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Experimental Studies on Intelligent Fault Detection and Diagnosis Using Sensor Networks on Mechanical Pneumatic Systems

机译:机械气动系统中基于传感器网络的智能故障检测与诊断实验研究

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Fault is a undesirable factor in any mechanical/pneumatic system. It affects the efficiency of system operation and reduces economic benefit in industry. The early detection and diagnosis of faults in a mechanical system becomes important for preventing failure of equipment and loss of productivity and profits. In this paper, we present our ongoing research results on intelligent fault detections and diagnosis (FDD) on mechanical/pneumatic systems. Using data from sensors and sensor network in an integrated industrial system, our proposed FDD methodology provides the analysis of necessary sensory information (for example, flow rates and pressure, as well as other digital sensor data) for the detection and diagnosis of system fault. In this experimental study, the leakage of pneumatic cylinder was the "fault." It was shown that the FDD analysis was able to make diagnosis of leakage both in location and size of the fault. In addition, the systematic fault and localized faults can be detected separately. The proposed wavelet method gives rise to the fingerprint analysis to recognize the patterns of the flow rate and pressure data-a very useful tool in intelligent fault detection and diagnosis.
机译:在任何机械/气动系统中,故障都是不可取的因素。它会影响系统运行的效率并降低行业的经济效益。机械系统中的故障的早期检测和诊断对于防止设备故障以及生产力和利润的损失至关重要。在本文中,我们介绍了我们正在进行的有关机械/气动系统智能故障检测与诊断(FDD)的研究成果。通过在集成的工业系统中使用来自传感器和传感器网络的数据,我们提出的FDD方法论可以分析必要的传感器信息(例如,流量和压力以及其他数字传感器数据),以检测和诊断系统故障。在本实验研究中,气缸泄漏是“故障”。结果表明,FDD分析能够对故障的位置和大小进行泄漏诊断。另外,可以分别检测系统性故障和局部性故障。提出的小波方法引起指纹分析,以识别流量和压力数据的模式,这是在智能故障检测和诊断中非常有用的工具。

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