This paper describes an innovative machine learning (ML) model to predict the performance of different metal oxide photocatalysts on a wide range of contaminants. The molecular structures of metal oxide photocatalysts are encoded with a crystal graph convolution neural network (CGCNN). The structure of organic compounds is encoded via digital molecular fingerprints (MF). The encoded features of the photocatalysts and contaminants are input to an artificial neural network (ANN), named as CGCNN-MF-ANN model. The CGCNN-MF-ANN model has achieved a very good prediction of the photocatalytic degradation rate constants by different photocatalysts over a wide range of organic contaminants. The effects of the data training strategy on the ML model p...
"Artificial neural network (ANN) modeling was applied to study the photocatalytic degradation of bis...
Norma transitória DL 57/2016 RaBBiT, PD/00193/2012 PD/ BD/135475/2017Machine learning (ML) algorithm...
The present paper comes up with an experimental design meant to point out the factors interferingin ...
This study focuses on the potential capability of numerous machine learning models, namely CatBoost,...
TiO2 photocatalytic degradation, as an efficient, clean technology, is widely used in the treatment ...
Artificial neural networks have been used for modeling the TiO$_2$ photocatalytic degradation of 2,4...
International audienceIn this study, the photocatalytic degradation of oxytetracycline (OTC) in aque...
The artificial neural network (ANN) modeling of m-cresol photodegradation was carried out for determ...
Development of an automated wastewater treatment plant is very difficult as the parameters of an ind...
We applied a multilayer artificial neural network (ANN) developed using a Lavenberg–Marquadt algorit...
Copyright © 2014 Yadollah Abdollahi et al. This is an open access article distributed under the Crea...
The artificial neural network (ANN) modeling of m-cresol photodegradation was carried out for determ...
Nowadays, most experiments to synthesize and test photocatalytic antimicrobial materials are based o...
The processing of crude oil in the onshore platform often results in the generation of produce water...
Summary: New photocatalysts are traditionally identified through trial-and-error methods. Machine le...
"Artificial neural network (ANN) modeling was applied to study the photocatalytic degradation of bis...
Norma transitória DL 57/2016 RaBBiT, PD/00193/2012 PD/ BD/135475/2017Machine learning (ML) algorithm...
The present paper comes up with an experimental design meant to point out the factors interferingin ...
This study focuses on the potential capability of numerous machine learning models, namely CatBoost,...
TiO2 photocatalytic degradation, as an efficient, clean technology, is widely used in the treatment ...
Artificial neural networks have been used for modeling the TiO$_2$ photocatalytic degradation of 2,4...
International audienceIn this study, the photocatalytic degradation of oxytetracycline (OTC) in aque...
The artificial neural network (ANN) modeling of m-cresol photodegradation was carried out for determ...
Development of an automated wastewater treatment plant is very difficult as the parameters of an ind...
We applied a multilayer artificial neural network (ANN) developed using a Lavenberg–Marquadt algorit...
Copyright © 2014 Yadollah Abdollahi et al. This is an open access article distributed under the Crea...
The artificial neural network (ANN) modeling of m-cresol photodegradation was carried out for determ...
Nowadays, most experiments to synthesize and test photocatalytic antimicrobial materials are based o...
The processing of crude oil in the onshore platform often results in the generation of produce water...
Summary: New photocatalysts are traditionally identified through trial-and-error methods. Machine le...
"Artificial neural network (ANN) modeling was applied to study the photocatalytic degradation of bis...
Norma transitória DL 57/2016 RaBBiT, PD/00193/2012 PD/ BD/135475/2017Machine learning (ML) algorithm...
The present paper comes up with an experimental design meant to point out the factors interferingin ...