Gaussian Process Regression and Machine Learning Methods for Carbon-Based Material Adsorption

Hamza, Manar Ahmed and Althobaiti, Maha M. and Al-Wesabi, Fahd N. and Alabdan, Rana and Mahgoub, Hany and Hilal, Anwer Mustafa and Motwakel, Abdelwahed and Al Duhayyim, Mesfer and R, Lakshmipathy (2022) Gaussian Process Regression and Machine Learning Methods for Carbon-Based Material Adsorption. Adsorption Science & Technology, 2022. pp. 1-7. ISSN 0263-6174

[thumbnail of 3901608.pdf] Text
3901608.pdf - Published Version

Download (566kB)

Abstract

Antibiotics have received a lot of attention as promising contaminants because of their ecotoxicological and long-term chemical stability in the atmosphere. Antibiotic adsorption on carbon-based materials (CBMs) such as charcoal and activated carbon has been identified as mainly effective for treating the wastewater strategies. Machine learning (ML) approaches were used to create generalized computation methods for tetracycline (TC) and sulfamethoxazole (SMX) adsorption in CBMs in this investigation. In the existing system, random forest and ANN methods were used for TC and SMX for predicting the quantities of antibiotics in the CBMs. For reducing the antibiotics from the industrial wastewater, the broadcast efforts of the experiments are a little complicated. In the proposed method, Gaussian process regression (GPR), active learning (AL), and ANN are used for predicting the antibiotic levels in the industrial wastewater. Below a variety of environmental parameters (e.g., warmth, solution pH) and adsorbent varieties, the created Ml algorithms outperformed classic isotherm models in conditions of generalisation. To evaluate TC and SMX adsorption on CBMs, we used comparative significance investigation and partial trust plots based on ML models. The proposed GPR reduces the antibiotics in wastewater; minimal experimental screening and the comparative significance and partial trust plot help in the treatment of wastewater.

Item Type: Article
Subjects: STM Open Library > Engineering
Depositing User: Unnamed user with email support@stmopenlibrary.com
Date Deposited: 12 Jan 2023 09:15
Last Modified: 17 Jun 2024 06:20
URI: http://ebooks.netkumar1.in/id/eprint/65

Actions (login required)

View Item
View Item