Real-Time Clustering of Datasets with Hardware Embedded Neuromorphic Neural Networks

L. Bakó
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引用次数: 6

Abstract

Neuromorphic artificial neural networks attempt to understand the essential computations that take place in the dense networks of interconnected neurons making up the central nervous systems in living creatures. This paper demonstrates that artificial spiking neural networks, – built to resemble the biological model– encoding information in the timing of single spikes are capable of computing and learning clusters from realistic data. It shows how a spiking neural network based on spike-time coding can successfully perform unsupervised and supervised clustering on real-world data. A temporal encoding of continuously valued data is developed. These models are validated through software simulation and then used to develop suitable hardware implementations on FPGA circuits. Fully parallel implementations are investigated and compared with solutions that make use of embedded soft-core microcontrollers to implement some of the most resource-consuming components of the artificial neural network. Details of the implementation are given, with test bench description. Measurement results are presented and compared to related findings in the specific literature.
基于硬件嵌入式神经形态神经网络的数据集实时聚类
神经形态人工神经网络试图理解发生在构成生物中枢神经系统的相互连接的神经元密集网络中的基本计算。本文论证了仿照生物模型构建的人工尖峰神经网络在单尖峰时间编码信息,能够从实际数据中计算和学习聚类。它展示了基于峰值时间编码的峰值神经网络如何成功地对真实数据执行无监督和有监督聚类。提出了一种连续值数据的时间编码方法。这些模型通过软件仿真验证,然后用于在FPGA电路上开发合适的硬件实现。研究了完全并行实现,并与利用嵌入式软核微控制器实现人工神经网络中一些最消耗资源的组件的解决方案进行了比较。给出了实现的细节,并给出了测试台架的描述。给出了测量结果,并与特定文献中的相关发现进行了比较。
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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