机器学习在预测采石场粉尘砂混凝土砌块机械性能中的应用:综述

John Igeimokhia Braimah, Wasiu Olabamiji Ajagbe, Kolawole Adisa Olonade
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引用次数: 0

摘要

传统上被认为是废物的石矿灰已成为可持续建筑材料的潜在解决方案。本文全面评述了用石矿粉制造的砌块的机械性能,尤其关注机器学习(ML)在预测和优化这些性能方面的变革性作用。通过系统回顾现有文献和案例研究,本文评估了 ML 方法的功效,解决了与数据质量、特征选择和模型优化相关的挑战。它强调了 ML 如何提高机械性能预测的准确性,为工程师和研究人员优化用采石场粉尘制成的砌块的设计和成分提供了宝贵的工具。机械性能和 ML 应用的综合研究有助于推进可持续建筑实践,为材料科学预测建模技术的未来整合提供了真知灼见。
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Application of machine learning in predicting mechanical properties of sandcrete blocks made from quarry dust: a review

Quarry dust, conventionally considered waste, has emerged as a potential solution for sustainable construction materials. This paper comprehensively review the mechanical properties of blocks manufactured from quarry dust, with a particular focus on the transformative role of machine learning (ML) in predicting and optimizing these properties. By systematically reviewing existing literature and case studies, this paper evaluates the efficacy of ML methodologies, addressing challenges related to data quality, feature selection, and model optimization. It underscores how ML can enhance accuracy in predicting mechanical properties, providing a valuable tool for engineers and researchers to optimize the design and composition of blocks made from quarry dust. This synthesis of mechanical properties and ML applications contributes to advancing sustainable construction practices, offering insights into the future integration of technology for predictive modeling in material science.

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