生物炭
吸附
四环素
集合(抽象数据类型)
化学
数学
制浆造纸工业
环境科学
计算机科学
生物系统
机器学习
有机化学
工程类
生物
生物化学
热解
程序设计语言
抗生素
作者
P. Balasubramanian,Muhil Raj Prabhakar,Chong Liu,Pengyan Zhang,Fayong Li
标识
DOI:10.1007/s44246-024-00129-w
摘要
Abstract Machine learning algorithms investigate relationships in data to deliver useful outputs. However, past models required complete datasets as a prerequisite. In this study, rough set-based machine learning was applied using real-world incomplete datasets to generate a prediction model of biochar’s adsorption capacity based on key attributes. The predictive model consists of if–then rules classifying properties by fulfilling certain conditions. The rules generated from both complete and incomplete datasets exhibit high certainty and coverage, along with scientific coherence. Based on the complete dataset model, optimal pyrolysis conditions, biomass characteristics and adsorption conditions were identified to maximize tetracycline adsorption capacity (> 200 mg/g) by biochar. This study demonstrates the capabilities of rough set-based machine learning using incomplete practical real-world data without compromising key features. The approach can generate valid predictive models even with missing values in datasets. Overall, the preliminary results show promise for applying rough set machine learning to real-world, incomplete data for generating biomass and biochar predictive models. However, further refinement and testing are warranted before practical implementation.
科研通智能强力驱动
Strongly Powered by AbleSci AI