Tsinghua Shenzhen International Graduate School, Tsinghua University, Shenzhen, 518055, People's Republic of China.
South China Institute of Environmental Sciences, Ministry of Ecology and Environment of PRC, Guangzhou, 510655, People's Republic of China.
Chemosphere. 2022 Dec;308(Pt 3):136447. doi: 10.1016/j.chemosphere.2022.136447. Epub 2022 Sep 15.
Energy crisis and environmental pollution have become the bottleneck of human sustainable development. Therefore, there is an urgent need to develop new catalysts for energy production and environmental remediation. Due to the high cost caused by blind screening and limited valuable computing resources, the traditional experimental methods and theoretical calculations are difficult to meet with the requirements. In the past decades, computer science has made great progress, especially in the field of machine learning (ML). As a new research paradigm, ML greatly accelerates the theoretical calculation methods represented by first principal calculation and molecular dynamics, and establish the physical picture of heterogeneous catalytic processes for energy and environment. This review firstly summarized the general research paradigms of ML in the discovery of catalysts. Then, the latest progresses of ML in light-, electricity- and enzyme-mediated heterogeneous catalysis were reviewed from the perspective of catalytic performance, operating conditions and reaction mechanism. The general guidelines of ML for heterogeneous catalysis were proposed. Finally, the existing problems and future development trend of ML in heterogeneous catalysis mediated by light, electricity and enzyme were summarized. We highly expect that this review will facilitate the interaction between ML and heterogeneous catalysis, and illuminate the development prospect of heterogeneous catalysis.
能源危机和环境污染已成为人类可持续发展的瓶颈。因此,迫切需要开发用于能源生产和环境修复的新型催化剂。由于盲目筛选和有限的有价值计算资源所导致的高成本,传统的实验方法和理论计算难以满足需求。在过去的几十年中,计算机科学取得了巨大的进步,特别是在机器学习(ML)领域。作为一种新的研究范例,ML 极大地加速了以第一性原理计算和分子动力学为代表的理论计算方法的发展,并为能源和环境中的多相催化过程建立了物理图像。本综述首先总结了 ML 在催化剂发现方面的一般研究范例。然后,从催化性能、操作条件和反应机制的角度综述了 ML 在光、电和酶介导的多相催化中的最新进展。提出了 ML 在多相催化中的一般指导原则。最后,总结了光、电和酶介导的多相催化中 ML 存在的问题和未来发展趋势。我们高度期望,这篇综述将促进 ML 与多相催化之间的相互作用,并阐明多相催化的发展前景。