首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers. Part L, Journal of Materials: Design and Application >Fracture energy assessment of adhesives-Part Ⅰ: Is G_(IC) an adhesive property? A neural network analysis
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Fracture energy assessment of adhesives-Part Ⅰ: Is G_(IC) an adhesive property? A neural network analysis

机译:粘合剂的裂缝能量评估 - 部分Ⅰ:g_(IC)是粘合性吗? 神经网络分析

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摘要

Different joint types and geometries have been considered to measure the fracture toughness ( G_(c) ) of adhesives. However, results show that, sometimes, the obtained G_(c) values for the same adhesives are not similar in different reports. Several factors including the joints geometry, material properties of the substrate, and also the test conditions influence the obtained results. This study is conducted to find a logical connection between these factors and to find their influences on the obtained mode I fracture toughness ( G_(Ic) ) to understand which parameters are the most influential and which ones are less significant. To this aim, 115 values of different G_(Ic) already reported in the literature were collected and examined regarding the geometrical and material parameters. To find the rational relationship between the effective parameters and the reported G_(Ic) values, a method based on the artificial neural network technique was employed. The results revealed that whilst the fracture energy of aluminum adhesive joints is more influenced by geometrical parameters including the joint type and substrate thickness, the steel adhesive joints are more sensitive to the adhesive properties and bondline thickness. With this study, it is possible to design an optimum test by minimizing the effects of variables that cause errors in obtaining fracture toughness and also to estimate G_(Ic) of adhesives by using the developed model. On the other hand, it is also possible to design real structures in which the fracture toughness of the adhesive reaches its maximum value.
机译:已经考虑了不同的关节类型和几何形状测量粘合剂的断裂韧性(G_(C))。然而,结果表明,有时,相同粘合剂的获得的G_(C)值在不同的报告中不相似。包括关节几何形状,基材的材料性质的几个因素,以及测试条件影响得到的结果。该研究进行了在这些因素之间找到逻辑连接,并找到它们对所获得的模式I断裂韧性的影响(G_(IC)),以了解哪些参数是最有影响力的并且哪些参数不太重要。为此目的,在文献中报告的115个不同G_(IC)的值被收集并检查了几何和材料参数。为了找到有效参数与报告的G_(IC)值之间的合理关系,采用了一种基于人工神经网络技术的方法。结果表明,铝粘合剂接头的断裂能量受到包括关节型和基板厚度的几何参数的影响,钢粘合剂对粘合性能和粘合线厚度更敏感。通过该研究,可以通过最小化导致误差在获得断裂韧性的效果和通过使用开发的模型来估计粘合剂的G_(IC)来设计最佳测试。另一方面,还可以设计实际结构,其中粘合剂的断裂韧性达到其最大值。

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