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IWSNs with On-Sensor Data Processing for Energy Efficient Machine Fault Diagnosis

机译:具有传感器数据处理功能的IWSN,可实现节能型机器故障诊断

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Machine fault diagnosis systems need to collect and transmit dynamic signals, like vibration and current, at high-speed. However, industrial wireless sensor networks (IWSNs) and Industrial Internet of Things (IIoT) are generally based on low-speed wireless protocols, such as ZigBee and IEEE802.15.4. Large amounts of transmission data will increase the energy consumption and shorten the lifetime of energy-constrained IWSN node s as well . To address th e s e tension s when implementing machine fault diagnosis applications in IWSNs , this paper proposes a n energy efficient IWSN with on-sensor data processing. On-sensor wavelet transforms using four popular mother wavelets are explored for fault feature extraction, while an on-sensor support vector machine classifier is investigated for fault diagnosis. The effectiveness of the presented approach is evaluated by a set of experiments using motor bearing vibration data. The experimental results show that compared with raw data transmission, the proposed on-sensor fault diagnosis method can reduce the payload transmission data by 99.95%, and reduce the node energy consumption by about 10%, while the fault diagnosis accuracy of the proposed approach reaches 98%.
机译:机器故障诊断系统需要高速收集和传输动态信号,例如振动和电流。但是,工业无线传感器网络(IWSN)和工业物联网(IIoT)通常基于低速无线协议,例如ZigBee和IEEE802.15.4。大量的传输数据将增加能量消耗,并缩短能量受限的IWSN节点的寿命。为了解决在IWSN中实现机器故障诊断应用程序时的压力,本文提出了一种具有传感器上数据处理功能的节能iWSN。探索传感器上的小波变换,使用四个流行的母小波进行故障特征提取,同时研究传感器上的支持向量机分类器进行故障诊断。通过使用电动机轴承振动数据的一组实验评估了所提出方法的有效性。实验结果表明,与原始数据传输相比,该传感器故障诊断方法可以将有效载荷传输数据减少99.95%,并减少节点能耗约10%,同时该方法的故障诊断精度达到98%。

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