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Evaluation of Factors Affecting Compressive Strength of Concrete using Machine Learning

机译:基于机器学习的混凝土抗压强度影响因素评价

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Compressive strength of the concrete is important for analyzing the characteristics of the concrete. The compressive strength is necessary to know if the given mixture of concrete meets the specified requirements. For the sustainability of construction, the compressive strength must meet the required standards. Machine learning models have been really a handy tool for the analysis of a wide range of problems. Machine learning models can find the pattern or trends in the given data. The purpose of the paper is two folds. First, the evaluation of performance of different machine learning models (regression models) is done. In the second fold, the factors affecting compressive strength of the concrete are discussed. Different factors have different degrees of importance for various regressors. The importance of the factors is studied for different regressors and the conclusion is drawn regarding the importance of factors taken in the study.
机译:混凝土的抗压强度对于分析混凝土的特性很重要。必须知道抗压强度才能确定给定的混凝土混合物是否满足规定的要求。为了保证建筑的可持续性,抗压强度必须符合要求的标准。机器学习模型确实是用于分析各种问题的便捷工具。机器学习模型可以找到给定数据中的模式或趋势。本文的目的有两个方面。首先,完成了不同机器学习模型(回归模型)的性能评估。在第二个方面,讨论了影响混凝土抗压强度的因素。不同因素对各种回归变量的重要性程度不同。研究了因素对于不同回归变量的重要性,并得出了关于研究中所考虑因素的重要性的结论。

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