硅片上的神经网络:硬件故障到行为错误的映射

V. Piuri, M. Sami, R. Stefanelli
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引用次数: 4

摘要

随着越来越多的硅实现的出现和任务关键型应用的设想,神经网络中的缺陷和容错问题变得越来越重要。作为特定于体系结构的策略的替代方案,考虑了神经范式相对于功能错误模型的内在特征。特别是,这已经在多层反向传播网络中完成,其中研究了由故障叛乱引起的分类错误以及通过重复学习阶段掩盖此类错误的可能性。这些抽象的结果可以用来分析实现多层网络的各种硅架构;物理故障被映射到功能错误类,以便评估各种体系结构的内在健壮性及其关键区域,其中必须插入特别设计修改或冗余以增加容错属性。在本文中,从这个角度考虑了一些相关的实现,代表了各种设计哲学。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural networks on silicon: the mapping of hardware faults onto behavioral errors
The problem of defect- and fault-tolerance in neural networks becomes increasingly important as a growing number of silicon implementations become available and mission-critical applications are envisioned. As an alternative to architecture-specific policies, intrinsic characteristics of the neural paradigm with respect to a functional error model are considered. In particular, this has been done for multilayered back-propagation networks, where both the classification errors induced by insurgence of a fault and the possibility of masking such errors through a repeated learning phase have been studied. Such abstract results can be used to analyze various silicon architectures implementing the multi-layered nets; physical faults are mapped onto the functional error classes, so as the evaluate both the intrinsic robustness of the various architectures and their critical areas, where ad-hoc design modifications or redundancies must be inserted to increase fault-tolerance properties. In the present paper some relevant implementations, representative of various design philosophies, are considered from this point of view.<>
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