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Predictive Carbon Nanotube Models Using the Eigenvector Dimension Reduction (EDR) Method

机译:使用特征向量尺寸减少(EDR)方法预测碳纳米管模型

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It has been reported that a carbon nanotube (CNT) is one of the strongest materials with their high failure stress and strain. Moreover, the nanotube has many favorable features, such as high toughness, great flexibility, low density, and so on. This discovery has opened new opportunities in various engineering applications, for example, a nanocomposite material design. However, recent studies have found a substantial discrepancy between computational and experimental material property predictions, in part due to defects in the fabricated nanotubes. It is found that the nanotubes are highly defective in many different formations (e.g., vacancy, dislocation, chemical, and topological defects). Recent parametric studies with vacancy defects have found that the vacancy defects substantially affect mechanical properties of the nanotubes. Given random existence of the nanotube defects, the material properties of the nanotubes can be better understood through statistical modeling of the defects. This paper presents predictive CNT models, which enable to estimate mechanical properties of the CNTs and the nanocomposites under various sources of uncertainties. As the first step, the density and location of vacancy defects will be randomly modeled to predict mechanical properties. It has been reported that the Eigenvector Dimension Reduction (EDR) method performs probability analysis efficiently and accurately. In this paper, Molecular Dynamics (MD) simulation with a modified Morse potential model is integrated with the EDR method to predict the mechanical properties of the CNTs. To demonstrate the feasibility of the predicted model, probabilistic behavior of mechanical properties (e.g., failure stress, failure strain, and toughness) is compared with the precedent experiment results.
机译:据报道,碳纳米管(CNT)是具有高失效应力和菌株的最强材料之一。此外,纳米管具有许多有利的特征,例如高韧性,具有很大的柔韧性,低密度等。该发现在各种工程应用中开辟了新的机会,例如纳米复合材料设计。然而,最近的研究已经发现计算和实验材料性质预测之间的显着差异,部分原因是由于制造的纳米管中的缺陷。发现纳米管在许多不同的形成中具有高度缺陷(例如,空位,错位,化学和拓扑缺陷)。最近具有空位缺陷的参数研究发现,空位缺陷基本上影响纳米管的机械性能。给定纳米管缺陷的随机存在,通过缺陷的统计建模可以更好地理解纳米管的材料特性。本文介绍了预测性CNT模型,其使得能够在各种不确定性源下估计CNT和纳米复合材料的机械性能。作为第一步,空位缺陷的密度和位置将被随机建模以预测机械性能。据报道,特征向量减少(EDR)方法有效准确地进行概率分析。在本文中,利用改进的摩尔斯潜在模型进行分子动力学(MD)模拟与EDR方法集成,以预测CNT的机械性能。为了证明预测模型的可行性,将机械性能的概率行为(例如,失效应力,失效应变和韧性)与先例的实验结果进行比较。

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