胶粘剂
支持向量机
热塑性塑料
材料科学
超声波检测
复合材料
超声波传感器
热塑性复合材料
样品(材料)
人工智能
计算机科学
机器学习
声学
图层(电子)
物理
化学
色谱法
作者
Guanyu Piao,Jorge Mateus,Jiaoyang Li,Ranjit Pachha,Parvinder Walia,Yiming Deng,Sunil Kishore Chakrapani
标识
DOI:10.1080/10589759.2022.2134365
摘要
The testing and evaluation of adhesive bonding quality between thermoplastics are crucial for structural integrity. This article presents the use of phased array ultrasonic testing (PAUT) method to characterise the adhesive interface between thermoplastic composites. Samples with three different bond conditions: control, bad and mid-level were fabricated and tested using PAUT. A damage index (DI) based classification framework aided by machine learning (ML) algorithm is proposed to classify different adhesion conditions. A set of 18 physics-based damage indices were extracted from each PAUT image for quantitative characterisation. ML algorithms were developed to build a non-linear mapping that correlates the input DIs with the output sample types to address the classification problem. The experimental results show that support vector machine (SVM) performs better than other ML algorithms with classification accuracy greater than 95%, and the defined DIs can differentiate among bad, mid-level, and control samples.
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