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Machine learning and computational chemistry to improve biochar fertilizers: a review
Authors:Osman  Ahmed I.  Zhang  Yubing  Lai  Zhi Ying  Rashwan   Ahmed K.  Farghali  Mohamed  Ahmed  Ashour A.  Liu  Yunfei  Fang  Bingbing  Chen  Zhonghao  Al-Fatesh  Ahmed  Rooney  David W.  Yiin  Chung Loong  Yap   Pow-Seng
Affiliation:1.School of Chemistry and Chemical Engineering, David Keir Building, Queen’s University Belfast, Stranmillis Road, Belfast, BT9 5AG, Northern Ireland, UK
;2.Department of Civil Engineering, Xi’an Jiaotong-Liverpool University, Suzhou, 215123, China
;3.Department of Chemical Engineering and Energy Sustainability, Faculty of Engineering, Universiti Malaysia Sarawak (UNIMAS), 94300, Kota Samarahan, Sarawak, Malaysia
;4.Department of Food and Dairy Sciences, Faculty of Agriculture, South Valley University, Qena, 83523, Egypt
;5.Department of Agricultural Engineering and Socio-Economics, Kobe University, Kobe, 657-8501, Japan
;6.Department of Animal and Poultry Hygiene and Environmental Sanitation, Faculty of Veterinary Medicine, Assiut University, Assiut, 71526, Egypt
;7.Institute of Physics, University of Rostock, Albert-Einstein-Str. 23-24, 18059, Rostock, Germany
;8.Chemical Engineering Department, College of Engineering, King Saud University, PO Box 800, Riyadh, 11421, Saudi Arabia
;9.Institute of Sustainable and Renewable Energy (ISuRE), Universiti Malaysia Sarawak (UNIMAS), 94300, Kota Samarahan, Sarawak, Malaysia
;
Abstract:

Traditional fertilizers are highly inefficient, with a major loss of nutrients and associated pollution. Alternatively, biochar loaded with phosphorous is a sustainable fertilizer that improves soil structure, stores carbon in soils, and provides plant nutrients in the long run, yet most biochars are not optimal because mechanisms ruling biochar properties are poorly known. This issue can be solved by recent developments in machine learning and computational chemistry. Here we review phosphorus-loaded biochar with emphasis on computational chemistry, machine learning, organic acids, drawbacks of classical fertilizers, biochar production, phosphorus loading, and mechanisms of phosphorous release. Modeling techniques allow for deciphering the influence of individual variables on biochar, employing various supervised learning models tailored to different biochar types. Computational chemistry provides knowledge on factors that control phosphorus binding, e.g., the type of phosphorus compound, soil constituents, mineral surfaces, binding motifs, water, solution pH, and redox potential. Phosphorus release from biochar is controlled by coexisting anions, pH, adsorbent dosage, initial phosphorus concentration, and temperature. Pyrolysis temperatures below 600 °C enhance functional group retention, while temperatures below 450 °C increase plant-available phosphorus. Lower pH values promote phosphorus release, while higher pH values hinder it. Physical modifications, such as increasing surface area and pore volume, can maximize the adsorption capacity of phosphorus-loaded biochar. Furthermore, the type of organic acid affects phosphorus release, with low molecular weight organic acids being advantageous for soil utilization. Lastly, biochar-based fertilizers release nutrients 2–4 times slower than conventional fertilizers.

Keywords:
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