University of Sousse, Higher Institute of Applied Sciences and Technology of Sousse, Sousse, Tunisia.
University of Monastir, LR12ES06-Laboratory of Technology and Medical Imaging, Monastir, Tunisia.
Comput Intell Neurosci. 2019 Apr 1;2019:8212867. doi: 10.1155/2019/8212867. eCollection 2019.
In this article, we propose to design a new modular architecture for a self-organizing map (SOM) neural network. The proposed approach, called systolic-SOM (SSOM), is based on the use of a generic model inspired by a systolic movement. This model is formed by two levels of nested parallelism of neurons and connections. Thus, this solution provides a distributed set of independent computations between the processing units called neuroprocessors (NPs) which define the SSOM architecture. The NP modules have an innovative architecture compared to those proposed in the literature. Indeed, each NP performs three different tasks without requiring additional external modules. To validate our approach, we evaluate the performance of several SOM network architectures after their integration on an FPGA support. This architecture has achieved a performance almost twice as fast as that obtained in the recent literature.
在本文中,我们提出了一种新的自组织映射(SOM)神经网络的模块化架构设计。所提出的方法称为脉动自组织映射(SSOM),它基于使用受脉动运动启发的通用模型。该模型由神经元和连接的两个嵌套的并行层次组成。因此,这种解决方案在被称为神经处理器(NPs)的处理单元之间提供了一组分布式的独立计算,这些处理器定义了 SSOM 架构。与文献中提出的解决方案相比,NP 模块具有创新性的架构。实际上,每个 NP 无需额外的外部模块即可执行三项不同的任务。为了验证我们的方法,我们在 FPGA 支持下集成了几种 SOM 网络架构,并对其性能进行了评估。与最近文献中获得的结果相比,该架构的性能提高了近一倍。