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An analog VLSI neural network with on-chip perturbation learning

机译:具有片上扰动学习的模拟VLSI神经网络

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摘要

An analog very large scale integration (VLSI) neural network intended for cost-sensitive, battery-powered, high-volume applications is described. Weights are stored in the analog domain using a combination of dynamic and nonvolatile memory that allows both fast learning and reliable long-term storage. The synapse occupies 4.9 K /spl mu/m/sup 2/ in a 2-/spl mu/m technology. On-chip controlled perturbation-based gradient descent allows fast learning with very little external support. Other distinguishing features include a reconfigurable topology and a temperature-independent feedforward path. An eight-neuron, 64-synapse proof-of-concept chip reliably solves the exclusive-or problem in ten's of milliseconds and 4-b parity in hundred's of milliseconds.
机译:描述了一种用于成本敏感,电池供电的大批量应用的模拟超大规模集成(VLSI)神经网络。权重使用动态和非易失性存储器的组合存储在模拟域中,从而可以快速学习并可靠地长期存储。在2- / spl mu / m技术中,突触占4.9 K / spl mu / m / sup 2 /。片上控制的基于扰动的梯度下降允许在很少的外部支持的情况下进行快速学习。其他区别特征包括可重新配置的拓扑结构和与温度无关的前馈路径。八神经元,64突触的概念验证芯片可以可靠地解决“异或”问题(十毫秒)和4-b奇偶校验(百毫秒)。

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