Gradient Boosting Hybridized with Exponential Natural Evolution Strategies for Estimating the Strength of Geopolymer Self-Compacting Concrete

Samuel Alves Basilio, L. Goliatt
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引用次数: 23

Abstract

The current global demand to minimize carbon dioxide (CO2$) emissions from Portland cement manufacturing processes has led to the use of environmentally friendly additives in cement products. The so-called green cementitious composites have become increasingly essential in the design of cementitious composite mixtures, providing the environmental compatibility of concrete as a building material. Engineers face a difficult problem in predicting the mechanical properties of green composites due to their changing nature under various circumstances. Machine learning models then emerge as surrogate models to perform this difficult task. The very design of such models has become a challenge for machine learning. This study presents a gradient boosting algorithm hybridized with Natural Exponential Evolution Strategies inspired by nature to predict the mechanical properties of geopolymeric self-compacting concrete. The hybrid model is used to evolve the parameters, automating the selection of the best set of internal parameters to estimate the strength properties of geopolymer self-compacting concrete. Results show the predictive ability superiority of machine learning models and optimization algorithms hybridization compared to manually tuned models. In addition, this approach can minimize laboratory work, potentially optimize experimental design, and reduce sample production time and associated activity burden
梯度提升混合指数自然进化策略用于估算土工聚合物自密实混凝土的强度
目前,全球要求尽量减少波特兰水泥生产过程中的二氧化碳(CO2$)排放,这促使人们在水泥产品中使用环保型添加剂。所谓的绿色水泥基复合材料在水泥基复合混合物的设计中变得越来越重要,为混凝土作为建筑材料提供了环境兼容性。由于绿色复合材料在不同环境下的性质不断变化,工程师在预测其机械性能时面临着一个难题。于是,机器学习模型应运而生,成为完成这一艰巨任务的替代模型。此类模型的设计本身已成为机器学习的一项挑战。本研究提出了一种梯度提升算法与自然指数进化策略的混合算法,其灵感来源于大自然,用于预测土工聚合物自密实混凝土的力学性能。该混合模型用于参数进化,自动选择最佳内部参数集,以估算土工聚合物自密实混凝土的强度特性。结果表明,与人工调整的模型相比,机器学习模型和优化算法混合模型的预测能力更胜一筹。此外,这种方法还能最大限度地减少实验室工作,优化实验设计,减少样品制作时间和相关活动负担。
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