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Implementation of multilayer perceptron network with highly uniform passive memristive crossbar circuits

机译:具有高度均匀的无源忆阻纵横电路的多层感知器网络的实现

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摘要

The progress in the field of neural computation hinges on the use of hardware more efficient than the conventional microprocessors. Recent works have shown that mixed-signal integrated memristive circuits, especially their passive (0T1R) variety, may increase the neuromorphic network performance dramatically, leaving far behind their digital counterparts. The major obstacle, however, is immature memristor technology so that only limited functionality has been reported. Here we demonstrate operation of one-hidden layer perceptron classifier entirely in the mixed-signal integrated hardware, comprised of two passive 20 × 20 metal-oxide memristive crossbar arrays, board-integrated with discrete conventional components. The demonstrated network, whose hardware complexity is almost 10× higher as compared to previously reported functional classifier circuits based on passive memristive crossbars, achieves classification fidelity within 3% of that obtained in simulations, when using ex-situ training. The successful demonstration was facilitated by improvements in fabrication technology of memristors, specifically by lowering variations in their I–V characteristics.
机译:神经计算领域的进步取决于使用比常规微处理器更有效的硬件。最近的工作表明,混合信号集成忆阻电路,尤其是其无源(0T1R)品种,可能会大大提高神经形态网络的性能,远远落后于其数字同类产品。但是,主要障碍是忆阻器技术不成熟,因此仅报告了有限的功能。在这里,我们演示了完全在混合信号集成硬件中的一个隐藏层感知器分类器的操作,该硬件由两个无源20×20金属氧化物忆阻纵横阵列组成,并与分立的常规组件集成在一起。与先前报道的基于被动忆阻交叉开关的功能分类器电路相比,该网络的硬件复杂度几乎高出10倍,使用异地训练时,其分类保真度可达到仿真所获得的3%以内。忆阻器制造技术的改进,特别是通过降低其I–V特性的变化,促进了成功的演示。

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