TY - JOUR
T1 - The employment of domain adaptation strategy for improving the applicability of neural network-based coke quality prediction for smart cokemaking process
AU - Qiu, Yuhang
AU - Hui, Yunze
AU - Zhao, Pengxiang
AU - Wang, Mengting
AU - Guo, Shirong
AU - Dai, Baiqian
AU - Dou, Jinxiao
AU - Bhattacharya, Sankar
AU - Yu, Jianglong
N1 - Funding Information:
This work was supported by the Suzhou Industry Park Research Innovation Platform Funding (YZXCXPT2022105) and the National Natural Science Foundation of China (22078141). The full PhD scholarship from Monash University is also greatly acknowledged. We sincerely thank the industry company, Hebei China Coal Risun Coking Co. LTD. Coal Research Institute, for their provided industrial data during the cokemaking process.
Funding Information:
This work was supported by the Suzhou Industry Park Research Innovation Platform Funding (YZXCXPT2022105) and the National Natural Science Foundation of China ( 22078141 ). The full PhD scholarship from Monash University is also greatly acknowledged. We sincerely thank the industry company, Hebei China Coal Risun Coking Co., LTD. Coal Research Institute, for their provided industrial data during the cokemaking process.
Publisher Copyright:
© 2024
PY - 2024/9/15
Y1 - 2024/9/15
N2 - Precise coke quality prediction is essential for coke production process optimization to achieve the reduction in energy consumption and CO2 emissions, thus moving toward carbon neutrality in the coking industry. However, the complexity of coal molecular structures and the chemical reactions in the cokemaking process pose significant challenges to the applicability of existing coke quality prediction models. Based on the recently widely employed Artificial Neural Network (ANN) method, this study is the first to introduce domain adaptation strategies for improving the applicability of ANN in predicting coke quality including Coke Strength after Reaction (CSR) and Coke Reactivity Index (CRI). 649 Chinese coal samples with properties including Mad, Ad, Vdaf, St,d, G, X and Y along with coke quality were collected. They were initially categorized into source and target domains characterized by different distributions. Subsequently, two scenarios were independently evaluated based on coal samples in the target domain, which either lacked any information or contained partial information of actual coke quality. The results suggested that the proposed approach can significantly enhance the predictive performance for coal samples across various distributions. Moreover, a comprehensive investigation was also conducted to determine key factors influencing the effectiveness of coke quality prediction with this approach.
AB - Precise coke quality prediction is essential for coke production process optimization to achieve the reduction in energy consumption and CO2 emissions, thus moving toward carbon neutrality in the coking industry. However, the complexity of coal molecular structures and the chemical reactions in the cokemaking process pose significant challenges to the applicability of existing coke quality prediction models. Based on the recently widely employed Artificial Neural Network (ANN) method, this study is the first to introduce domain adaptation strategies for improving the applicability of ANN in predicting coke quality including Coke Strength after Reaction (CSR) and Coke Reactivity Index (CRI). 649 Chinese coal samples with properties including Mad, Ad, Vdaf, St,d, G, X and Y along with coke quality were collected. They were initially categorized into source and target domains characterized by different distributions. Subsequently, two scenarios were independently evaluated based on coal samples in the target domain, which either lacked any information or contained partial information of actual coke quality. The results suggested that the proposed approach can significantly enhance the predictive performance for coal samples across various distributions. Moreover, a comprehensive investigation was also conducted to determine key factors influencing the effectiveness of coke quality prediction with this approach.
KW - Artificial neural network
KW - Coke quality prediction
KW - Domain adaptation
KW - Modelling
KW - Smart cokemaking
UR - http://www.scopus.com/inward/record.url?scp=85195412621&partnerID=8YFLogxK
U2 - 10.1016/j.fuel.2024.132162
DO - 10.1016/j.fuel.2024.132162
M3 - Article
AN - SCOPUS:85195412621
SN - 0016-2361
VL - 372
JO - Fuel
JF - Fuel
M1 - 132162
ER -