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A New Hardware Self-Organizing Map Architecture with High Expandability

机译:一种新的硬件自组织地图架构,可扩展性高

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This paper proposes a new scalable hardware SOM architecture in which neurons can easily be increased. Learning of SOM is made of two operations, i.e., winner search and vector update. In the proposed SOM, the winner search is distributed among all neurons. Owing to the distributed winner search circuit, the neuron is modularized and the architecture provides high expandability that makes it easier to increase the neurons. All neurons work in parallel including the winner search, and the proposed SOM processes a single input vector within a single clock cycle. The proposed SOM was implemented in a FPGA, and its performance was examined. Preliminary results of the experiment are presented in this paper.
机译:本文提出了一种新的可伸缩硬件SOM架构,其中神经元可以很容易地增加。 SOM的学习由两个操作,即获胜者搜索和矢量更新。在所提出的SOM中,获胜者搜索分布在所有神经元中。由于分布式获胜者搜索电路,神经元是模块化的,并且架构提供了高可扩展性,使其更容易增加神经元。所有神经元都在并行工作,包括获胜者搜索,并且所提出的SOM在单个时钟周期内处理单个输入向量。所提出的SOM在FPGA中实施,检查其性能。本文提出了实验的初步结果。

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