Cyclical sensing integrate-and-fire circuit for memristor array based neuromorphic computing

Hao Jiang, Weijie Zhu, Fu Luo, Kangjun Bai, Chenchen Liu, Xiaorong Zhang, J. Yang, Q. Xia, Yiran Chen, Qing Wu
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引用次数: 10

Abstract

The brain-inspired, spike-based neuromorphic system is highly anticipated in the artificial intelligence community due to its high computational efficiency. The recently developed memristor-crossbar-array technology, which is able to efficiently emulate the plasticity of biological synapses and accommodate matrix multiplication, has demonstrated its potential for neuromorphic computing. To facilitate the computation, a high-speed integrate-and-fire circuit (IFC) and a counter were previously developed to efficiently convert the current from the memristor array into rate-coded spikes. However, the linear dynamic range of the circuit, which is limited by its responding speed, is challenged when the input intensity and the conductance of the memristor array are both high simultaneously. In this paper, a novel cyclical sensing scheme is developed that can significantly extend the linear dynamic range of the original IFC. Meanwhile, the power efficiency of the IFC can also be increased. The circuit simulation results indicated that the cyclical sensing IFC was able to efficiently and accurately facilitate the matrix multiplication when it was integrated with a 32×32 memristor crossbar array. With the optimized crossbar array structure and its peripheral circuits, the developed cyclical sensing IFC has shown great promise in accelerating matrix multiplication in spike-based computing systems.
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基于记忆电阻器阵列的神经形态计算循环传感集火电路
由于其高计算效率,这种受大脑启发的、基于尖峰的神经形态系统在人工智能领域备受期待。最近开发的忆阻器-交叉棒阵列技术,能够有效地模拟生物突触的可塑性和适应矩阵乘法,已经证明了其在神经形态计算方面的潜力。为了方便计算,以前开发了高速集成与火灾电路(IFC)和计数器,以有效地将来自忆阻器阵列的电流转换为速率编码尖峰。然而,当输入强度和忆阻器阵列的电导同时很高时,受响应速度的限制,电路的线性动态范围受到挑战。本文提出了一种新的周期传感方案,该方案可以显著地扩展原IFC的线性动态范围。同时,国际金融公司的电力效率也可以提高。电路仿真结果表明,周期传感IFC与32×32忆阻交叉棒阵列集成后,能够高效、准确地实现矩阵乘法。通过优化交叉棒阵列结构及其外围电路,所开发的周期传感IFC在加速基于尖峰的计算系统中的矩阵乘法方面显示出很大的前景。
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