基于神经元机器结构的反向传播学习算法的计算

J. B. Ahn
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引用次数: 5

摘要

神经元机(neural machine, NM)是一种用于设计高效神经网络仿真系统的硬件架构。然而,由于其固有的单向性,NM架构不支持反向传播(BP)学习算法。本文提出了一种新的NM架构方案来支持bpalgga算法。反向映射记忆、突触放置算法和一种称为三重旋转记忆的记忆结构可用于在前馈和误差BP阶段共享突触权重,而不会降低计算性能。在现场可编程阵列板上实现了一个支持bp训练算法的神经网络系统,并成功地训练了一个可以对MNIST手写数字进行分类的神经网络。所实现的系统比大多数基于其他硬件架构的芯片级或板级系统表现出更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computation of Backpropagation Learning Algorithm Using Neuron Machine Architecture
The neuron machine (NM) is a hardwarearchitecture that can be used to design efficient neural networksimulation systems. However, owing to its intrinsicunidirectional nature, NM architecture does not supportbackpropagation (BP) learning algorithms. This paperproposes novel schemes for NM architecture to support BPalgorithms. Reverse-mapping memories, synapse placementalgorithm, and a memory structure called triple rotatememory can be used to share synaptic weights in both the feedforwardand error BP stages without degrading thecomputational performance. An NM system supporting a BPtraining algorithm was implemented on a field-programmablegate array board and successfully trained a neural networkthat can classify MNIST handwritten digits. The implementedsystem showed a better performance over most chip-level orboard-level systems based on other hardware architectures.
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