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FPGA implementation of a wireless sensor node with a built-in ADALINE neural network coprocessor for vibration analysis and fault diagnosis in machine condition monitoring

机译:FPGA实现无线传感器节点,内置Adaline神经网络协处理器用于机器状态监控中的振动分析和故障诊断

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Industry is a very attractive research field for wireless sensor network (WSN) applications. This is demonstrated by the creation of a special category of these networks dedicated to industrial applications, called industrial wireless sensor networks (IWSN). The sensor node, the main component of the network, must have several characteristics, such as a very high processing speed, reliable results, communication capabilities, and reduced transmission time. In this article, we outline the results of replacing the fast Fourier transform (FFT) processing of vibrational signals with an artificial adaptive linear element (ADALINE) neural network in order to extract the harmonics of the signals and thus detect faults in rotating machines. In addition, a MicroBlaze soft-core processor and an nRF24L01+ transmitter was chosen to manage various tasks within the node and the data exchange between the nodes of the network. A Digilent Cmod A7 platform with an Artix-7 FPGA circuit from Xilinx was selected to implement the different blocks that constitute the wireless node. Practical tests showed that the choice of the ADALINE enabled us to achieve the desired results by reducing the processing time to 7.478 ms, which is a reduction of time of approximately 85% compared to results obtained in scientific research. In addition, we have reduced the number of transmitted packets to only two. These results will have a positive impact on the performance of the node, with measurements using a periodic measurement methodology showing that the lifetime of the node can reach up to 17 h. (C) 2020 Elsevier Ltd. All rights reserved.
机译:行业是无线传感器网络(WSN)应用的非常有吸引力的研究领域。这是通过创建专用于工业应用的特殊类别的特殊类别,称为工业无线传感器网络(IWSN)。传感器节点是网络的主要组件,必须具有多种特性,例如非常高的处理速度,可靠的结果,通信能力和减少的传输时间。在本文中,我们概述了用人工自适应线性元件(Adaline)神经网络替换振动信号的快速傅里叶变换(FFT)处理的结果,以便提取信号的谐波,从而检测旋转机器中的故障。另外,选择微勃尔软核处理器和NRF24L01 +发射器来管理节点内的各种任务和网络节点之间的数据交换。选择具有来自Xilinx的Artix-7 FPGA电路的Diulent CMOD A7平台,实现构成无线节点的不同块。实际测试表明,与在科学研究中获得的结果相比,通过将加工时间降低至7.478毫秒,使我们能够通过将加工时间降低至7.478毫秒来实现所需的结果。另外,我们将传输的数据包的数量减少到仅两个。这些结果将对节点的性能产生积极影响,使用定期测量方法的测量结果显示节点的寿命可以达到17小时。 (c)2020 elestvier有限公司保留所有权利。

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