FPGA architecture for feed-forward sequential memory network targeting long-term time-series forecasting

Kentaro Orimo, Kota Ando, Kodai Ueyoshi, M. Ikebe, T. Asai, M. Motomura
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引用次数: 4

Abstract

Deep learning is being widely used in various applications, and diverse neural networks have been proposed. A form of neural network, such as the novel feed-forward sequential memory network (FSMN), aims to forecast prospective data by extracting the time-series feature. FSMN is a standard feed-forward neural network equipped with time-domain filters, and it can forecast without recurrent feedback. In this paper, we propose a field-programmable gate-array (FPGA) architecture for this model, and exhibit that the resource does not increase exponentially as the network scale increases.
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面向长期时间序列预测的前馈顺序存储网络的FPGA结构
深度学习被广泛应用于各种应用中,各种各样的神经网络已经被提出。神经网络的一种形式,如新型前馈序列记忆网络(FSMN),旨在通过提取时间序列特征来预测未来数据。FSMN是一种带有时域滤波器的标准前馈神经网络,它可以在没有循环反馈的情况下进行预测。在本文中,我们为该模型提出了一种现场可编程门阵列(FPGA)架构,并证明了资源不会随着网络规模的增加而呈指数级增长。
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