Predicting the Permeability of Pervious Concrete Based on the Beetle Antennae Search Algorithm and Random Forest Model

Pervious concrete is an environmentally friendly material that improves water permeability, skid resistance, and sound absorption characteristics. Permeability is the most important functional performance for the pervious concrete while limited studies have been conducted to predict permeability bas...

Full description

Bibliographic Details
Main Authors: Jiandong Huang, Tianhong Duan, Yi Zhang, Jiandong Liu, Jia Zhang, Yawei Lei
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Advances in Civil Engineering
Online Access:http://dx.doi.org/10.1155/2020/8863181
id doaj-60d2ecaf3433437aa9e4f1c9891ad9ce
record_format Article
spelling doaj-60d2ecaf3433437aa9e4f1c9891ad9ce2021-01-11T02:21:09ZengHindawi LimitedAdvances in Civil Engineering1687-80942020-01-01202010.1155/2020/8863181Predicting the Permeability of Pervious Concrete Based on the Beetle Antennae Search Algorithm and Random Forest ModelJiandong Huang0Tianhong Duan1Yi Zhang2Jiandong Liu3Jia Zhang4Yawei Lei5State Key Laboratory of Coal Resources and Safe MiningState Key Laboratory of Coal Resources and Safe MiningKey Laboratory of Road and Traffic Engineering of the Ministry of EducationState Key Laboratory of Coal Resources and Safe MiningSchool of MinesChina Construction Second Engineering Bureau Ltd.Pervious concrete is an environmentally friendly material that improves water permeability, skid resistance, and sound absorption characteristics. Permeability is the most important functional performance for the pervious concrete while limited studies have been conducted to predict permeability based on mix-design parameters. This study proposed a method to combine the beetle antennae search (BAS) and random forest (RF) algorithm to predict the permeability of pervious concrete. Based on the 36 samples designed in the laboratory and 4 key influencing variables, the permeability of pervious concrete can be obtained by varying mix-design parameters by RF. BAS algorithm was used to tune the hyperparameters of RF, which were then verified by the so-called 10-fold cross-validation. Furthermore, the model to combine the BAS and RF was validated by the correlation parameters. The results showed that the hyperparameters of RF can be tuned by the BAS efficiently; the BAS can combine the conventional RF algorithm to construct the evolved model to predict the permeability of pervious concrete; the cement/aggregate ratio was the most significant variable to determine the permeability, followed by the coarse aggregate proportions.http://dx.doi.org/10.1155/2020/8863181
collection DOAJ
language English
format Article
sources DOAJ
author Jiandong Huang
Tianhong Duan
Yi Zhang
Jiandong Liu
Jia Zhang
Yawei Lei
spellingShingle Jiandong Huang
Tianhong Duan
Yi Zhang
Jiandong Liu
Jia Zhang
Yawei Lei
Predicting the Permeability of Pervious Concrete Based on the Beetle Antennae Search Algorithm and Random Forest Model
Advances in Civil Engineering
author_facet Jiandong Huang
Tianhong Duan
Yi Zhang
Jiandong Liu
Jia Zhang
Yawei Lei
author_sort Jiandong Huang
title Predicting the Permeability of Pervious Concrete Based on the Beetle Antennae Search Algorithm and Random Forest Model
title_short Predicting the Permeability of Pervious Concrete Based on the Beetle Antennae Search Algorithm and Random Forest Model
title_full Predicting the Permeability of Pervious Concrete Based on the Beetle Antennae Search Algorithm and Random Forest Model
title_fullStr Predicting the Permeability of Pervious Concrete Based on the Beetle Antennae Search Algorithm and Random Forest Model
title_full_unstemmed Predicting the Permeability of Pervious Concrete Based on the Beetle Antennae Search Algorithm and Random Forest Model
title_sort predicting the permeability of pervious concrete based on the beetle antennae search algorithm and random forest model
publisher Hindawi Limited
series Advances in Civil Engineering
issn 1687-8094
publishDate 2020-01-01
description Pervious concrete is an environmentally friendly material that improves water permeability, skid resistance, and sound absorption characteristics. Permeability is the most important functional performance for the pervious concrete while limited studies have been conducted to predict permeability based on mix-design parameters. This study proposed a method to combine the beetle antennae search (BAS) and random forest (RF) algorithm to predict the permeability of pervious concrete. Based on the 36 samples designed in the laboratory and 4 key influencing variables, the permeability of pervious concrete can be obtained by varying mix-design parameters by RF. BAS algorithm was used to tune the hyperparameters of RF, which were then verified by the so-called 10-fold cross-validation. Furthermore, the model to combine the BAS and RF was validated by the correlation parameters. The results showed that the hyperparameters of RF can be tuned by the BAS efficiently; the BAS can combine the conventional RF algorithm to construct the evolved model to predict the permeability of pervious concrete; the cement/aggregate ratio was the most significant variable to determine the permeability, followed by the coarse aggregate proportions.
url http://dx.doi.org/10.1155/2020/8863181
work_keys_str_mv AT jiandonghuang predictingthepermeabilityofperviousconcretebasedonthebeetleantennaesearchalgorithmandrandomforestmodel
AT tianhongduan predictingthepermeabilityofperviousconcretebasedonthebeetleantennaesearchalgorithmandrandomforestmodel
AT yizhang predictingthepermeabilityofperviousconcretebasedonthebeetleantennaesearchalgorithmandrandomforestmodel
AT jiandongliu predictingthepermeabilityofperviousconcretebasedonthebeetleantennaesearchalgorithmandrandomforestmodel
AT jiazhang predictingthepermeabilityofperviousconcretebasedonthebeetleantennaesearchalgorithmandrandomforestmodel
AT yaweilei predictingthepermeabilityofperviousconcretebasedonthebeetleantennaesearchalgorithmandrandomforestmodel
_version_ 1714950018014642176