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Determination of Impact Damage in CFRP via PVDF Signal Analysis with Support Vector Machine

机译:用支持向量机通过PVDF信号分析测定CFRP中的冲击损伤

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摘要

Carbon fiber reinforced plastics (CFRPs) have high specific stiffness and strength, but they are vulnerable to transverse loading, especially low-velocity impact loadings. The impact damage may cause serious strength reduction in CFRP structure, but the damage in a CFRP is mainly internal and microscopic, that it is barely visible. Therefore, this study proposes a method of determining impact damage in CFRP via poly(vinylidene fluoride) (PVDF) sensor, which is convenient and has high mechanical and electrical performance. In total, 114 drop impact tests were performed to investigate on impact responses and PVDF signals due to impacts. The test results were analyzed to determine the damage of specimens and signal features, which are relevant to failure mechanisms were extracted from PVDF signals by means of discrete wavelet transform (DWT). Support vector machine (SVM) was used for optimal classification of damage state, and the model using radial basis function (RBF) kernel showed the best performance. The model was validated through a 4-fold cross-validation, and the accuracy was reported to be 92.30%. In conclusion, impact damage in CFRP structures can be effectively determined using the spectral analysis and the machine learning-based classification on PVDF signals.
机译:碳纤维增强塑料(CFRPS)具有高比刚度和强度,但它们易于横向负载,特别是低速冲击载荷。冲击损伤可能导致CFRP结构的严重强度降低,但CFRP损伤主要是内部和显微镜,即它几乎看不到。因此,本研究提出了一种通过聚(偏二氟乙烯)(PVDF)传感器来确定CFRP中的冲击损伤的方法,这是方便的机械和电气性能。总共,进行114次液滴冲击试验以研究由于撞击引起的影响响应和PVDF信号。分析测试结果以确定通过离散小波变换(DWT)从PVDF信号中提取与故障机制相关的标本和信号特征的损坏。支持向量机(SVM)用于最佳分类的损坏状态,并且使用径向基函数(RBF)内核的模型显示出最佳性能。该模型通过4倍交叉验证验证,准确度报告为92.30%。总之,可以使用光谱分析和基于机器学习的PVDF信号分类有效地确定CFRP结构中的冲击损伤。

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