首页> 外文会议>Review of Progress in Quantitative Nondestructive Evaluation >ARTIFICIAL NEURAL NETWORK BASED ALGORITHM FOR ACOUSTIC IMPACT BASED NONDESTRUCTIVE PROCESS MONITORING OF COMPOSITE PRODUCTS
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ARTIFICIAL NEURAL NETWORK BASED ALGORITHM FOR ACOUSTIC IMPACT BASED NONDESTRUCTIVE PROCESS MONITORING OF COMPOSITE PRODUCTS

机译:基于人工神经网络的基于声波冲击的复合材料无损过程监测算法

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摘要

Damages like cracks, delaminations, etc., in composite parts have traditionally been evaluated using manual methods like acoustic impact (using measurements in the audio frequencies). This technique is currently used during manufacturing for product quality testing and later for maintenance and assurance of structural integrity. The automation of this technique will significantly improve the reliability of inspection. The signals obtained from the composites are analyzed using signal-processing techniques in the time-frequency domain to build a robust algorithm for detection and identification of defects. A feature vector is constructed using these techniques and then applied to a neural network for defect identification. Comparative studies are conducted to search for the best and most comprehensive feature vector. Results using different signal processing techniques are presented. Similarly comparative results are presented between two different kinds of neural networks (namely Radial Basis functions and MLP) and various architectures in each kind. A low cost data acquisition system has also been developed for acquiring audio signals using the sound card and the microphone in a multi-media PC.
机译:传统上,复合零件中的损坏(如裂纹,分层等)是使用手动方法(如声波冲击)(使用音频测量)进行评估的。该技术目前在制造过程中用于产品质量测试,后来用于维护和确保结构完整性。该技术的自动化将大大提高检查的可靠性。从复合材料获得的信号在时频域中使用信号处理技术进行分析,以建立用于检测和识别缺陷的强大算法。使用这些技术构造特征向量,然后将其应用于神经网络以进行缺陷识别。进行比较研究以寻找最佳和最全面的特征向量。给出了使用不同信号处理技术的结果。类似地,在两种不同类型的神经网络(即径向基函数和MLP)以及每种类型的各种体系结构之间也给出了比较结果。还开发了一种低成本的数据采集系统,用于在多媒体PC中使用声卡和麦克风采集音频信号。

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