超声波传感器
表征(材料科学)
消散
人工神经网络
财产(哲学)
试验数据
计算机科学
无损检测
实验数据
能量(信号处理)
人工智能
物理
声学
材料科学
纳米技术
数学
哲学
认识论
统计
量子力学
热力学
程序设计语言
作者
Sangmin Lee,John S. Popovics
标识
DOI:10.1080/09349847.2024.2350398
摘要
There is a need for reliable nondestructive test methods that can collect data from structural members and analyze the results in a rapid and efficient manner. Large amounts of test data are needed to achieve such characterization, which provides additional challenges because of their heterogeneity and complexity. Advances in machine learning, in particular physics-informed neural networks (PINN), offer potential to address these problems. PINN is a particular form of artificial neural networks (ANN) and portends notable advantages over traditional measurand analysis or purely data-driven approaches. Here, we explore the potential of heterogeneous material property characterization using PINN and ultrasonic wave data. First, several types of 1-D ultrasonic wave data are numerically simulated for a spatially heterogeneous material, and then PINN is applied to predict wave velocity, defect location, and energy dissipation. Then, three different types of defects are simulated and all defects are detected using the corresponding 2-D ultrasonic wave data and PINN. The presented results demonstrate the promise of PINN to assist with heterogeneous material characterization methods.
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