基于支持向量机模型的轻骨料混凝土抗压强度分类

A. Tenza-Abril, Rosana Satorre-Cuerda, Patricia Compañ-Rosique, F. J. Navarro-González, Y. Villacampa
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引用次数: 0

摘要

轻质骨料(LWA)用于生产建筑应用所需的低密度混凝土。轻骨料混凝土(LWAC)是一种具有技术、经济和环境效益的多用途建筑材料,它是根据密度和强度的要求,用轻骨料代替正常重量的骨料而生产的。LWAC是一种复杂的复合材料,其抗压强度模型必须是高度非线性的,因为它对其成分非常敏感,因此对其行为建模是一项艰巨的任务。许多研究试图建立准确有效的LWAC抗压强度预测模型。本研究采用支持向量机(SVM)学习算法,提出了一个对大范围LWAC抗压强度进行分类的模型。使用了241种不同LWAC的数据集,使用不同的变量-水泥量,水和LWA在LWAC的剂量和密度中的量,将抗压强度分为六个不同的类别(从低强度到高强度)。结果表明,增加变量意味着模型变得更加准确,成功率约为80%。支持向量机模型被证明是一种重要的工具来分类的LWAC抗压强度有助于工程师避免昂贵的试验试验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
COMPRESSIVE STRENGTH CLASSIFICATION OF LIGHTWEIGHT AGGREGATE CONCRETE USING A SUPPORT VECTOR MACHINE MODEL
Lightweight aggregates (LWA) are used to produce low-density concretes required for building applications. Lightweight aggregate concrete (LWAC) is a multi-purpose material for construction, which offers technical, economical and environment benefits, and it is produced by replacing the normal-weight aggregates with LWA, depending upon the requirements of density and strength. LWAC is a complex composite material, and a model of its compressive strength must be highly nonlinear because it is very sensitive to its ingredients, so modelling its behaviour is a difficult task. Many studies have tried to develop accurate and effective predictive models for LWAC compressive strength. In this study, a support vector machine (SVM) learning algorithm is used to propose a model to classify the compressive strength of a wide range of LWAC. A dataset of 241 different LWACs were used for classifying the compressive strength into six different classes (from low-strength to high-strength) using different variables – quantity of cement, water and LWA in the dosage and density of the LWAC produced. The results show that increasing the variables means the model becomes more accurate up to approximately an 80% rate of success. The SVM model proved to be a significant tool to classify the compressive strength of LWAC contributing to engineers avoiding costly experimental trial tests.
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