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Predictive modeling for sustainable high-performance concrete from industrial wastes: A comparison and optimization of models using ensemble learners

机译:工业废物可持续高性能混凝土的预测建模:使用集团学习者模型的比较与优化

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The cementitious matrix of high-performance concrete (HPC) is highly complex, and ambiguity exists with its mix design. Compressive strength can vary with the composition and proportion of constituent material used. To predict the strength of such a complex matrix the use of robust and efficient machine learning approaches has become indispensable. This study uses machine intelligence algorithms with individual learners and ensemble learners (bagging, boosting) to predict the strength of (HPC) prepared with waste materials. This is done by employing Anaconda (Python). Ensemble learner bagging, adaptive boosting algorithm, and random forest as modified bagging algorithm are employed to construct strong ensemble learner by incorporating weak learner. The ensemble learners are used on individual learners or weak learners including support vector machine and decision tree through regression and multilayer perceptron neural network. The data consists of 1030 data samples in which eight parameters namely cement, water, sand, gravels, superplasticizer, concrete age, fly ash and granulated blast furnace slag were chosen to predict the output. Twenty bagging and boosting sub-models are trained on data and optimization was done to give maximum R-2. The test data is also validated by means of K-Fold cross validation using R-2, MAE, and RMSE. Moreover, evaluation of ensemble models with individual one is also checked by statistical model performance index (e.g., MAE, MSE, RMSE, and RMLSE). The result suggested that the individual model response is enhanced by using the bagging and boosting learners. Overall, random forest and decision tree with bagging give the robust performance of the models with R-2 = 0.92 with the least errors. On average, the ensemble model in machine learning would enhance the performance of the model. (C) 2021 Elsevier Ltd. All rights reserved.
机译:高性能混凝土(HPC)的水泥质矩阵非常复杂,其混合设计存在歧义。抗压强度可以随着所用组成材料的组成和比例而变化。为了预测这种复杂矩阵的强度,使用稳健和有效的机器学习方法已经成为必不可少的。本研究使用具有个别学习者和集合学习者的机器智能算法(装袋,提升)来预测用废料准备的(HPC)的强度。这是通过使用蟒蛇(Python)来完成的。作为改进的袋装算法的集合学习者袋装,自适应提升算法和随机森林被采用通过合并弱学习者来构建强乐团学习者。集团学习者用于个人学习者或弱学习者,包括通过回归和多层默认神经网络支持向量机和决策树。该数据由1030个数据样本组成,其中八个参数即水泥,水,砂,砾石,超增生剂,混凝土时代,粉煤灰和粒状高炉渣被选择预测输出。二十袋和提升子模型培训了数据,并完成了优化以获得最大R-2。还通过使用R-2,MAE和RMSE通过K折叠交叉验证验证测试数据。此外,还通过统计模型性能指数(例如,MAE,MSE,RMSE和RMLSE)来检查具有个人的集合模型的评估。结果表明,通过使用袋装和升压学习者,增强了各个模型响应。总体而言,随机森林和决策树与袋装,具有R-2 = 0.92的模型的强大性能,具有最小的错误。平均而言,机器学习中的集合模型将增强模型的性能。 (c)2021 elestvier有限公司保留所有权利。

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