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Multi-FPGA implementation of feedforward network and its performance analysis

机译:前馈网络的多FPGA实现及其性能分析

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Multi-FPGA system for the design of the spiking neural network is a great challenge for hardware acceleration. Multilayer feedforward neural networks (FNNs) are vitally important for the study of the coding problems in sensory organs. In this paper a multilayer FNN is implemented on a multi-FPGA-based system, which can guarantee both the high computational efficiency and the large network scale. The time-division multiplexing technology is employed in the proposed platform to be cost-efficient. In addition, since a parallel structure is used in the hardware design, the proposed hardware implementation can speedup approximately 4.8×10 times faster than the real-world biological behaviors in a high computational precision. Clock synchronization is considered in the design of the FNN to guarantee the accuracy of the signal transmission between layers. The proposed system can be applied to a broad kinds of fields such as the control of motors and the artificial intelligence, and the presented neurons can be replaced by more complicated neurons for the study of other dynamical characteristics of the neural networks.
机译:用于尖峰神经网络设计的多FPGA系统对于硬件加速是一个巨大的挑战。多层前馈神经网络(FNN)对于研究感觉器官的编码问题至关重要。本文在基于多FPGA的系统上实现了多层FNN,可以保证较高的计算效率和较大的网络规模。在所提出的平台中采用时分复用技术以节省成本。另外,由于在硬件设计中使用了并行结构,因此所提出的硬件实现可以以较高的计算精度比实际生物学行为快大约4.8×10倍。 FNN的设计中考虑了时钟同步,以确保各层之间信号传输的准确性。所提出的系统可以应用于广泛的领域,例如电动机的控制和人工智能,并且所提出的神经元可以被更复杂的神经元所替代,以研究神经网络的其他动力学特性。

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