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A Structural Neural System for Real-time Health Monitoring of Composite Materials

机译:用于复合材料实时健康监测的结构神经系统

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摘要

A prototype structural neural system (SNS) is tested for the first time and damage detection results are presented in this study. The SNS is a passive online structural health monitoring (SHM) system that mimics the synaptic parallel computation networks present in the human biological neural system. Piezoelectric ceramic sensors and analog electronics are used to form neurons that measure strain waves generated by damage. The sensing of strain waves is similar to the proven nondestructive evaluation (NDE) technique of acoustic emission (AE) monitoring. Fatigue testing of a composite specimen on a four-point bending fixture is performed, and the SNS is used to monitor the specimen for damage in real time. The prototype SNS used four sensors as inputs, but the number of inputs can be in the tens or hundreds depending on the type of SNS processor used. This is an area of continuing development. The SNS has two channels of signal output that are digitized and processed in a computer. The first output channel tracks the propagation of waves due to damage, and the second output channel provides the combined AE responses of the sensors. The data from these two channels are used to predict the location of damage and to qualitatively indicate the severity of the damage. Overall, this study shows that the SNS can detect damage growth in composites during operation of the structure, and the SNS architecture has the potential to tremendously simplify the AE technique for use in on-board SHM. Ten or more input neurons can be used, and still only two output channels are needed. Two levels of monitoring are possible using the SNS; a coarser SHM approach, or an on-board NDE approach. The SHM approach uses the SNS with a coarse grid of neurons to monitor and detect damage occurring in a general area during operation of the structure. The SNS will indicate where and when a more sensitive inspection is needed which can be done using ground-based NDE techniques. The on-board NDE approach uses the SNS with a fine coverage of neurons for highly sensitive NDE which continuously listens for damage and provides real-time processing and information about any damage in the structure and the performance limits and safety of the vehicle.
机译:首次对原型结构神经系统(SNS)进行了测试,并在此研究中显示了损坏检测结果。 SNS是一种被动的在线结构健康监测(SHM)系统,它模仿人类生物神经系统中存在的突触并行计算网络。压电陶瓷传感器和模拟电子设备用于形成神经元,用于测量由损伤产生的应变波。应变波的感测类似于声发射(AE)监控的成熟无损评估(NDE)技术。在四点弯曲夹具上对复合材料样本进行疲劳测试,并使用SNS实时监控样本的损坏情况。 SNS原型使用四个传感器作为输入,但是输入的数量可以在数十或数百中,具体取决于所使用的SNS处理器的类型。这是一个持续发展的领域。 SNS具有两个信号输出通道,它们在计算机中被数字化和处理。第一输出通道跟踪由于损坏引起的波传播,第二输出通道提供传感器的组合AE响应。来自这两个通道的数据用于预测损坏的位置并定性指示损坏的严重程度。总体而言,这项研究表明,SNS可以在结构运行期间检测复合材料中的损伤增长,并且SNS架构具有极大简化用于车载SHM的AE技术的潜力。可以使用十个或更多输入神经元,但仍然只需要两个输出通道。使用SNS可以进行两个级别的监视:更粗略的SHM方法或机载NDE方法。 SHM方法使用带有粗糙神经元网格的SNS来监视和检测在结构操作期间在一般区域中发生的损坏。 SNS将指示何时和何时需要使用基于地面的NDE技术进行更敏感的检查。车载NDE方法使用SNS覆盖神经元,以实现高度灵敏的NDE,该神经元不断侦听损坏并提供实时处理和有关结构中任何损坏以及性能限制和车辆安全性的信息。

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