应用人工神经网络预测自感知混凝土的性能

S. Kekez
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摘要

纳米材料,如碳纳米管和碳纳米纤维,被用作混凝土的加固材料,增强其抗压和弯曲强度,耐久性,并提供额外的性能,如导电性。因此,CNT/CNF增强混凝土复合材料是一种多功能材料,既可用于结构承载力,也可用于结构健康监测。虽然这种材料可以优于传统的混凝土,但广泛和昂贵的制造过程阻碍了它的实际潜力。混凝土配合比设计方法通常用于此类复合材料的设计,然而,由于这些方法不能给出配方和最终产品之间的直接联系,因此每种复合材料都必须经过测试和迭代调整,直到出现所需的结果。本文提出了人工神经网络在CNT/CNF混凝土复合材料性能预测中的应用。人工神经网络用于各种类型的混凝土配合比设计,通常只预测抗压强度作为混凝土的主要性能。然而,自感混凝土主要用于其抗压性,而增强的强度只是纳米填料存在的结果。因此,本文通过开发由6个人工神经网络模型综合的3个不同数据集,研究了468种混凝土混合料的抗压、抗弯强度和电阻率的预测。这些模型显示了一些有趣的结果,并指出了进一步研究这一主题和可能改进的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of Artificial Neural Networks for Prediction of Properties of Self-Sensing Concrete
Nanomaterials such as carbon nanotubes and carbon nanofibers are used as reinforcement for concrete, enhancing its compressive and flexural strength, and durability, and providing additional properties such as electrical conductivity. Hence, CNT/CNF reinforced concrete composite material is multifunctional material which may be used in structural capacity as well as structural health monitoring purposes. Although this material can be superior to traditional concrete, extensive and costly procedures of fabrication are hindering its practical potential. Concrete mix design methods are commonly used during the design of such composites, however, since these methods cannot give direct connection between the recipe and the end-product, every composite must be put through testing and iteratively adjusted until the appearance of wanted results. This paper proposes application of artificial neural networks for predicting properties of CNT/CNF concrete composite materials. Artificial neural networks in mix design have been developed for various types of concrete, commonly to predict only compressive strength as the primary property of concrete. However, self-sensing concrete is used primarily for its piezoresistivity and enhanced strength is only the consequence of the existence of nanofillers. Hence, the paper investigates prediction of compressive and flexural strength as well as electrical resistivity of 468 concrete mixtures by developing 3 different datasets comprehended by 6 ANN models. The models show some interesting results and point toward the necessity of further investigations on this topic and possible improvements.
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