基于卷积神经网络(CNN)的预测维修通道状态信息(CSI)分析

Prachi Bagave, Jeroen Linssen, W. Teeuw, J. K. Brinke, N. Meratnia
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引用次数: 7

摘要

随着第四次工业革命的开始,使用无线传感技术的预测性维护需求很大。这促使我们研究WiFi CSI作为理解机器操作的传感器的潜力。由于旋转电机是许多复杂机械的基本元件之一,因此本文重点研究了不同转速下旋转电机对CSI信号的影响分类。由于WiFi CSI技术尚不成熟,我们将重点放在数据采集上,研究这类应用的数据敏感性和可靠性。我们观察到,在理想网络条件下,cnn适合对电机的速度进行分类,并且对彼此接近的速度也很敏感。然而,在实际网络条件下,数据的不可靠性和CNN无法对其进行分类仍然是一个挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Channel State Information (CSI) analysis for Predictive Maintenance using Convolutional Neural Network (CNN)
With the onset of the fourth industrial revolution, predictive maintenance using wireless sensing technologies has been in high demand. This motivates to investigate the potential of WiFi CSI as a sensor for understanding the operation of machines. Since rotating motors are one of the fundamental elements in many complex machines, this paper focuses on the classification of CSI signals influenced by rotating motors at different speeds. As WiFi CSI technology is still not mature, we focus on data collection and study the sensitivity and reliability of data for this type of applications. We observe that CNNs are suitable to classify the speeds of motors and is also sensitive to speeds close to each other when operated in ideal network condition. However, in practical network conditions, unreliability of the data and the inability of CNN to classify it remains a challenge.
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