TY - JOUR
T1 - Advancement in power-to-methanol integration with steel industry waste gas utilization through solid oxide electrolyzer cells
T2 - Surrogate model-based approach for optimization
AU - Syauqi, Ahmad
AU - Nagulapati, Vijay Mohan
AU - Chaniago, Yus Donald
AU - Ningtyas, Juli Ayu
AU - Andika, Riezqa
AU - Lim, Hankwon
N1 - Publisher Copyright:
© 2024 Elsevier Ltd
PY - 2025/1
Y1 - 2025/1
N2 - This study introduces an innovative approach using solid oxide electrolysis cells (SOEC) to co-electrolyze CO2 and H2O from steel industry emissions, converting them into syngas for methanol synthesis. To optimize this process, a surrogate model-based deep neural network (DNN) is employed. The process simulation result shows strong agreement between the model and experimental data, validated by polarization curves and product comparisons, with low RMSE values indicating its validity for generating data in subsequent processes. The DNN surrogate model accurately predicted key performance metrics, with high R2 values for methanol production and power consumption, demonstrating its capability as a surrogate model for process simulation and use for further optimization. Optimization revealed that the ideal conditions for methanol synthesis occur at high temperatures, with low current density and steam flow. Additionally, the surrogate-based optimization method reduced computational time by a factor of 20. The use of SOEC dramatically enhanced methanol production, achieving nearly 10 times the productivity of systems without SOEC integration. This improvement also led to a substantial reduction in CO2 emissions intensity, with the plant predicted to produce near-zero carbon emissions due to increased production efficiency and CO2 utilization.
AB - This study introduces an innovative approach using solid oxide electrolysis cells (SOEC) to co-electrolyze CO2 and H2O from steel industry emissions, converting them into syngas for methanol synthesis. To optimize this process, a surrogate model-based deep neural network (DNN) is employed. The process simulation result shows strong agreement between the model and experimental data, validated by polarization curves and product comparisons, with low RMSE values indicating its validity for generating data in subsequent processes. The DNN surrogate model accurately predicted key performance metrics, with high R2 values for methanol production and power consumption, demonstrating its capability as a surrogate model for process simulation and use for further optimization. Optimization revealed that the ideal conditions for methanol synthesis occur at high temperatures, with low current density and steam flow. Additionally, the surrogate-based optimization method reduced computational time by a factor of 20. The use of SOEC dramatically enhanced methanol production, achieving nearly 10 times the productivity of systems without SOEC integration. This improvement also led to a substantial reduction in CO2 emissions intensity, with the plant predicted to produce near-zero carbon emissions due to increased production efficiency and CO2 utilization.
KW - Deep neural network
KW - Optimization
KW - Power-to-methanol
KW - Solid oxide electrolyzer cell
KW - Steel industry
UR - http://www.scopus.com/inward/record.url?scp=85213867883&partnerID=8YFLogxK
UR - https://kecbukitraya.katingankab.go.id/berita/read/serah-terima-penggunaan-aplikasi-website-kecamatan
U2 - 10.1016/j.seta.2024.104160
DO - 10.1016/j.seta.2024.104160
M3 - Article
AN - SCOPUS:85213867883
SN - 2213-1388
VL - 73
JO - Sustainable Energy Technologies and Assessments
JF - Sustainable Energy Technologies and Assessments
M1 - 104160
ER -