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Vibration-based damage detection in wind turbine blades using Phase-based Motion Estimation and motion magnification

机译:基于相运动估计和运动倍率的风力涡轮机叶片基于振动的损伤检测

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Vibration-based Structural Health Monitoring (SHM) techniques are among the most common approaches for structural damage identification. The presence of damage in structures may be identified by monitoring the changes in dynamic behavior subject to external loading, and is typically performed by using experimental modal analysis (EMA) or operational modal analysis (OMA). These tools for SHM normally require a limited number of physically attached transducers (e.g. accelerometers) in order to record the response of the structure for further analysis. Signal conditioners, wires, wireless receivers and a data acquisition system (DAQ) are also typical components of traditional sensing systems used in vibration-based SHM. However, instrumentation of lightweight structures with contact sensors such as accelerometers may induce mass-loading effects, and for large-scale structures, the instrumentation is labor intensive and time consuming. Achieving high spatial measurement resolution for a large-scale structure is not always feasible while working with traditional contact sensors, and there is also the potential for a lack of reliability associated with fixed contact sensors in outliving the life-span of the host structure. Among the state-of-the-art non-contact measurements, digital video cameras are able to rapidly collect high-density spatial information from structures remotely. In this paper, the subtle motions from recorded video (i.e. a sequence of images) are extracted by means of Phase-based Motion Estimation (PME) and the extracted information is used to conduct damage identification on a 2.3-m long Skystream (R) wind turbine blade (WTB). The PME and phased-based motion magnification approach estimates the structural motion from the captured sequence of images for both a baseline and damaged test cases on a wind turbine blade. Operational deflection shapes of the test articles are also quantified and compared for the baseline and damaged states. In addition, havi
机译:基于振动的结构健康监测(SHM)技术是结构损伤识别的最常见方法之一。可以通过监测受外部加载的动态行为的变化来识别结构损伤,并且通常通过使用实验模态分析(EMA)或操作模态分析(OMA)来识别。这些用于SHM的这些工具通常需要有限数量的物理附着的换能器(例如加速度计),以便记录结构的响应以进一步分析。信号调节器,电线,无线接收器和数据采集系统(DAQ)也是在基于振动的SHM中使用的传统传感系统的典型组件。然而,具有诸如加速度计的接触传感器的轻质结构的仪器可能导致大规模装载效果,并且对于大规模结构,仪器是劳动力密集且耗时的耗材。在使用传统的接触传感器的同时,实现大型结构的高空间测量分辨率并不总是可行的,并且还存在与固定接触传感器相关的可靠性在宿主结构的寿命中缺乏可靠性。在最先进的非接触式测量中,数字摄像机能够从远程中从结构中迅速收集高密度空间信息。在本文中,通过基于相位的运动估计(PME)提取来自记录的视频(即图像序列)的微妙动作,并且提取的信息用于对2.3米长的天空(R)进行损坏识别风力涡轮机叶片(WTB)。 PME和基于分阶段的运动倍率方法估计来自捕获的图像序列的结构运动,用于在风力涡轮机叶片上的基线和损坏的测试用例。测试制品的操作偏转形状也被定量并与基线和受损状态进行比较。此外,哈维

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