缺陷多层神经网络部分再训练方案的性能评价

K. Yamamori, T. Abe, S. Horiguchi
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引用次数: 2

摘要

本文研究了一种在硬件设备上实现的多层人工神经网络的有效卡滞缺陷补偿方案。为了补偿被卡住的缺陷,我们提出了一种基于BP算法的两阶段部分再训练方案,该方案在两层之间调整受缺陷影响的神经元的权重。对于输入神经元,采用两次局部再训练方案;第一阶段在输入层和隐藏层之间,第二阶段在隐藏层和输出层之间。如果硬件神经网络具有学习电路,则部分再训练方案不需要任何额外的电路。本文讨论了部分再训练方案的性能、再训练时间、网络良率和泛化能力。结果表明,局部再训练方案补偿神经元卡滞缺陷的速度比BP算法全网再训练快10倍左右。此外,网络的产率也得到了提高。当网络中有16%的神经元存在0卡或1卡缺陷时,部分再训练方案对噪声输入模式的识别率达到80%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance evaluation of a partial retraining scheme for defective multi-layer neural networks
This paper addresses an efficient stuck-defect compensation scheme for multi-layer artificial neural networks implemented in hardware devices. To compensate for stuck defects, we have proposed a two-stage partial retraining scheme that adjusts weights belonging to a neuron affected by defects based on back-propagation (BP) algorithm between two layers. For input neurons, the partial retraining scheme is applied two times; first-stage between the input layer and the hidden layer, second-stage between the hidden layer and the output layer. The partial retraining scheme does not need any additional circuits if the hardware neural network has circuits for learning. In this paper we discuss the performance of the partial retraining scheme, retraining time, network yield and generalization ability. As a result, the partial retraining scheme could compensate the neuron stuck defects about 10 times faster than the whole network retraining by BP algorithm. In addition, yields of networks are also improved. The partial retraining scheme achieved more than 80% recognition ratio for noisy input patterns when 16% neurons of the network have 0-stuck or 1-stuck defects.
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