MXene材料机器学习应用的最新进展:能源和环境应用的设计、合成、表征和商业化

Sodiq Abiodun Kareem , Makinde Akindeji Ibrahim , Justus Uchenna Anaele , Olajesu Favor Olanrewaju , Emmanuel Omosegunfunmi Aikulola , Michael Oluwatosin Bodunrin
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引用次数: 0

摘要

mxene基材料具有优异的超导性、极好的离子保持能力、大表面积和快速电化学反应的特点,使其成为高容量储能和转换系统(ESCS)应用的可行选择,如便携式数字设备、电动汽车、电力运输、现代智能网络和5 G电信。本文综述了基于MXene的材料的合成和改性的最新进展和一些困难,并强调了机器学习(ML)在推进MXene研究和应用中的变革作用。除了大规模生产的经济和工业挑战外,还讨论了在储能和水净化方面的应用。最近的研究证实,ML模型在改进MXene合成过程中发挥了重要作用,通过实时过程控制和强化学习,实现了更高的收率和性能优化,更高的纯度和可扩展性。遗传算法、进化算法和贝叶斯优化等技术加速了为特定用途量身定制的新型MXene阶段的发现。该综述确定了MXene研究的未来方向,强调了可扩展制造方法的发展,机器学习驱动的材料信息平台,以及MXene在电子等领域的应用扩展。通过整合机器学习,MXene的研究有望实现更快、更具成本效益的进步,并实现下一代技术的商业化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recent advances in machine learning applications for MXene materials: Design, synthesis, characterization, and commercialization for energy and environmental applications
MXene-based materials are characterized by excellent superconductivity, superb ion-holding capacity, large surface area, and rapid electrochemical reactions, making them viable options for applications in high-capacity energy storage and conversion systems (ESCS) such as portable digital devices, electric vehicles, power transportation, modern intelligent networks, and 5 G telecommunications. This review article looks at the latest developments and some of the difficulties in the synthesis and modification of MXene-based materials and highlights the transformative role of machine learning (ML) in advancing MXene research and applications. Applications in energy storage and water purification are discussed alongside the economic and industrial challenges of large-scale production. Recent studies confirm that ML models have been instrumental in improving MXene synthesis processes, enabling higher yields and optimization of properties, better purity, and scalability through real-time process control and reinforcement learning. Techniques such as genetic algorithms, evolutionary algorithms, and Bayesian optimization accelerate the discovery of novel MXene phases tailored for specific uses. The review identifies future directions in MXene research, emphasizing the development of scalable fabrication methods, ML-driven material informatics platforms, and the expansion of MXene applications in electronics and beyond. By integrating ML, MXene research is poised to achieve faster, cost-effective advancements and commercialization for next-generation technologies.
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