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Making neural encoding robust and energy efficient: An advanced analog temporal encoder for brain-inspired computing systems

机译:使神经编码更强大,更节能:用于大脑启发式计算系统的高级模拟时间编码器

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Neural encoder is one of the key components in neuromorphic computing systems, whereby sensory information is transformed into spike coded trains. The design of temporal encoder has attracted a widespread attention in the field of neuromorphic computing in the past few years. The information in the temporal encoding scheme with inter-spike intervals can arise from correlations between spike times, which could not be incorporated in the traditional rate encoding scheme. In this paper, we propose a robust and energy efficient analog implementation of the spiking temporal encoder. We pattern the neural activities across multiple timescales and encode the sensory information using time dependent temporal scales. The concept of iteration structure is introduced to construct a neural encoder that greatly increases the information process ability of the proposed temporal encoder. Integrated with iteration technique and operational-amplifier-free design, the error rate of the output temporal codes is reduced to an extremely low level. A lower sampling rate accompanied by additional verification spikes is introduced in the schemes, which significantly reduces the power consumption of the encoding system. To the best of our knowledge, our proposed neuron circuit is the first analog hardware implementation of the neural encoder that could present the sensory data using inter-spike interval temporal encoding scheme. The simulation and measurement results show the proposed temporal encoder exhibits not only energy efficiency but also high accuracy.
机译:神经编码器是神经形态计算系统中的关键组件之一,由此,感官信息被转换为尖峰编码序列。在过去的几年中,时间编码器的设计在神经形态计算领域引起了广泛的关注。具有尖峰间隔的时间编码方案中的信息可能来自尖峰时间之间的相关性,而传统的速率编码方案中无法包含这些信息。在本文中,我们提出了尖峰时间编码器的鲁棒且节能的模拟实现。我们在多个时间尺度上对神经活动进行模式化,并使用与时间有关的时间尺度对感觉信息进行编码。引入迭代结构的概念来构造神经编码器,该神经编码器大大提高了所提出的时间编码器的信息处理能力。与迭代技术和无运算放大器设计相集成,输出时间码的错误率降低到极低的水平。方案中引入了较低的采样率,并伴随有额外的验证尖峰,从而显着降低了编码系统的功耗。据我们所知,我们提出的神经元电路是神经编码器的第一个模拟硬件实现,它可以使用穗间时间间隔编码方案来呈现感觉数据。仿真和测量结果表明,所提出的时间编码器不仅具有能量效率,而且具有很高的精度。

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