期刊论文详细信息
Materials
Prediction Models Based on Regression and Artificial Neural Network for Moduli of Layers Constituted by Open-Graded Aggregates
Donghyun Ahn1  Jaehun Ahn1  Yongjin Choi1  Yunje Lee1 
[1] Department of Civil and Environmental Engineering, Pusan National University, Busan 46241, Korea;
关键词: permeable pavement;    modulus of elasticity;    open-graded aggregate;    Plate Load Test;    Light-Weight Deflectometer;    Linear Regression;   
DOI  :  10.3390/ma14051199
来源: DOAJ
【 摘 要 】

The impermeable cover in urban area has been growing due to rapid urbanization, which prevents stormwater from being naturally infiltrated into the ground. There is a higher chance of flooding in urban area covered with conventional concretes and asphalts. The permeable pavement is one of Low-Impact Development (LID) technologies that can reduce surface runoff and water pollution by allowing stormwater into pavement systems. Unlike traditional pavements, permeable pavement bases employ open-graded aggregates (OGAs) with highly uniform particle sizes. There is very little information on the engineering properties of compacted OGAs. In this study, the moduli of open-graded aggregates under various compaction energies are investigated based on the Plate Load Test (PLT) and Light-Weight Deflectometer (LWD). Artificial Neural Network (ANN) and Linear Regression (LR) models are employed for estimation of the moduli of the aggregates based on the material type and level of compaction. Overall, the moduli from PLT and LWD steeply increase until the number of roller passes reaches 4, and they gradually increase until the number of roller passes becomes 8. A set of simple linear equations are proposed to evaluate the moduli of open-graded aggregates from PLT and LWD based on the material type and the number of roller passes.

【 授权许可】

Unknown   

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