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An optimized instance based learning algorithm for estimation of compressive strength of concrete

机译:一种基于实例的优化学习算法,用于混凝土抗压强度的估算

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摘要

This article proposes an optimized instance-based learning approach for prediction of the compressive strength of high performance concrete based on mix data, such as water to binder ratio, water content, super-plasticizer content, fly ash content, etc. The base algorithm used in this study is the k nearest neighbor algorithm, which is an instance-based machine leaning algorithm. Five different models were developed and analyzed to investigate the effects of the number of neighbors, the distance function and the attribute weights on the performance of the models. For each model a modified version of the differential evolution algorithm was used to find the optimal model parameters. Moreover, two different models based on generalized regression neural network and stepwise regressions were also developed. The performances of the models were evaluated using a set of high strength concrete mix data. The results of this study indicate that the optimized models outperform those derived from the standard k nearest neighbor algorithm, and that the proposed models have a better performance in comparison to generalized regression neural network, stepwise regression and modular neural networks models.
机译:本文提出了一种基于实例的优化学习方法,该方法基于混合数据(例如水与粘合剂的比,水含量,超塑化剂含量,粉煤灰含量等)预测高性能混凝土的抗压强度。所使用的基本算法在这项研究中,k最近邻算法是一种基于实例的机器学习算法。开发并分析了五个不同的模型,以研究邻居数,距离函数和属性权重对模型性能的影响。对于每个模型,使用差分进化算法的修改版本来找到最佳模型参数。此外,还开发了基于广义回归神经网络和逐步回归的两个不同模型。使用一组高强度混凝土混合料数据评估了模型的性能。这项研究的结果表明,优化模型的性能优于标准k最近邻算法,并且与广义回归神经网络,逐步回归和模块化神经网络模型相比,所提出的模型具有更好的性能。

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