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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Prediction of temperature-frequency-dependent mechanical properties of composites based on thermoplastic liquid resin reinforced with carbon fibers using artificial neural networks
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Prediction of temperature-frequency-dependent mechanical properties of composites based on thermoplastic liquid resin reinforced with carbon fibers using artificial neural networks

机译:基于热塑性液体树脂的复合材料依赖性力学性能预测使用人工神经网络增强碳纤维的复合材料

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摘要

A considerable interest has been generated in recent years in the use of thermoplastic polymers as matrices in the manufacture of advanced composites that require high reliability during long-term operations. In this research, a new Elium? acrylic matrix developed by Arkema was studied to evaluate the accelerated test methodology based on time-temperature superposition principle of Carbon Fiber/Elium? 150 composites. The results show that the high frequencies increase the glass transition (Tg) to higher values because the free volume is favored by polymer chains movement. In addition, artificial neural network has been used to model the temperature-frequency dependence of dynamic mechanical over the wide range of temperatures and frequencies due to its complex non-linear behavior. It has been observed that low frequencies result in low damping due to the lower internal friction, while high frequencies provide greater stiffness to the chains, resulting in a high damping. The long-term life prediction using master curves confirms that this new material can be considered to acoustic or vibrational damping purposes, considering its use in temperatures above Tg.
机译:近年来在使用热塑性聚合物作为在长期操作期间需要高可靠性的先进复合材料时,在使用热塑性聚合物作为矩阵来产生相当大的兴趣。在这项研究中,一个新的elium?研究了Arkema开发的丙烯酸矩阵,以评估基于碳纤维/ elium的时间温度叠加原理的加速试验方法吗? 150复合材料。结果表明,高频将玻璃化转变(Tg)增加到较高的值,因为聚合物链的运动受到青睐。此外,由于其复杂的非线性行为,人工神经网络已被用来模拟动态机械的温度频率依赖性和频率范围内的温度依赖性。已经观察到,由于内部摩擦较低,低频导致低阻尼,而高频为链提供更大的刚度,导致高阻尼。使用主曲线的长期寿命预测证实,考虑到其在高于TG的温度下,可以考虑这种新材料或振动阻尼目的。

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