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Novel Industrial Wireless Sensor Networks for Machine Condition Monitoring and Fault Diagnosis

机译:用于机器状态监测和故障诊断的新型工业无线传感器网络

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This paper proposes a novel industrial wireless sensor network (IWSN) for industrial machine condition monitoring and fault diagnosis. In this paper, the induction motor is taken as an example of monitored industrial equipment due to its wide use in industrial processes. Motor stator current and vibration signals are measured for further processing and analysis. On-sensor node feature extraction and on-sensor fault diagnosis using neural networks are then investigated to address the tension between the higher system requirements of IWSNs and the resource-constrained characteristics of sensor nodes. A two-step classifier fusion approach using Dempster–Shafer theory is also explored to increase diagnosis result quality. Four motor operating conditions—normal without load, normal with load, loose feet, and mass imbalance—are monitored to evaluate the proposed system. Experimental results show that, compared with raw data transmission, on-sensor fault diagnosis could reduce payload transmission data by 99%, decrease node energy consumption by 97%, and prolong node lifetime from 106 to 150 h, an increase of 43%. The final fault diagnosis results using the proposed classifier fusion approach give a result certainty of at least 97.5%. To leverage the advantages of on-sensor fault diagnosis, another system operating mode is explored, which only transmits the fault diagnosis result when a fault happens or at a fixed interval. For this mode, the node lifetime reaches 73 days if sensor nodes transmit diagnosis results once per hour.
机译:本文提出了一种新型的工业无线传感器网络(IWSN),用于工业机械状态监测和故障诊断。由于感应电动机在工业过程中的广泛应用,因此本文将其作为受监控的工业设备的示例。测量电动机定子电流和振动信号,以进行进一步处理和分析。然后研究使用神经网络的传感器上节点特征提取和传感器上故障诊断,以解决IWSN的更高系统要求与传感器节点的资源受限特征之间的矛盾。还探索了使用Dempster-Shafer理论的两步分类器融合方法,以提高诊断结果的质量。监视四个电动机运行状况-无负载正常,有负载正常,脚松动和质量不平衡-以评估建议的系统。实验结果表明,与原始数据传输相比,传感器上的故障诊断可以将有效载荷传输数据减少99%,将节点能耗降低97%,并将节点寿命从106小时延长至150小时,增加43%。使用建议的分类器融合方法的最终故障诊断结果给出至少97.5%的结果确定性。为了利用传感器上故障诊断的优势,探索了另一种系统运行模式,该模式仅在故障发生时或以固定间隔发送故障诊断结果。对于这种模式,如果传感器节点每小时发送一次诊断结果,则节点寿命达到73天。

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