首页> 外文期刊>Journal of intelligent material systems and structures >Lamb Wave Propagation-based Damage Identification for Quasi-isotropic CF/EP Composite Laminates Using Artificial Neural Algorithm: Part II--Implementation and Validation
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Lamb Wave Propagation-based Damage Identification for Quasi-isotropic CF/EP Composite Laminates Using Artificial Neural Algorithm: Part II--Implementation and Validation

机译:准各向同性CF / EP复合材料层压板基于Lamb Wave传播的损伤识别的人工神经算法:第二部分-实施和验证

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摘要

Active transducer networks using distributed piezoelectric actuator/sensor were designed in terms of a concept of'Standard Sensor Unit' (SSU). Functionally integrating the artificial neural networks well-trained by Damage Parameters Database (DPD) developed in Part I, an active online structural health monitoring (SHM) system was configured on a VXI platform, which was then validated by quantitatively identifying hole-type defects in quasi-isotropic [0/45/-45/90]_s CF/EP (T650/F584) composite laminates. The system has exhibited excellent ability to quantitatively assess the damaged parameters, including presence, location, geometric identity, and orientation. Additionally, the reliability and performance of the SHM system on the inherent network configurations, such as architecture, training pattern, training function, and distribution of transducers, were also evaluated.
机译:根据“标准传感器单元”(SSU)的概念设计了使用分布式压电致动器/传感器的有源换能器网络。在功能上集成了由第一部分开发的损伤参数数据库(DPD)训练有素的人工神经网络,在VXI平台上配置了主动在线结构健康监测(SHM)系统,然后通过定量识别孔洞中的缺陷进行验证准各向同性[0/45 / -45 / 90] _s CF / EP(T650 / F584)复合层压板。该系统具有出色的定量评估损坏参数的能力,包括存在,位置,几何形状和方向。此外,还评估了SHM系统在固有网络配置(例如体系结构,训练模式,训练功能和换能器分布)上的可靠性和性能。

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