机器学习技术的混合设计优化

Adji Putra Abriantoro, J. R. Khana
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摘要

混凝土混合设计是确保建筑项目所用混凝土质量的关键步骤。传统的混合设计方法依赖于试验和错误,不仅耗时,而且会增加施工成本。近年来,人们开发了机器学习技术来预测混凝土性能并优化混合设计,以获得高质量的混凝土。本研究旨在结合理论条件、方法和相关研究,探索机器学习在优质混凝土拌合物设计中的应用。本研究的重点是测试机器学习技术在预测混凝土性能和优化优质混凝土拌合物设计中的应用。机器学习的理论和概念将应用于混凝土混合设计数据集和相关属性。采用的方法包括数据预处理、特征选择、模型训练和评估。机器学习模型的性能将与传统的混合设计方法进行比较,以确定其有效性。此外,这项研究的结果和优势将证明使用机器学习确定高性能混凝土混合设计的潜在优势。通过准确预测混凝土性能和优化混合设计,可以更高效、更高质量地完成建筑项目。这项技术还有可能降低与试验和错误方法相关的成本,并最大限度地减少混凝土生产对环境的影响。这项研究的成功将为高性能混凝土混合设计机器学习领域的进一步研发铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimasi Mix Design Beton Melalui Teknologi Machine Learning
The concrete mix design is a crucial step in ensuring the quality of concrete used in construction projects. Traditional mix design methods rely on trial and error, which can be time-consuming and escalate construction costs. In recent years, machine learning technology has been developed to predict concrete properties and optimize mix designs for high-quality concrete. This study aims to explore the application of machine learning in high-quality concrete mix design, considering theoretical conditions, methods, and related research. The focus of this research is to test the use of machine learning techniques in predicting concrete properties and optimizing mix designs for high-quality concrete. The theory and concepts of machine learning will be applied to concrete mix design datasets and relevant properties. The methods employed will include data pre-processing, feature selection, and model training and evaluation. The performance of the machine learning model will be compared with traditional mix design methods to determine its effectiveness. Furthermore, the results and benefits of this study will demonstrate the potential advantages of using machine learning in determining high-performance concrete mix designs. By accurately predicting concrete properties and optimizing mix designs, construction projects can be completed more efficiently and with higher quality. This technology also has the potential to reduce costs associated with trial and error methods and minimize the environmental impact of concrete production. The success of this study will pave the way for further research and development in the field of machine learning for high-performance concrete mix designs.
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