FPGA-based Neural Net for Failures Prediction in the Cold Forging Process

G. Dec
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引用次数: 1

Abstract

This paper presents and discusses the implementation of deep neural network for the purpose of failure prediction in the cold forging process. The implementation consists of an LSTM and a dense layer implemented on FPGA. The network was trained beforehand on Desktop Computer using Keras library for Python and the weights and the biases were embedded into the implementation. The implementation is executed using the DSP blocks, available via Vivado Design Suite, which are in compliance with the IEEE754 standard. The simulation of the network achieves 100% classification accuracy on the test data and high calculation speed.
基于fpga的冷锻失效预测神经网络
本文提出并讨论了基于深度神经网络的冷锻件失效预测方法。该实现由LSTM和在FPGA上实现的密集层组成。该网络事先在桌面计算机上使用Python的Keras库进行训练,并将权重和偏差嵌入到实现中。该实现使用DSP模块执行,可通过Vivado Design Suite获得,符合IEEE754标准。该网络的仿真在测试数据上实现了100%的分类准确率和较高的计算速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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