Machine Learning Optimization of Waste Salt Pyrolysis: Predicting Organic Pollutant Removal and Mass Loss DOI Open Access
Run Zhou,

Qing Gao,

Qiuju Wang

et al.

Sustainability, Journal Year: 2025, Volume and Issue: 17(7), P. 3216 - 3216

Published: April 4, 2025

Pyrolysis presents a promising solution for the complete purification and recycling of waste salt. However, presence organic pollutants in salts significantly hinders their practical application, owing to diverse sources strong resistance degradation. This study developed predictive models removal from salt using three machine learning techniques: Random Forest (RF), Support Vector Machine, Artificial Neural Network. The were evaluated based on total carbon (TOC) rate mass loss rate, with RF model demonstrating high accuracy, achieving R2 values 0.97 0.99, respectively. Feature engineering revealed that contribution components was minimal, rendering them redundant. importance analysis identified temperature as most critical factor TOC removal, while moisture content nitrogen key determinants loss. Partial dependence plots further elucidated individual interactive effects these variables. validated both literature data laboratory experiments, user interface Python GUI library. provides novel insights into pyrolysis process establishes foundation optimizing its application.

Language: Английский

Design and performance optimization of solar pyrolysis reactor for organic impurities in waste salt DOI
Zijun Dong, Y.B. Tao, Heng Ye

et al.

Separation and Purification Technology, Journal Year: 2025, Volume and Issue: 354, P. 129049 - 129049

Published: Feb. 1, 2025

Language: Английский

Citations

0

Comprehensive treatment of waste salts from electrolytic manganese metal industry and recovery of manganese, magnesium, and ammonium DOI

Shichao He,

Zhiyong Liu, Tao Jiang

et al.

Journal of Environmental Management, Journal Year: 2025, Volume and Issue: 375, P. 124252 - 124252

Published: Feb. 1, 2025

Language: Английский

Citations

0

Machine Learning Optimization of Waste Salt Pyrolysis: Predicting Organic Pollutant Removal and Mass Loss DOI Open Access
Run Zhou,

Qing Gao,

Qiuju Wang

et al.

Sustainability, Journal Year: 2025, Volume and Issue: 17(7), P. 3216 - 3216

Published: April 4, 2025

Pyrolysis presents a promising solution for the complete purification and recycling of waste salt. However, presence organic pollutants in salts significantly hinders their practical application, owing to diverse sources strong resistance degradation. This study developed predictive models removal from salt using three machine learning techniques: Random Forest (RF), Support Vector Machine, Artificial Neural Network. The were evaluated based on total carbon (TOC) rate mass loss rate, with RF model demonstrating high accuracy, achieving R2 values 0.97 0.99, respectively. Feature engineering revealed that contribution components was minimal, rendering them redundant. importance analysis identified temperature as most critical factor TOC removal, while moisture content nitrogen key determinants loss. Partial dependence plots further elucidated individual interactive effects these variables. validated both literature data laboratory experiments, user interface Python GUI library. provides novel insights into pyrolysis process establishes foundation optimizing its application.

Language: Английский

Citations

0