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Different modelling approaches for predicting titanium dioxide nanoparticles mobility in intact soil media

Author:
محمود فاضلی سنگانی
,
Gary Owens
,
بیژن نظری
,
علیرضا آستارائی
,
امیر فتوت
,
حجت امامی
,
mahmood fazeli
,
Gary Owens
,
Bijan Nazari
,
Ali Reza Astaraei
,
Amir Fotovat
,
Hojat Emami
Year
: 2019
Abstract: Understanding the transport behaviour of new and emerging materials such as engineered nanoparticles -ENPs- is vital for the accurate assessment of their functionality and fate in environmental systems. Predicting ENP mobility in soil systems based on common attributes of either soil or ENPs is of significant interest as an alternative to conducting laborious and time consuming column experiments. Thus this study investigates the importance of different soil properties and experimental conditions on titanium dioxide nanoparticles -nTiO2- mobility in real soil media and also evaluates four different modelling approaches including Multiple Linear Regression -MLR-, Classification and Regression Tree -CART-, Random Forest -RF- and Artificial Neural Network -ANN- for predicting nTiO2 mobility in soil media. The performance of both ANN and RF models were good for predicting nTiO2 transport in soil media, with ANN predictions being slightly superior to RF with less generalization errors. However, RF had the advantage of requiring less input predictors. In comparison the MLR model exhibited poor performance in both calibration and validation datasets, and while the validity of CART was almost acceptable in the calibration dataset, its efficiency was poor for the validation dataset. In addition to soil solution chemistry and hydraulic properties, other important factors having a major contribution to nTiO2 transport through soil included soil fracture associated properties and the existence of preferential flows.
DOI: 10.1016/j.scitotenv.2019.01.345
URI: https://libsearch.um.ac.ir:443/fum/handle/fum/3366989
Keyword(s): Engineered nanoparticles,Mobility,Porous media,Predictive models
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    Different modelling approaches for predicting titanium dioxide nanoparticles mobility in intact soil media

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contributor authorمحمود فاضلی سنگانیen
contributor authorGary Owensen
contributor authorبیژن نظریen
contributor authorعلیرضا آستارائیen
contributor authorامیر فتوتen
contributor authorحجت امامیen
contributor authormahmood fazelifa
contributor authorGary Owensfa
contributor authorBijan Nazarifa
contributor authorAli Reza Astaraeifa
contributor authorAmir Fotovatfa
contributor authorHojat Emamifa
date accessioned2020-06-06T13:44:10Z
date available2020-06-06T13:44:10Z
date issued2019
identifier urihttps://libsearch.um.ac.ir:443/fum/handle/fum/3366989?locale-attribute=en
description abstractUnderstanding the transport behaviour of new and emerging materials such as engineered nanoparticles -ENPs- is vital for the accurate assessment of their functionality and fate in environmental systems. Predicting ENP mobility in soil systems based on common attributes of either soil or ENPs is of significant interest as an alternative to conducting laborious and time consuming column experiments. Thus this study investigates the importance of different soil properties and experimental conditions on titanium dioxide nanoparticles -nTiO2- mobility in real soil media and also evaluates four different modelling approaches including Multiple Linear Regression -MLR-, Classification and Regression Tree -CART-, Random Forest -RF- and Artificial Neural Network -ANN- for predicting nTiO2 mobility in soil media. The performance of both ANN and RF models were good for predicting nTiO2 transport in soil media, with ANN predictions being slightly superior to RF with less generalization errors. However, RF had the advantage of requiring less input predictors. In comparison the MLR model exhibited poor performance in both calibration and validation datasets, and while the validity of CART was almost acceptable in the calibration dataset, its efficiency was poor for the validation dataset. In addition to soil solution chemistry and hydraulic properties, other important factors having a major contribution to nTiO2 transport through soil included soil fracture associated properties and the existence of preferential flows.en
languageEnglish
titleDifferent modelling approaches for predicting titanium dioxide nanoparticles mobility in intact soil mediaen
typeJournal Paper
contenttypeExternal Fulltext
subject keywordsEngineered nanoparticlesen
subject keywordsMobilityen
subject keywordsPorous mediaen
subject keywordsPredictive modelsen
identifier doi10.1016/j.scitotenv.2019.01.345
journal titleScience of The Total Environmentfa
pages1168-1181
journal volume665
journal issue22
identifier linkhttps://profdoc.um.ac.ir/paper-abstract-1072987.html
identifier articleid1072987
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