2021
DOI: 10.1155/2021/5530093
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On the Evaluation of Rhamnolipid Biosurfactant Adsorption Performance on Amberlite XAD‐2 Using Machine Learning Techniques

Abstract: Biosurfactants are a series of organic compounds that are composed of two parts, hydrophobic and hydrophilic, and since they have properties such as less toxicity and biodegradation, they are widely used in the food industry. Important applications include healthy products, oil recycling, and biological refining. In this research, to calculate the curves of rhamnolipid adsorption compared to Amberlite XAD-2, the least-squares vector machine algorithm has been used. Then, the obtained model is formed by 204 ads… Show more

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“…Moreover, integrating such meta-analysis data with application-specific data could potentially serve as a tool for producing surfactants with tailored properties. While there are examples of applying chemometric tools in RL research, they mainly focus on optimizing BS production efficiency 26 28 , aggregation behavior 29 , solubilization and biodegradation of PAHs 30 , treatment of oily sludges 31 , 32 , coal recovery 33 , and selected adsorption characteristics 34 . To our knowledge, attempts of developing guidelines for the biosynthesis of BSs with specified and targeted properties have not been reported in the scientific literature so far.…”
Section: Introductionmentioning
confidence: 99%
“…Moreover, integrating such meta-analysis data with application-specific data could potentially serve as a tool for producing surfactants with tailored properties. While there are examples of applying chemometric tools in RL research, they mainly focus on optimizing BS production efficiency 26 28 , aggregation behavior 29 , solubilization and biodegradation of PAHs 30 , treatment of oily sludges 31 , 32 , coal recovery 33 , and selected adsorption characteristics 34 . To our knowledge, attempts of developing guidelines for the biosynthesis of BSs with specified and targeted properties have not been reported in the scientific literature so far.…”
Section: Introductionmentioning
confidence: 99%