Forecast of surface chloride concentration of concrete utilizing ensemble decision tree boosted

A. Tran, Thanh-Hai Le, Huu May Nguyen
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引用次数: 2

Abstract

This study proposes the application of Ensemble Decision Tree Boosted (EDT Boosted) model for forecasting the surface chloride concentration of marine concrete  A database of 386 experimental results was collected from 17 different sources covering twelve variables was used to build and verify the predictive power of the EDT model. The input factors considered the changes in eleven variables, including the contents of cement, fly ash, blast furnace slag, silica fume, superplasticizer, water, fine aggregate, coarse aggregate, annual mean temperature, chloride concentration in seawater, and exposure time. The results indicate that EDT Boosted is a good predictor of  as verified via good performance evaluation criteria, i.e., R2, RMSE, MAE, MAPE values were 0.84, 0.16, 0.17, and 17%, respectively. Partial dependence plot (PDP) was then developed to correlate the eleven input variables with the . PDP implied that the strongest factor affecting Cs was the amount of fine aggregate content, chloride concentration, exposure time, amount of cement, and water, which is useful for material engineers in the design of the grade.
提出了利用集合决策树预测混凝土表面氯离子浓度的方法
本研究提出了集成决策树增强(EDT boosting)模型在海洋混凝土表面氯离子浓度预测中的应用。利用17个不同来源的386个实验结果数据库,涵盖12个变量,建立并验证了EDT模型的预测能力。输入因子考虑了水泥、粉煤灰、高炉矿渣、硅灰、高效减水剂、水、细骨料、粗骨料、年平均温度、海水氯离子浓度、暴露时间等11个变量的变化。结果表明,EDT boost是一个很好的预测指标,通过良好的性能评价标准进行验证,即R2, RMSE, MAE, MAPE值分别为0.84,0.16,0.17和17%。然后建立了部分相关图(PDP)来将11个输入变量与数据的相关性联系起来。PDP表明,对Cs影响最大的因素是细骨料含量、氯离子浓度、暴露时间、水泥量和水,这对材料工程师在级配设计中很有帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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