高级检索

    机器学习赋能化学链技术:从材料设计到系统智能化的进展与展望

    Application, challenges, and prospects of machine learning in chemical looping technology

    • 摘要: 系统综述了机器学习在化学链技术中的应用现状、关键挑战与未来发展方向。化学链技术作为一种高效的碳捕集与能源转化途径,其核心在于载氧体的设计与反应系统的优化。传统研究方法依赖试错实验与计算模拟,成本高、周期长。机器学习通过数据驱动建模,在高通量筛选、反应器优化、过程控制等方面展现出强大潜力。首先介绍了化学链技术与机器学习的基本概念,随后重点探讨了机器学习在载氧体性能预测、合成路径优化、反应器建模、流程模拟与故障诊断等方面的最新研究进展。最后,总结了当前面临的数据稀缺、模型可解释性不足、跨体系泛化能力弱等挑战,并展望了物理信息机器学习、联邦学习以及数字孪生等未来发展方向,以推动化学链技术的智能化与工业化进程。

       

      Abstract: This review systematically summarizes the current applications, key challenges, and future prospects of machine learning in chemical looping technology. As an efficient pathway for carbon capture and energy conversion, chemical looping relies heavily on the design of oxygen carriers and the optimization of reactor systems. Traditional research methods, which depend on trial-and-error experiments and computational simulations, are often costly and time-consuming. Machine learning, with its data-driven modeling capabilities, demonstrates significant potential in high-throughput screening, reactor optimization, and process control. This paper begins by introducing the fundamental concepts of chemical looping and machine learning, followed by a detailed discussion of recent advances in machine learning-assisted oxygen carrier performance prediction, synthesis optimization, reactor modeling, process simulation, and fault diagnosis. Finally, the review addresses current challenges such as data scarcity, model interpretability issues, and limited generalization across systems, and proposes future directions including physics-informed machine learning, federated learning, and digital twins to accelerate the intelligent and industrial deployment of chemical looping technology.

       

    /

    返回文章
    返回