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Fatigue and reliability analysis of nano-modified scarf adhesive joints in carbon fiber composites

机译:碳纤维复合材料纳米改性丝巾粘接接头的疲劳和可靠性分析

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Enhancing the fatigue performance of scarf adhesive joints (SAJs) in carbon fiber-reinforced epoxy (CFRE) composite structures via incorporation of nanofillers into the epoxy adhesive has not yet been fully investigated and is the subject of this study. The optimum weight percentages of multi-walled carbon nanotubes (MWCNTs), SiC and Al203 nanofillers were ultrasonically dispersed in Epocast 50-A1/946 epoxy. The nanophased matrices were used to fabricate the SAJs with 5 scarf angle. Fatigue tests were conducted at constant-load amplitude, frequency of 10 Hz and stress ratio of 0.1. Result from fatigue tests showed that the gain/loss in the fatigue lives of the modified SAJs with MWCNTs, SiC and Al203 are respectively 19%, 52% and -22% at fatigue limit of 36 MPa. The load-displacement hysteresis loops of the nano-modified SAJs showed higher fatigue stiffness compared to neat epoxy-SAJ. The stiffness of the SAJs was increased with increasing number of cycles up to about N/Nf = 0.01. As the number of cycles increases the damage level is increased and thus the slope of the hysteresis loop (stiffness) is decreased and the hysteresis loop area becomes wider. The highest penalty paid to gain safe lives was observed for Al203-SAJs, which has highest scatter in the fatigue lives. (C) 2017 Elsevier Ltd. All rights reserved.
机译:通过将纳米填料掺入环氧粘合剂中来增强碳纤维增强环氧(CFRE)复合结构中的围巾粘合剂接头(SAJs)的疲劳性能尚未得到充分研究,并且是本研究的主题。将多壁碳纳米管(MWCNT),SiC和Al2O3纳米填料的最佳重量百分比超声分散在Epocast 50-A1 / 946环氧树脂中。纳米相基质被用于制造具有5个围角的SAJ。在恒定负载振幅,频率10 Hz和应力比0.1的条件下进行疲劳测试。疲劳测试结果表明,在36 MPa的疲劳极限下,MWCNTs,SiC和Al2O3改性的SAJ的疲劳寿命损益分别为19%,52%和-22%。与纯环氧SAJ相比,纳米改性SAJ的载荷-位移磁滞回线显示出更高的疲劳刚度。 SAJ的刚度随着循环次数的增加而增加,直到大约N / Nf = 0.01。随着循环次数的增加,损坏程度增加,因此磁滞回线的斜率(刚度)减小,并且磁滞回线区域变宽。对于Al203-SAJ,观察到为获得安全生命而付出的最高刑罚,这在疲劳寿命中具有最高的分散性。 (C)2017 Elsevier Ltd.保留所有权利。

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