缟玛瑙和凯夫拉尔印刷复合材料的疲劳分析

IF 3 Q2 MATERIALS SCIENCE, COMPOSITES
Moises Jimenez-Martinez, Julio Varela-Soriano, Julio S. De La Trinidad-Rendon, S. G. Torres-Cedillo, Jacinto Cortés-Pérez, Manuel Coca-Gonzalez
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引用次数: 0

摘要

由内燃机驱动的动力系统转变为电气系统,给轻质材料的开发带来了新的挑战,因为电动汽车通常很重。因此,开发新的汽车,寻求更美观、更环保的设计,同时整合有助于减少碳足迹的制造工艺非常重要。与此同时,本研究还探讨了使用印刷复合材料开发新原型和定制组件的问题。在此框架下,必须制定新的疲劳寿命估算方法,特别是针对使用这类先进材料定制和制造的组件。本研究介绍了一种基于人工神经网络的新型疲劳寿命预测方法。在给定输入的情况下,经过训练的神经网络可以预测疲劳损伤的累积、循环加载过程中产生的温度以及化合物的机械性能。其验证包括将网络响应与载荷比结果进行比较,载荷比结果可通过疲劳损伤参数计算得出。比较这两个结果,该网络可以成功预测疲劳损伤的累积;这意味着它可以直接利用部件机械行为的数据,而无需进行实验测试。随后,本研究介绍了一种神经网络,旨在预测采用缟玛瑙基体和凯夫拉增强材料的印刷复合材料的累积疲劳损伤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fatigue Analysis of Printed Composites of Onyx and Kevlar
The transformation of powertrains, powered by internal combustion engines, into electrical systems generates new challenges in developing lightweight materials because electric vehicles are typically heavy. It is therefore important to develop new vehicles and seek more aesthetic and environmentally friendly designs whilst integrating manufacturing processes that contribute to reducing the carbon footprint. At the same time, this research explores the development of new prototypes and custom components using printed composite materials. In this framework, it is essential to formulate new approaches to estimate fatigue life, specifically for components tailored and fabricated with these kinds of advanced materials. This study introduces a novel fatigue life prediction approach based on an artificial neural network. When presented with given inputs, this neural network is trained to predict the accumulation of fatigue damage and the temperature generated during cyclic loading, along with the mechanical properties of the compound. Its validation involves comparing the network’s response with the load ratio result, which can be calculated using the fatigue damage parameter. Comparing both results, the network can successfully predict the fatigue damage accumulation; this implies an ability to directly employ data on the mechanical behavior of the component, eliminating the necessity for experimental testing. Then, the current study introduces a neural network designed to predict the accumulated fatigue damage in printed composite materials with an Onyx matrix and Kevlar reinforcement.
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来源期刊
Journal of Composites Science
Journal of Composites Science MATERIALS SCIENCE, COMPOSITES-
CiteScore
5.00
自引率
9.10%
发文量
328
审稿时长
11 weeks
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