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Using machine learning to predict the efficiency of biochar in pesticide remediation

Environmental Studies and Forestry

Using machine learning to predict the efficiency of biochar in pesticide remediation

A. Nighojkar, S. Pandey, et al.

Discover how innovative research by Amrita Nighojkar, Shilpa Pandey, Minoo Naebe, Balasubramanian Kandasubramanian, Winston Wole Soboyejo, Anand Plappally, and Xungai Wang is leveraging ensemble machine learning to enhance biochar's efficiency in removing pesticide pollutants from water, revolutionizing agricultural practices and environmental remediation!

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~3 min • Beginner • English
Abstract
Pesticides have remarkably contributed to protecting crop production and increase food production. Despite the improved food availability, the unavoidable ubiquity of pesticides in the aqueous media has significantly threatened human microbiomes and biodiversity. The use of biochar to remediate pesticides in soil water offers a sustainable waste management option for agriculture. The optimal conditions for efficient pesticide treatment via biochar are aqueous-matrix specific and differ amongst studies. Here, we use a literature database on biochar applications for aqueous environments contaminated with pesticides and employ ensemble machine learning models (i.e., CatBoost, LightGBM, and RF) to predict the adsorption behavior of pesticides. The results reveal that the textural properties of biochar, pesticide concentration, and dosage were the significant parameters affecting pesticide removal from water. The data-driven modeling intervention offers an empirical perspective toward the balanced design and optimized usage of biochar for capturing emerging micro-pollutants from water in agricultural systems.
Publisher
npj Sustainable Agriculture
Published On
Oct 04, 2023
Authors
Amrita Nighojkar, Shilpa Pandey, Minoo Naebe, Balasubramanian Kandasubramanian, Winston Wole Soboyejo, Anand Plappally, Xungai Wang
Tags
Pesticide pollution
Biochar adsorption
Water purification
Machine learning
Agriculture
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