Yuanzhi Sun, Kaidi Sun, Zhen Liu, Haiquan An, Baozi Peng, Hongwei Gu, He Wang, Peijie Li, Ash fusion temperature prediction based on a Bayesian-optimized ensemble learning algorithm, Clean Energy, Volume 9, Issue 5, October 2025, Pages 104–113, https://doi.org/10.1093/ce/zkaf028
DOI:
Yuanzhi Sun, Kaidi Sun, Zhen Liu, Haiquan An, Baozi Peng, Hongwei Gu, He Wang, Peijie Li, Ash fusion temperature prediction based on a Bayesian-optimized ensemble learning algorithm, Clean Energy, Volume 9, Issue 5, October 2025, Pages 104–113, https://doi.org/10.1093/ce/zkaf028DOI:
Ash fusion temperature prediction based on a Bayesian-optimized ensemble learning algorithm
摘要
Abstract
The ash fusion temperature (AFT) of coal ash is a key factor that influences the slagging process during coal gasification. However
due to the complex influencing factors and the coal characteristics differences from different mines
predicting AFT remains a challenge. In this paper
2338 sets of production data from various mines in China were preprocessed
and typical machine learning and ensemble learning methodologies coordinated with Bayesian optimization were established to obtain an accurate and robust model. The results demonstrate that the ensemble learning models namely extreme gradient boosting and gradient boosting decision tree
exhibited the lowest root mean squared error of approximately 13.00
mean absolute error at 6.93 and 7.11
respectively
and determination coefficient R2 at 0.90. The Shapley additive explanation interpretability analysis was implemented to reveal the contribution of each feature to the AFT. This work is significant for accurately predicting the AFT of coal ash. By providing feature importance
it helps explain the predicted output and offers valuable suggestions and references for the coal blending scheme.