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引用次数: 0

摘要

本文描述了在现场可编程门阵列(FPGA)上的脉冲神经网络(SNN)架构的完整数字硬件实现,并重点提出了一种解决方案,以在各种应用中重用相同的SNN以实现最佳硬件。这种受大脑启发的神经形态计算方法解决各种问题,具有很大的潜力和好处。脉冲神经元模型的精确实现需要大量的硬件。设计多个snn来解决各种应用并不被视为理想的实现方法,这是本工作中解决的关键问题。提出了可重用体系结构作为此问题的解决方案。这项工作的目标是通过将相同的SNN应用于手势控制机械臂和模式识别的两种不同应用来证明这种可重用性方面,以减少硬件使用。整个硬件设计采用超高速集成电路硬件描述语言进行,并在ModelSim RTL模拟器中进行仿真。用于执行合成的工具是Intel Quartus Prime。研究表明,在提出的双应用SNN框架中,所需的神经元数量和硬件资源利用率远低于针对单一应用的报告工作。
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Reusable Spiking Neural Network Architecture
The paper describes a full-fledged digital hardware implementation of Spiking Neural Network (SNN) architecture on a Field Programmable Gate Array (FPGA) and is focused on proposing a solution to reuse the same SNN for various applications for optimal hardware. This brain-inspired Neuromorphic computing approach to solve various problems has got a lot of potential and benefits. The accurate implementation of spiking neuron models occupies lot of hardware. Designing multiple SNNs for solving various applications is not seen as an ideal approach for implementation which is the key issue addressed in this work. Reusable architecture is proposed as a solution to this issue. The goal of this work is to demonstrate this reusability aspect to reduce the hardware usage by applying the same SNN to two different applications of gesture controlled robotic arm and pattern recognition. The entire hardware designing is done in Very High-Speed Integrated Circuit Hardware Description Language and simulated in ModelSim RTL simulator. The tool used for performing synthesis is Intel Quartus Prime. It has been demonstrated that the number of neurons and the hardware resource utilization required in the proposed dual application SNN framework is much less than the same for the reported works intended for single application.
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