Unveiling the drives behind tetracycline adsorption capacity with biochar through machine learning

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作者
Pengyan Zhang
Chong Liu
Dongqing Lao
Xuan Cuong Nguyen
Balasubramanian Paramasivan
Xiaoyan Qian
Adejumoke Abosede Inyinbor
Xuefei Hu
Yongjun You
Fayong Li
机构
[1] Key Laboratory of Tarim Oasis Agriculture (Tarim University),College of Water Resources and Architectural Engineering
[2] Ministry of Education,College of Information Engineering
[3] Tarim University,Institution of Research and Development
[4] Tarim University,Department of Physical Sciences, Industrial Chemistry Programme
[5] Duy Tan University,undefined
[6] Department of Biotechnology and Medical Engineering,undefined
[7] National Institute of Technology Rourkela,undefined
[8] Landmark University,undefined
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摘要
This study aimed to develop a robust predictive model for tetracycline (TC) adsorption onto biochar (BC) by employing machine learning techniques to investigate the underlying driving factors. Four machine learning algorithms, namely Random Forest (RF), Gradient Boosting Decision Tree (GBDT), eXtreme Gradient Boosting (XGBoost) and Artificial Neural Networks (ANN), were used to model the adsorption of TC on BC using the data from 295 adsorption experiments. The analysis revealed that the RF model had the highest predictive accuracy (R2 = 0.9625) compared to ANN (R2 = 0.9410), GBDT (R2 = 0.9152), and XGBoost (R2 = 0.9592) models. This study revealed that BC with a specific surface area (S (BET)) exceeding 380 cm3·g−1 and particle sizes ranging between 2.5 and 14.0 nm displayed the greatest efficiency in TC adsorption. The TC-to-BC ratio was identified as the most influential factor affecting adsorption efficiency, with a weight of 0.595. The concentration gradient between the adsorbate and adsorbent was demonstrated to be the principal driving force behind TC adsorption by BC. A predictive model was successfully developed to estimate the sorption performance of various types of BC for TC based on their properties, thereby facilitating the selection of appropriate BC for TC wastewater treatment.
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