Fault tolerant Block Based Neural Networks

Sai sri Krishna Haridass, D. Hoe
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引用次数: 4

Abstract

Block Based Neural Networks (BBNNs) have shown to be a practical means for implementing evolvable hardware on reconfigurable fabrics for solving a variety of problems that take advantage of the massive parallelism offered by a neural network approach. This paper proposes a method for obtaining a fault tolerant implementation of BBNNs by using a biologically inspired layered design. At the lowest level, each block has its own online detection and correcting logic combined with sufficient spare components to ensure recovery from permanent and transient errors. Another layer of hierarchy combines the blocks into clusters, where a redundant column of blocks can be used to replace blocks that cannot be repaired at the lowest level. The hierarchical approach is well-suited to a divide-and-conquer approach to genetic programming whereby complex problems are subdivided into smaller parts. The overall approach can be implemented on a reconfigurable fabric.
基于容错块的神经网络
基于块的神经网络(bbnn)已经被证明是在可重构结构上实现可进化硬件的一种实用手段,可以利用神经网络方法提供的大量并行性来解决各种问题。本文提出了一种利用受生物学启发的分层设计获得bbnn容错实现的方法。在最低级别,每个块都有自己的在线检测和纠错逻辑,并结合足够的备用组件,以确保从永久和瞬态错误中恢复。另一层层次结构将块组合到集群中,其中冗余的块列可用于替换在最低级别无法修复的块。分层方法非常适合分而治之的遗传编程方法,即将复杂的问题细分为更小的部分。整个方法可以在可重构结构上实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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