TY - JOUR
T1 - Machine learning integration in thermodynamics
T2 - Predicting CO2mixture saturation properties for sustainable refrigeration applications
AU - Albà, Carlos G.
AU - Alkhatib, Ismail I.I.
AU - Vega, Lourdes F.
AU - Llovell, Fèlix
N1 - Publisher Copyright:
© 2025 The Authors.
PY - 2025/5
Y1 - 2025/5
N2 - The need for sustainable alternatives in refrigeration has grown as Europe enforces mandates on avoiding high global warming potential (GWP) refrigerants. CO -based refrigerants have emerged as a promising choice in response, distinguished by its low GWP and reduced flammability, compared to formulated hydrofluoroolefins, thus offering a safer and sustainable solution in the context of next generation drop-in refrigerants. This study presents a machine-learning-based methodology to estimate the saturation properties of CO2-based mixtures, allowing for the precise tuning of molecular-based models like the polar soft-SAFT, used for technical evaluation, without relying on experimental data, often unavailable for such systems. The approach departs from the thermodynamic characterization of several pure-components, including novel fluorine-based refrigerants. The parametrization allows an excellent description of the vapor pressure, saturated densities, and latent heat. Next, a constant, temperature-independent binary parameter is used to estimate the solubility profiles of CO2-derived mixtures in selected refrigerants. The model effectively captures azeotropic and zeotropic behaviors, demonstrating its strength in fine-tuning solubility with minimal corrections. Subsequently, data from the molecular characterization via polar soft-SAFT is used as output targets to train a machine learning algorithm based on artificial neural networks, enabling the prediction of mixture saturation properties out of the training dataset's scope. Using COSMO σ-profiles, the developed ANN demonstrates high efficiency in predicting saturation bubble and dew temperatures, achieving R >0.9999, RMSE<0.0959, AARD <0.0220%, and NMAD of 0.00044. Statistical analysis confirms minimal mean deviations, with outliers limited to 2.63% for bubble and 2.44% for dew phase predictions, respectively.
AB - The need for sustainable alternatives in refrigeration has grown as Europe enforces mandates on avoiding high global warming potential (GWP) refrigerants. CO -based refrigerants have emerged as a promising choice in response, distinguished by its low GWP and reduced flammability, compared to formulated hydrofluoroolefins, thus offering a safer and sustainable solution in the context of next generation drop-in refrigerants. This study presents a machine-learning-based methodology to estimate the saturation properties of CO2-based mixtures, allowing for the precise tuning of molecular-based models like the polar soft-SAFT, used for technical evaluation, without relying on experimental data, often unavailable for such systems. The approach departs from the thermodynamic characterization of several pure-components, including novel fluorine-based refrigerants. The parametrization allows an excellent description of the vapor pressure, saturated densities, and latent heat. Next, a constant, temperature-independent binary parameter is used to estimate the solubility profiles of CO2-derived mixtures in selected refrigerants. The model effectively captures azeotropic and zeotropic behaviors, demonstrating its strength in fine-tuning solubility with minimal corrections. Subsequently, data from the molecular characterization via polar soft-SAFT is used as output targets to train a machine learning algorithm based on artificial neural networks, enabling the prediction of mixture saturation properties out of the training dataset's scope. Using COSMO σ-profiles, the developed ANN demonstrates high efficiency in predicting saturation bubble and dew temperatures, achieving R >0.9999, RMSE<0.0959, AARD <0.0220%, and NMAD of 0.00044. Statistical analysis confirms minimal mean deviations, with outliers limited to 2.63% for bubble and 2.44% for dew phase predictions, respectively.
KW - CO-based Refrigerants
KW - COSMO-RS
KW - Global Warming
KW - Machine Learning
KW - Polar soft-SAFT
UR - http://www.scopus.com/inward/record.url?scp=105004545865&partnerID=8YFLogxK
U2 - 10.1016/j.jcou.2025.103072
DO - 10.1016/j.jcou.2025.103072
M3 - Article
AN - SCOPUS:105004545865
SN - 2212-9820
VL - 95
JO - Journal of CO2 Utilization
JF - Journal of CO2 Utilization
M1 - 103072
ER -