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Design and analysis of a reconfigurable hierarchical temporal memory architecture.

机译:可重构的分层时态存储体系结构的设计和分析。

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摘要

Self-learning hardware systems, with high-degree of plasticity, are critical in performing spatio-temporal tasks in next-generation computing systems. To this end, hierarchical temporal memory (HTM) offers time-based online-learning algorithms that store and recall temporal and spatial patterns. In this work, a reconfigurable and scalable HTM architecture is designed with unique pooling realizations. Virtual synapse design is proposed to address the dynamic interconnections occurring in the learning process. The architecture is interweaved with parallel cells and columns that enable high processing speed for the cortical learning algorithm.;HTM has two core operations, spatial and temporal pooling. These operations are verified for two different datasets: MNIST and European number plate font. The spatial pooling operation is independently verified for classification with and without the presence of noise. The temporal pooling is verified for simple prediction. The spatial pooler architecture is ported onto an Altera cyclone II fabric and the entire architecture is synthesized for Xilinx Virtex IV. The results show that 91% classification accuracy is achieved with MNIST database and 90% accuracy for the European number plate font numbers with the presence of Gaussian and Salt & Pepper noise. For the prediction, first and second order predictions are observed for a 5-number long sequence generated from European number plate font and ~95% accuracy is obtained. Moreover, the proposed hardware architecture offers 3902X speedup over the software realization. These results indicate that the proposed architecture can serve as a core to build the HTM in hardware and eventually as a standalone self-learning hardware system.
机译:具有高度可塑性的自学习硬件系统对于在下一代计算系统中执行时空任务至关重要。为此,分层时间存储器(HTM)提供了基于时间的在线学习算法,该算法可存储和调用时间和空间模式。在这项工作中,设计了具有唯一池实现的可重新配置和可伸缩的HTM体系结构。虚拟突触设计被提出来解决在学习过程中发生的动态互连。该架构与并行单元格和列交织在一起,可为皮质学习算法提供较高的处理速度。HTM具有两个核心操作:空间和时间池。已针对两个不同的数据集验证了这些操作:MNIST和欧洲车牌字体。独立地验证空间池操作是否存在噪声,以进行分类。验证时间池以进行简单预测。空间合并器体系结构被移植到Altera旋风II结构上,整个体系结构是针对Xilinx Virtex IV合成的。结果表明,使用MNIST数据库可实现91%的分类精度,而在具有高斯噪声和Salt&Pepper噪声的情况下,对于欧洲车牌号的分类精度可达到90%。对于预测,观察到了从欧洲车牌字体生成的5位长序列的一阶和二阶预测,并且获得了约95%的准确度。此外,所提出的硬件体系结构在软件实现上提供了3902X的加速。这些结果表明,所提出的体系结构可以作为在硬件中构建HTM的核心,并最终可以作为独立的自学硬件系统。

著录项

  • 作者

    Zyarah, Abdullah M.;

  • 作者单位

    Rochester Institute of Technology.;

  • 授予单位 Rochester Institute of Technology.;
  • 学科 Computer engineering.;Electrical engineering.
  • 学位 M.S.
  • 年度 2015
  • 页码 67 p.
  • 总页数 67
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 公共建筑;
  • 关键词

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