基于混合优化XGBoost算法的混凝土坍落度预测

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摘要

本研究采用混合优化XGBoost模型对混凝土坍落度进行预测。该优化模型结合了网格搜索和粒子群优化(PSO)算法。XGBoost采用网格搜索确定最大深度和树数,粒子群优化优化其他浮点超参数范围,提高模型的预测精度。影响混凝土坍落度的因素包括水、水泥、细骨料、粗骨料和减水剂,用7个参数表示。该模型在训练集和测试集均表现优异,决定系数(R2)均超过0.97。综上所述,本研究表明,利用网格搜索和粒子群优化算法对XGBoost模型进行混合优化,可以准确预测混凝土坍落度,对混凝土生产过程的控制和优化具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concrete Slump Prediction Based on Hybrid Optimization XGBoost Algorithm
In this study, a hybrid optimization XGBoost model was used to predict the slump of concrete. This optimization model combines grid search and particle swarm optimization (PSO) algorithm. The grid search is used to determine the maximum depth and the number of trees in XGBoost, while the particle swarm optimization optimizes other floating-point hyperparameter ranges to improve the predictive accuracy of the model. The factors influencing the slump of concrete include water, cement, fine aggregate, coarse aggregate, and water reducer, which are represented by seven parameters. The model performs excellently in both the training and testing sets, with a coefficient of determination (R2) exceeding 0.97. In conclusion, this study demonstrates that the hybrid optimization of the XGBoost model using grid search and particle swarm optimization algorithm can accurately predict the slump of concrete, which is of significant importance for controlling and optimizing the concrete production process.
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