高维向量的嵌套管道硬件自组织映射

H. Hikawa
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引用次数: 1

摘要

提出了一种针对高维矢量的硬件自组织映射(SOM)。所提出的SOM基于嵌套体系结构和管道处理。由于采用同构模块化结构,嵌套体系结构提供了较高的可扩展性。原始的嵌套SOM设计用于处理低维向量,实现了完全并行计算,并取得了非常高的性能。在本文中,该架构通过使用顺序计算扩展到处理更高维度的向量,这需要多个时钟来处理单个向量。为了提高性能,该架构采用流水线计算,赢家神经元的搜索和权向量的更新同时进行。系统的可操作时钟频率为60 MHz,吞吐量达到每秒15012亿个连接更新(MCUPS)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nested Pipeline Hardware Self-Organizing Map for High Dimensional Vectors
This paper proposes a hardware Self-Organizing Map (SOM) for high dimensional vectors. The proposed SOM is based on nested architecture with pipeline processing. Due to homogeneous modular structure, the nested architecture provides high expandability. The original nested SOM was designed to handle low-dimensional vectors with fully parallel computation, and it yielded very high performance. In this paper, the architecture is extended to handle much higher dimensional vectors by using sequential computation, which requires multiple clocks to process a single vector. To increase the performance, the proposed architecture employs pipeline computation, in which search of winner neuron and weight vector update are carried out simultaneously. Operable clock frequency for the system was 60 MHz, and its throughput reached 15012 million connection updates per second (MCUPS).
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