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首页> 外文期刊>IEEE Journal of Solid-State Circuits >An all-analog expandable neural network LSI with on-chip backpropagation learning
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An all-analog expandable neural network LSI with on-chip backpropagation learning

机译:具有片上反向传播学习功能的全模拟可扩展神经网络LSI

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摘要

This paper proposes an all-analog neural network LSI architecture and a new learning procedure called contrastive backpropagation learning. In analog neural LSI's with on-chip backpropagation learning, inevitable offset errors that arise in the learning circuits seriously degrade the learning performance. Using the learning procedure proposed here, offset errors are canceled to a large extent and the effect of offset errors on the learning performance is minimized. This paper also describes a prototype LSI with 9 neurons and 81 synapses based on the proposed architecture which is capable of continuous neuron-state and continuous-time operation because of its fully analog and fully parallel property. Therefore, an analog neural system made by combining LSI's with feedback connections is promising for implementing continuous-time models of recurrent networks with real-time learning.
机译:本文提出了一种全模拟神经网络LSI体系结构和一种称为对比反向传播学习的新学习过程。在具有片上反向传播学习功能的模拟神经LSI中,学习电路中不可避免的偏移误差会严重降低学习性能。使用此处提出的学习程序,可以在很大程度上消除偏移误差,并将偏移误差对学习性能的影响降到最低。本文还基于提出的体系结构描述了具有9个神经元和81个突触的原型LSI,由于其完全模拟和完全并行的特性,它能够连续进行神经元状态和连续时间操作。因此,通过将LSI与反馈连接相结合而制成的模拟神经系统有望用于实现具有实时学习的循环网络的连续模型。

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