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DHyANA: A NoC-based neural network hardware architecture

机译:DHyANA:基于NoC的神经网络硬件架构

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Understanding and modeling the brain is one of the key scientific challenges in the twenty-first century, and a grown effort is rising on a global scale. Due to its high parallelism, the hardware implementation of large-scale spiking neural networks (SNNs) promises superior execution speed compared to sequential software approaches. Such systems can significantly benefit from the use of networks-on-chip(NoC), as they scale very well concerning area, performance, power/energy consumption, and overall design effort. We developed a hierarchical network-on-chip for a hardware SNN architecture to improve the communication and scalability of the system. The architecture was implemented in an Altera Stratix IV FPGA, and a logic synthesis was performed to evaluate the system, achieving an area of 0.23mm2 and a power dissipation of 147mW for a 256 neurons implementation.
机译:理解和建模大脑是二十一世纪的主要科学挑战之一,并且在全球范围内,人们的努力也在不断增加。由于其高度并行性,与顺序软件方法相比,大规模尖峰神经网络(SNN)的硬件实现有望实现更高的执行速度。这样的系统可以极大地受益于片上网络(NoC)的使用,因为它们在面积,性能,功耗/能耗以及总体设计工作方面都可以很好地扩展。我们为硬件SNN架构开发了一个分层的片上网络,以改善系统的通信和可伸缩性。该架构是在Altera Stratix IV FPGA中实现的,并进行了逻辑综合以评估系统,对于256个神经元实现而言,其面积为0.23mm2,功耗为147mW。

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