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Intelligent diagnosis of mechanical-pneumatic systems using miniaturized sensors

机译:小型传感器智能诊断机械气动系统

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Fault detection and diagnosis (FDD) is applied to mechanical-pneumatic systems to perform intelligent diagnosis of various faults in the system by utilizing the sensory information commonly found in typical systems, such as pressures and flow rates. In this paper, we present research results on intelligent FDD and characterization of MEMS flow sensor. Vectorized maps are created and calibrated for the purpose of intelligent FDD. In addition, maps of N-manifold can be used for redundancy in diagnosis to improve the accuracy and reliability of the methodology. Such redundant vectorized maps provide for explanation of physical significance of the behavior of the system and the formation or detection of faults. As a result, both physical-based and signal-based intelligent fault detection and diagnosis techniques and methodology can be applied for various types of applications. Experimental results suggest that intuitive choices of parameters and features, based on the understanding of physics of the mechanical-pneumatic system, can be applied with success to intelligent detection and diagnosis of faults. Furthermore, with miniaturization, sensors can be readily made and integrated for intelligent diagnosis. Characterization and modeling of such innovative sensor designs are presented. Using new smart multi-function, telemetric, and integrated sensors as "intelligent nodes" in systems will provide necessary sensory information (e.g., pressure, flow, and temperature) for the next-generation diagnosis. The characterization and study of MEMS sensor include: correlation of flow and deflection of sensory element, analysis and modeling, vibration characteristics, fatigue tests, backflow characterization,... etc. Specifically, the results of fatigue tests provide information and feedback for the design and fabrication of the MEMS sensors; more importantly, long fatigue life is essential for the flow sensors to sustain as a transducer. Results of the findings are presented.
机译:故障检测和诊断(FDD)应用于机械气动系统,通过利用典型系统中常见的感官信息,例如压力和流速,对系统中的各种故障进行智能诊断。本文介绍了MEMS流量传感器智能FDD的研究结果及其表征。为智能FDD创建和校准矢量化地图。此外,n-inmendold的地图可用于诊断中的冗余,以提高方法的准确性和可靠性。这种冗余矢量化地图提供了对系统行为的物理意义和故障的形成或检测的解释。结果,可以应用于各种类型的应用程序基于物理和基于信号的智能故障检测和诊断技术和方法。实验结果表明,基于机械气动系统物理学的理解,可加上参数和特征的直观选择,可以取得智能检测和诊断故障。此外,利用小型化,可以容易地进行传感器并综合进行智能诊断。提出了这种创新传感器设计的特征和建模。使用新的智能多功能,遥测和集成传感器作为系统中的“智能节点”将提供下一代诊断的必要感官信息(例如,压力,流量和温度)。 MEMS传感器的表征和研究包括:感觉元件的流量和偏转的相关性,分析和建模,振动特性,疲劳试验,回流表征,...等,具体地,疲劳测试的结果为设计提供了信息和反馈并制造MEMS传感器;更重要的是,长疲劳寿命对于换能器的流动传感器至关重要。提出了结果的结果。

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