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Wave-Based Spiking Neural Network with Nano-Structured Electronics

机译:纳米结构电子波基尖峰神经网络

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The present paper is on neuromorphic computing with temporal spike signaling as elastic waves and building blocks using nano-structured electronic systems. Wave-based neuromorphic computing framework for energy-efficient brain-inspired computing [1] can natively calculate weighted-sums with delay spreads as wave superposition and propagation for temporal spiking neural networks (SNN) processing. Single particle quantum effects of electron wave packets, traveling at the Fermi velocity in nano-structured systems, are exploited to constitute various building blocks. We will first describe passive elements whose delay can be widely controlled electrically as well as geometrically. Then, splitter combiner building blocks are configured with coupled quantum systems and an alignment gate. Finally, we explain self-resetting integrate-and-fire building blocks with tunneling in coupled nano systems. Independent changes of the static potential at subband edges and the Fermi potential lead to rich dynamics of Coulomb and quantum interplay to accomplish critical SNN building block functions.
机译:本文是关于神经形态计算的,它使用纳米结构的电子系统,以时间尖峰信号作为弹性波和构件。基于波的神经形态计算框架可实现节能的大脑启发式计算[1],它可以本地计算具有时延扩展的加权和,作为波叠加和传播以用于时标神经网络(SNN)处理。电子波包的单粒子量子效应在纳米结构系统中以费米速度传播,被利用来构成各种构件。我们将首先描述无源元件,其延迟可以在电气和几何上得到广泛控制。然后,将分离器组合器构建块配置为具有耦合的量子系统和对准门。最后,我们解释了在耦合纳米系统中具有隧道效应的自复位集成点火装置。子带边缘的静态电势和费米电势的独立变化会导致库仑动力学和量子相互作用的丰富变化,从而实现关键的SNN构建块功能。

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