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Hybrid spiking-based multi-layered self-learning neuromorphic system based on memristor crossbar arrays

机译:基于忆阻器交叉开关阵列的基于混合尖峰的多层自学习神经形态系统

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Neuromorphic computing systems are under heavy investigation as a potential substitute for the traditional von Neumann systems in high-speed low-power applications. Recently, memristor crossbar arrays were utilized in realizing spiking-based neuromorphic system, where memristor conductance values correspond to synaptic weights. Most of these systems are composed of a single crossbar layer, in which system training is done off-chip, using computer based simulations, then the trained weights are pre-programmed to the memristor crossbar array. However, multi-layered, on-chip trained systems become crucial for handling massive amount of data and to overcome the resistance shift that occurs to memristors overtime. In this work, we propose a spiking-based multi-layered neuromorphic computing system capable of online training. The system performance is evaluated using three different datasets showing improved results versus previous work. In addition, studying the system accuracy versus memristor resistance shift shows promising results.
机译:神经形态计算系统正作为高速低功率应用中的传统冯·诺依曼系统的潜在替代品而受到广泛研究。最近,忆阻器交叉开关阵列被用于实现基于尖峰的神经形态系统,其中忆阻器电导值对应于突触权重。这些系统中的大多数由单个交叉开关层组成,在该系统中,使用基于计算机的仿真在芯片外进行系统训练,然后将经过训练的权重预先编程到忆阻器交叉开关阵列中。但是,多层,经过芯片训练的系统对于处理大量数据并克服忆阻器随时间推移而产生的阻力变化变得至关重要。在这项工作中,我们提出了一种能够在线训练的基于峰值的多层神经形态计算系统。使用三个不同的数据集评估了系统性能,这些数据集显示了相对于先前工作的改进结果。此外,研究系统精度与忆阻器电阻漂移的关系显示出令人鼓舞的结果。

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