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首页> 外文期刊>Nanoscience and Nanotechnology - Asia >Estimation of Mechanical Properties of PAN Nanofibers Based on Polymeric Structural Characteristics by Artificial Intelligence Modeling
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Estimation of Mechanical Properties of PAN Nanofibers Based on Polymeric Structural Characteristics by Artificial Intelligence Modeling

机译:基于聚合物结构特征的PAN纳米纤维机械性能估算人工智能建模

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摘要

Introduction: Today, nanofibers are commonly used in filtration, composites, tissue engineering, drug delivery systems and many scientific and industrial applications. Here, investigating of nanofiber mechanical properties is important. Measuring mechanical properties of thin nanofiberis very difficult, time consuming and expensive. In this research, mechanical properties of nanofibers have been studied based on their structural characteristics. Method: From the presented experiments, polymeric structural parameters and mechanical properties of parallel PAN nanofiberswere measured for 150 samples in five categories of electrospinning conditions. After that, adaptive back propagation neural network was designed and optimized by genetic algorithm for experimental data. Result: The results presented 0.89% and 0.006% for test and train errors which wereacceptable for mechanical properties estimation. Conclusion: The presented intelligent modeling method can be an accurate choice for mechanical properties estimation of nanofibers especially, where the experimental measuring is difficult or unavailable. Also, sensitivity test presentedthat distance between crystal in L1020 and polymeric crystal size had more effect on the strength of the nanofibers.
机译:介绍:如今,纳米纤维通常用于过滤,复合材料,组织工程,药物递送系统和许多科学和工业应用。这里,研究纳米纤维机械性能是重要的。测量薄纳米纤维的机械性能非常困难,耗时且昂贵。在该研究中,已经基于其结构特征研究了纳米纤维的机械性能。方法:从呈现的实验中,在五个类别的静电纺丝条件下测量平行锅纳米纤维的聚合物结构参数和平行锅纳米纤维的机械性能。之后,通过遗传算法设计和优化自适应反向传播神经网络,用于实验数据。结果:对机械性能估算的测试和火车误差呈现出0.89%和0.006%,为机械性能估算。结论:呈现的智能建模方法可以是纳米纤维机械性能估计的准确选择,其中实验测量难以或不可用。此外,L1020中晶体之间的距离和聚合物晶体尺寸之间的敏感性测试对纳米纤维的强度产生了更多的影响。

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