Real-time monitoring of methyl orange degradation in non-thermal plasma by integrating Raman spectroscopy with a hybrid machine learning model

IF 6.7 2区 环境科学与生态学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Fan Zhou , Jiangnan Chu , Fu Lu , Wenchong Ouyang , Qi Liu , Zhengwei Wu
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引用次数: 0

Abstract

Researchers have developed a hybrid machine learning (ML) model that has been integrated with Raman spectroscopy to enable real-time prediction of methyl orange (MO) degradation concentrations in a non-thermal plasma (NTP) environment. The model combines three ML algorithms, including Linear Regression (LR), Partial Least Squares (PLS), and Decision Trees (DT), and has been created and optimized to study the degradation process. The model demonstrates excellent predictive performance, achieving an even lower RMSE of 0.0209 and 0.0381 g/L and higher R2 values of 0.9984 and 0.9969 for the training and test datasets, respectively. Based on this system, the impact of different plasma treatment parameters on MO degradation efficiency has been investigated. Among the results, MO (0.5 g/L) degraded completely whin 200 s when treated with an air plasma at a flow rate of 1 L/min and the applied discharge voltage of 20 kV. Furthermore, to understand the underlying mechanism of MO degradation, the individual contributions of different reactive oxygen species (ROS) to decomposition processes have been evaluated by employing effective scavengers, and the proposed degradation pathway was analyzed based on the identified intermediate products. This research introduces an innovative and highly efficient methodology for conducting online observation of pollutant degradation, optimizing the operational parameters of wastewater treatment in plasma, and enhancing their overall treatment effectiveness. Additionally, it establishes a solid foundation for integrating intelligent control systems, paving the way for fully automated decontamination processes.
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来源期刊
Environmental Technology & Innovation
Environmental Technology & Innovation Environmental Science-General Environmental Science
CiteScore
14.00
自引率
4.20%
发文量
435
审稿时长
74 days
期刊介绍: Environmental Technology & Innovation adopts a challenge-oriented approach to solutions by integrating natural sciences to promote a sustainable future. The journal aims to foster the creation and development of innovative products, technologies, and ideas that enhance the environment, with impacts across soil, air, water, and food in rural and urban areas. As a platform for disseminating scientific evidence for environmental protection and sustainable development, the journal emphasizes fundamental science, methodologies, tools, techniques, and policy considerations. It emphasizes the importance of science and technology in environmental benefits, including smarter, cleaner technologies for environmental protection, more efficient resource processing methods, and the evidence supporting their effectiveness.
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