Implementing Deep Learning Models in Embedded Systems for Diagnosis Induction Machine

Kevin Barrera-Llanga, Á. Sapena-Bañó, J. Martínez-Román, R. Puche-Panadero
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Abstract

Diagnosis of induction machines based on deep learning models is becoming a trend in maintenance systems of modern industry. The implementation of such systems allows low-cost industrial monitoring due to the characteristics of hardware and software. However, combining deep learning models with current embedded systems is a difficult issue due to the computational cost to run data through neural networks. In particular, balancing the resources of graphics processing unit (GPU) with modern architecture models is a challenge for prototyping induction machine diagnostic systems. In this work, a novel method is proposed to implement trained deep learning models in low-cost embedded systems. We review algorithmic optimizations for running neural network models, balancing computational resources. In addition, we propose the use of a graphical user interface (GUI) as a tool for the end user of the embedded system. The approach proposed in this work can be of great help to future researchers who develop their prototype using deep learning models and low-cost embedded systems.
深度学习模型在诊断感应机嵌入式系统中的实现
基于深度学习模型的感应电机诊断已成为现代工业维修系统的发展趋势。由于硬件和软件的特点,这种系统的实施可以实现低成本的工业监测。然而,由于通过神经网络运行数据的计算成本,将深度学习模型与当前的嵌入式系统相结合是一个困难的问题。特别是,平衡图形处理单元(GPU)的资源与现代架构模型是一个挑战的原型感应电机诊断系统。本文提出了一种在低成本嵌入式系统中实现经过训练的深度学习模型的新方法。我们回顾了运行神经网络模型的算法优化,平衡计算资源。此外,我们建议使用图形用户界面(GUI)作为嵌入式系统最终用户的工具。这项工作中提出的方法对未来使用深度学习模型和低成本嵌入式系统开发原型的研究人员有很大的帮助。
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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