<学術雑誌論文>
Estimation of Permeability of Soil-Fly Ash Mix using Machine Learning Algorithms

作成者
本文言語
出版者
発行日
収録物名
開始ページ
終了ページ
会議情報
出版タイプ
アクセス権
Crossref DOI
権利関係
権利関係
概要 This study demonstrates the potential of machine learning to predict the permeability of soil-fly ash mixtures, thereby promoting fly ash as a sustainable building material. Due to its environmental b...enefits and enhanced engineering properties when added to mixtures, fly ash, a byproduct of coal combustion, is gaining popularity. Several machine learning algorithms were evaluated, with the linear regression model proving to be the most precise and straightforward. It captured the linear relationship between percentage of fly ash and permeability (RMSE of 6.42 x 10-06cm/s and R2 of 0.811). Training and testing of models utilized a comprehensive database of soil-fly ash mixtures. The implications of the study's findings for engineering and environmental applications are substantial. The model's accuracy in estimating soil-fly ash mixture permeability is validated by the excellent correlation between predicted and actual permeability values.続きを見る

本文ファイル

pdf 2023_p028 pdf 412 KB 86  

詳細

PISSN
EISSN
レコードID
主題
登録日 2023.11.21
更新日 2023.11.28

この資料を見た人はこんな資料も見ています