使用检查神经元的错误弹性神经形态网络

Sujay Pandey, Suvadeep Banerjee, A. Chatterjee
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引用次数: 7

摘要

在过去的十年里,人工神经网络在解决模拟人类智能的问题上取得了巨大的进步。这些系统中的许多都是使用传统的数字计算引擎实现的,在内存访问或数值计算期间可能会出现错误。虽然这种网络具有固有的容错性,但特定的错误可能导致错误的决策。本研究为多层人工神经网络开发了一种低开销的错误检测和校正方法,其中隐藏层函数使用检查神经元进行近似。实验结果表明,利用编码检查的一致性特性,可以在极低的计算开销下实现对注入错误的高覆盖率。一个关键的附带好处是,当向网络提供与网络训练操作的数据不对应的离群数据时,检查可以标记错误。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Error Resilient Neuromorphic Networks Using Checker Neurons
The last decade has seen tremendous advances in the application of artificial neural networks to solving problems that mimic human intelligence. Many of these systems are implemented using traditional digital compute engines where errors can occur during memory accesses or during numerical computation. While such networks are inherently error resilient, specific errors can result in incorrect decisions. This work develops a low overhead error detection and correction approach for multilayer artificial neural networks, here the hidden layer functions are approximated using checker neurons. Experimental results show that a high coverage of injected errors can be achieved with extremely low computational overhead using consistency properties of the encoded checks. A key side benefit is that the checks can flag errors when the network is presented outlier data that do not correspond to data with which the network is trained to operate.
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