基于机器学习和遗传算法的飞灰钢纤维混凝土性能预测方法

Q2 Engineering
Rashmi Keote, Minal Keote, Rupali S. Balpande, Bharati Masram, Pragati Dubey, Latika Pinjarkar, Manjushree Muley
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引用次数: 0

摘要

混凝土强度的提高对于提高建筑材料的使用寿命和可持续性至关重要。传统的混凝土配合比优化方法,特别是用于粉煤灰和钢纤维混凝土的配合比优化方法,由于其成分相互作用的高度复杂性和非线性,通常无法准确预测其强度。本研究克服了这些限制,使用先进的人工智能技术——多层感知器(MLP)神经网络、梯度增强机(GBM)和卷积神经网络(CNN)来优化混凝土混合物,以提高强度。其中,MLP神经网络被选择用于这项工作,因为它能够模拟高度复杂的非线性关系,因此能够捕捉到粉煤灰、钢纤维和其他添加剂之间复杂的相互作用。因此,选择梯度增强机对过拟合具有鲁棒性,在处理优化问题中的线性或非线性时具有较高的精度。传统上,CNN已经被应用于图像处理,但在这项工作中,它被独特地适应了混凝土混合料成分的空间分布,从而为强度预测提供了一个新的维度。在本研究中,每种方法都采用了综合数据集,输入变量为粉煤灰和钢纤维的百分比、水灰比、骨料粒度分布和养护延迟。MLP模型的抗压强度平均绝对误差(MAE)为0.90 ~ 0.95,GBM模型的R²值为0.90 ~ 0.95,显著提高了模型的预测精度。CNN解释说,与传统方法相比,预测误差有可能减少10-15%。这项工作为混凝土强度优化提供了一个强大的框架,大大提高了建筑中使用的混凝土材料的可靠性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An integrated machine learning and genetic algorithm approach for properties prediction of fly ash-based steel fiber-reinforced concrete

Enhancement of concrete strength is critically important for increasing construction materials’ lifespan and sustainability. Traditionally, concrete mixture optimization methods—especially those used for fly ash and steel fiber concretes—normally fail to accurately predict the strength due to the high degree of complexity and non-linearity involved in the interaction of their components. These limitations are overcome in this study, which uses advanced artificial intelligence techniques—The Multilayer Perceptron (MLP) Neural Networks, Gradient Boosting Machines (GBM), and Convolutional Neural Networks (CNN) to optimize concrete mixtures for improved strength. Among these, the MLP neural network was selected for this work because of its ability to model highly complex, nonlinear relationships and hence will be able to capture the intricate interactions among fly ash, steel fibers, and other additives. For this reason, Gradient Boosting Machine was chosen for its robustness against overfitting and high accuracy in handling linearity or nonlinearity in an optimization problem. Traditionally, CNN has been applied to image processing, but in this work, it had been uniquely adapted to include the spatial distribution of concrete mix components, hence giving a new dimension in strength prediction. In this study, every method was used with a comprehensive data set and the input variables were taken as the percentages of fly ash and steel fibers, the water-cement ratio, aggregate size distribution, and curing delays. The accuracies of prediction for the proposed models were improved significantly, with the Mean Absolute Error (MAE) for compressive strength by the MLP model and an R² value of 0.90–0.95 by the GBM model. It is interpreted from CNN that there could be a potential reduction in prediction error by 10–15% compared to traditional methods. The work provides a robust framework for concrete strength optimization with substantial improvements in the reliability and performance of concrete materials used in construction.

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来源期刊
Asian Journal of Civil Engineering
Asian Journal of Civil Engineering Engineering-Civil and Structural Engineering
CiteScore
2.70
自引率
0.00%
发文量
121
期刊介绍: The Asian Journal of Civil Engineering (Building and Housing) welcomes articles and research contributions on topics such as:- Structural analysis and design - Earthquake and structural engineering - New building materials and concrete technology - Sustainable building and energy conservation - Housing and planning - Construction management - Optimal design of structuresPlease note that the journal will not accept papers in the area of hydraulic or geotechnical engineering, traffic/transportation or road making engineering, and on materials relevant to non-structural buildings, e.g. materials for road making and asphalt.  Although the journal will publish authoritative papers on theoretical and experimental research works and advanced applications, it may also feature, when appropriate:  a) tutorial survey type papers reviewing some fields of civil engineering; b) short communications and research notes; c) book reviews and conference announcements.
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