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Effects of thermal aging on damage evolution behavior of glass fiber reinforced composites with multilayer graphene by acoustic emission

机译:热老化对多层石墨烯玻璃纤维增强复合材料损伤演化行为的影响

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摘要

Abstract The thermal aging behavior of glass fiber reinforced composites has attracted much attention because of its application in elevated temperatures environments. In this study, to improve the thermal aging resistance performance of composites, multilayer graphene was embedded in glass fiber reinforced composites and the damage evolution behaviors of the composites after thermal aging treatments were investigated. The mapping relationship between damage modes and acoustic emission parameters is established by principal component analysis and k‐means clustering methods, then the acoustic emission data were trained by K‐Nearest Neighbor algorithms to obtain a damage modes identification model with positive predictive values above 90. The results showed that more matrix cracking signals are captured (or matrix cracking accumulation acoustic emission (AE) energy is abruptly raised) at the early stage of loading after 32 days of thermal aging. With the addition of multilayer graphene, the fiber/matrix debonding accumulation AE energy is significantly less than the matrix cracking accumulation AE energy, which is more obvious after thermal aging. Damage initiation and extension obtained by the acoustic emission events help to find the correlation between aging time and interior interface damage mechanism.
机译:摘要 玻璃纤维增强复合材料在高温环境下的热老化行为受到广泛关注。本研究为提高复合材料的抗热老化性能,在玻璃纤维增强复合材料中嵌入多层石墨烯,研究了复合材料热老化处理后的损伤演化行为。通过主成分分析和k-means聚类方法建立损伤模态与声发射参数的映射关系,然后利用K-最近邻算法对声发射数据进行训练,得到损伤模态识别模型,其正预测值在90%以上。结果表明:热老化32 d后,在加载初期捕获到更多的基体开裂信号(或基体开裂累积声发射(AE)能量突然升高)。随着多层石墨烯的加入,纤维/基体脱粘积累声发射能明显小于基体裂纹积累声发射能,这在热老化后更为明显。声发射事件得到的损伤萌生和延伸有助于发现老化时间与内部界面损伤机制之间的相关性。

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