共晶体系
计算机科学
工艺工程
生化工程
人工智能
材料科学
化学工程
化学
有机化学
工程类
合金
作者
Francisco Javier López-Flores,César Ramírez‐Márquez,J. Betzabe González‐Campos,José María Ponce‐Ortega
标识
DOI:10.1021/acs.iecr.4c03610
摘要
This review explores the application of machine learning in predicting and optimizing the key physicochemical properties of deep eutectic solvents, including CO2 solubility, density, electrical conductivity, heat capacity, melting temperature, surface tension, and viscosity. By leveraging machine learning, researchers aim to enhance the understanding and customization of deep eutectic solvents, a critical step in expanding their use across various industrial and research domains. The integration of machine learning represents a significant advancement in tailoring deep eutectic solvents for specific applications, marking progress toward the development of greener and more efficient processes. As machine learning continues to unlock the full potential of deep eutectic solvents, it is expected to play an increasingly pivotal role in revolutionizing sustainable chemistry and driving innovations in environmental technology.
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