提高忆阻器神经形态结构性能的参数探索

Mahyar Shahsavari;Pierre Boulet
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引用次数: 7

摘要

受大脑启发的尖峰神经网络神经形态架构以非常低的功耗为一系列认知计算任务提供了一个很有前途的解决方案。由于硬件实现的实际可行性,我们提出了一个基于忆阻器的硬件尖峰神经网络模型,并用我们的开源神经形态结构模拟器——神经网络可扩展尖峰模拟器(N2S3)进行了模拟。尽管Spiking神经网络在计算神经科学和神经形态计算领域得到了广泛应用,但仍有必要研究选择最佳参数以提高识别效率的方法。在模拟器的帮助下,我们分析和评估了神经元数量、STDP窗口、神经元阈值、输入尖峰分布和忆阻器模型参数等不同参数对MNIST手写数字识别问题的影响。我们表明,在这个基准上,仔细选择几个参数(神经元数量、突触类型、STDP窗口和神经元阈值)可以显著提高识别率(神经元数量提高了大约15个点,其他提高了几个点),由于突触权重的随机初始化,识别率的可变性为4-5个点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameter Exploration to Improve Performance of Memristor-Based Neuromorphic Architectures
The brain-inspired spiking neural network neuromorphic architecture offers a promising solution for a wide set of cognitive computation tasks at a very low power consumption. Due to the practical feasibility of hardware implementation, we present a memristor-based model of hardware spiking neural networks which we simulate with Neural Network Scalable Spiking Simulator (N2S3), our open source neuromorphic architecture simulator. Although Spiking neural networks are widely used in the community of computational neuroscience and neuromorphic computation, there is still a need for research on the methods to choose the optimum parameters for better recognition efficiency. With the help of our simulator, we analyze and evaluate the impact of different parameters such as number of neurons, STDP window, neuron threshold, distribution of input spikes, and memristor model parameters on the MNIST hand-written digit recognition problem. We show that a careful choice of a few parameters (number of neurons, kind of synapse, STDP window, and neuron threshold) can significantly improve the recognition rate on this benchmark (around 15 points of improvement for the number of neurons, a few points for the others) with a variability of four to five points of recognition rate due to the random initialization of the synaptic weights.
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