基于忆阻器的近似计算

Boxun Li, Yi Shan, Miao Hu, Yu Wang, Yiran Chen, Huazhong Yang
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引用次数: 83

摘要

摩尔定律的终止限制了能效的进一步提高。近年来,忆阻器的物理实现为神经网络的超集成硬件实现提供了一个有前途的解决方案,可以利用它来获得更好的性能和功率效率。在这项工作中,我们通过利用基于忆阻器的多层神经网络,引入了一种高效节能的近似计算框架。首先引入了可编程忆阻器近似计算单元(memristor ACU)来加速近似计算,并在其基础上提出了一个基于忆阻器的具有可扩展性的近似计算框架。介绍了忆阻器ACU的参数组态算法和状态反馈调谐电路,实现了对忆阻器ACU的有效编程。仿真结果表明,忆阻器ACU对6种常见复杂函数的最大误差仅为1.87%,状态调谐电路可达到12位精度。在我们提出的基于忆阻器的近似计算框架上实现HMAX模型,其功率效率比纯数字实现提高了22倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Memristor-based approximated computation
The cessation of Moore's Law has limited further improvements in power efficiency. In recent years, the physical realization of the memristor has demonstrated a promising solution to ultra-integrated hardware realization of neural networks, which can be leveraged for better performance and power efficiency gains. In this work, we introduce a power efficient framework for approximated computations by taking advantage of the memristor-based multilayer neural networks. A programmable memristor approximated computation unit (Memristor ACU) is introduced first to accelerate approximated computation and a memristor-based approximated computation framework with scalability is proposed on top of the Memristor ACU. We also introduce a parameter configuration algorithm of the Memristor ACU and a feedback state tuning circuit to program the Memristor ACU effectively. Our simulation results show that the maximum error of the Memristor ACU for 6 common complex functions is only 1.87% while the state tuning circuit can achieve 12-bit precision. The implementation of HMAX model atop our proposed memristor-based approximated computation framework demonstrates 22× power efficiency improvements than its pure digital implementation counterpart.
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