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通过对1600万种催化剂的主动学习探索实现直接甲烷制甲醇转化的新策略

New Strategies for Direct Methane-to-Methanol Conversion from Active Learning Exploration of 16 Million Catalysts.

作者信息

Nandy Aditya, Duan Chenru, Goffinet Conrad, Kulik Heather J

机构信息

Department of Chemical Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, United States.

Department of Chemistry, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, United States.

出版信息

JACS Au. 2022 Apr 27;2(5):1200-1213. doi: 10.1021/jacsau.2c00176. eCollection 2022 May 23.

DOI:10.1021/jacsau.2c00176
PMID:35647589
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9135396/
Abstract

Despite decades of effort, no earth-abundant homogeneous catalysts have been discovered that can selectively oxidize methane to methanol. We exploit active learning to simultaneously optimize methane activation and methanol release calculated with machine learning-accelerated density functional theory in a space of 16 M candidate catalysts including novel macrocycles. By constructing macrocycles from fragments inspired by synthesized compounds, we ensure synthetic realism in our computational search. Our large-scale search reveals that low-spin Fe(II) compounds paired with strong-field (e.g., P or S-coordinating) ligands have among the best energetic tradeoffs between hydrogen atom transfer (HAT) and methanol release. This observation contrasts with prior efforts that have focused on high-spin Fe(II) with weak-field ligands. By decoupling equatorial and axial ligand effects, we determine that negatively charged axial ligands are critical for more rapid release of methanol and that higher-valency metals [i.e., M(III) vs M(II)] are likely to be rate-limited by slow methanol release. With full characterization of barrier heights, we confirm that optimizing for HAT does not lead to large oxo formation barriers. Energetic span analysis reveals designs for an intermediate-spin Mn(II) catalyst and a low-spin Fe(II) catalyst that are predicted to have good turnover frequencies. Our active learning approach to optimize two distinct reaction energies with efficient global optimization is expected to be beneficial for the search of large catalyst spaces where no prior designs have been identified and where linear scaling relationships between reaction energies or barriers may be limited or unknown.

摘要

尽管经过了数十年的努力,但尚未发现能将甲烷选择性氧化为甲醇的储量丰富的均相催化剂。我们利用主动学习,在包含新型大环化合物的1600万个候选催化剂空间中,通过机器学习加速的密度泛函理论同时优化甲烷活化和甲醇释放。通过从受合成化合物启发的片段构建大环化合物,我们在计算搜索中确保了合成的真实性。我们的大规模搜索表明,与强场(如P或S配位)配体配对的低自旋Fe(II)化合物在氢原子转移(HAT)和甲醇释放之间具有最佳的能量权衡。这一观察结果与之前专注于具有弱场配体的高自旋Fe(II)的研究形成对比。通过解耦赤道和轴向配体效应,我们确定带负电荷的轴向配体对于甲醇更快释放至关重要,并且更高价态的金属[即M(III)对M(II)]可能受甲醇缓慢释放的限制而成为速率限制因素。通过全面表征势垒高度,我们证实针对HAT进行优化不会导致形成较大的氧代势垒。能量跨度分析揭示了中自旋Mn(II)催化剂和低自旋Fe(II)催化剂的设计,预计它们具有良好的周转频率。我们利用高效全局优化来优化两种不同反应能量的主动学习方法,有望有利于搜索尚未确定先验设计且反应能量或势垒之间的线性标度关系可能有限或未知的大型催化剂空间。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5b53/9135396/ce6832ed7af1/au2c00176_0010.jpg
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本文引用的文献

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2
Beyond Radical Rebound: Methane Oxidation to Methanol Catalyzed by Iron Species in Metal-Organic Framework Nodes.铁物种在金属有机骨架节点中催化甲烷氧化为甲醇:超越激进反弹。
J Am Chem Soc. 2021 Aug 11;143(31):12165-12174. doi: 10.1021/jacs.1c04766. Epub 2021 Jul 27.
3
Computational Discovery of Transition-metal Complexes: From High-throughput Screening to Machine Learning.
JACS Au. 2025 Apr 23;5(5):2294-2308. doi: 10.1021/jacsau.5c00242. eCollection 2025 May 26.
4
Mechanistic Insights into the Direct Partial Oxidation of Methane to Methanol Catalyzed by Single-Atom Transition Metals on Hydroxyapatite.羟基磷灰石负载单原子过渡金属催化甲烷直接部分氧化制甲醇的机理研究
ACS Omega. 2025 Jan 22;10(4):3868-3877. doi: 10.1021/acsomega.4c09442. eCollection 2025 Feb 4.
5
Electronic structure of metal oxide dications with ammonia ligands and their reactivity towards the selective conversion of methane to methanol.含氨配体的金属氧化物二价阳离子的电子结构及其对甲烷选择性转化为甲醇的反应活性。
Front Chem. 2024 Dec 11;12:1508515. doi: 10.3389/fchem.2024.1508515. eCollection 2024.
6
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J Chem Inf Model. 2024 Dec 9;64(23):8756-8769. doi: 10.1021/acs.jcim.4c01583. Epub 2024 Nov 24.
7
Augmenting genetic algorithms with machine learning for inverse molecular design.用机器学习增强遗传算法进行逆分子设计。
Chem Sci. 2024 Sep 11;15(38):15522-39. doi: 10.1039/d4sc02934h.
8
Catalysing (organo-)catalysis: Trends in the application of machine learning to enantioselective organocatalysis.催化(有机)催化:机器学习在对映选择性有机催化中的应用趋势
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9
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9
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10
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