advantages of an internal memory in a concrete, nanophotonic neural node. The use of variable memory time constants in neural nodes is a general hardware derived feature and could be used in a broad range of implementations.
用于生物启发和水库网络计算的具有内部记忆的人工纳米光子神经元
具有内部记忆的神经元已被提出用于生物和生物启发的神经网络,增加了重要的功能。我们在III-V纳米线(NW)光电神经节点电路中引入了一种内部限时电荷存储器,该电路设计用于处理神经网络中的光信号。该电路可以接收抑制和激励光信号,存储它们,执行非线性评估,并发出光信号。利用单个III-V NWs性能的实验值,我们创建了完整人工神经节点电路的真实计算模型。然后,我们创建了一个灵活的神经网络模拟,使用这些电路作为神经元节点,用光在节点之间进行通信。该模型可以模拟具有不同硬件派生存储属性和可变互连的节点组合。利用完整的模型,我们模拟了两种类型的神经网络的硬件实现。首先,我们表明节点的记忆衰减时间的有意变化可以显着提高存储网络的性能。其次,我们模拟了昆虫大脑中央复杂网络的解剖学约束功能模型的实现,并发现它解决了网络的一个重要功能,即使节点性能有显著变化。我们的工作证明了内部存储器在具体的纳米光子神经节点中的优势。在神经节点中使用可变记忆时间常数是一种通用的硬件派生特征,可以在广泛的实现中使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
5.90
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