机器学习预测化学反应活化能和吉布斯自由能的研究进展

IF 2.3 3区 化学 Q3 CHEMISTRY, PHYSICAL
Guo-Jin Cao
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引用次数: 0

摘要

机器学习通过提高预测热力学和动力学性质(如活化能和吉布斯自由能)的准确性,加速材料发现和优化学术和工业应用中的反应条件,彻底改变了计算化学。本文综述了应用先进的机器学习技术(包括迁移学习)在复杂化学反应中准确预测活化能和吉布斯自由能方面的最新进展。它全面地提供了在这个领域中使用的关键方法的广泛概述,包括复杂的神经网络,高斯过程和符号回归。此外,该综述突出强调了常用的机器学习框架,如Chemprop、SchNet和DeepMD,它们在预测热力学和动力学性质方面一直表现出卓越的准确性和卓越的效率。此外,它还仔细探讨了许多有影响力的研究,这些研究已经取得了显著的成功,特别是关注预测性能、多样化的数据集和创新的模型架构,这些研究对增强计算化学方法做出了深远的贡献。最后,这篇综述清楚地强调了机器学习在显著提高复杂化学系统预测能力方面的变革潜力,这对前沿理论研究和实际应用都具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Advancements in Machine Learning Predicting Activation and Gibbs Free Energies in Chemical Reactions

Advancements in Machine Learning Predicting Activation and Gibbs Free Energies in Chemical Reactions

Machine learning has revolutionized computational chemistry by improving the accuracy of predicting thermodynamic and kinetic properties like activation energies and Gibbs free energies, accelerating materials discovery and optimizing reaction conditions in both academic and industrial applications. This review investigates the recent strides in applying advanced machine learning techniques, including transfer learning, for accurately predicting both activation energies and Gibbs free energies within complex chemical reactions. It thoroughly provides an extensive overview of the pivotal methods utilized in this domain, including sophisticated neural networks, Gaussian processes, and symbolic regression. Furthermore, the review prominently highlights commonly adopted machine learning frameworks, such as Chemprop, SchNet, and DeepMD, which have consistently demonstrated remarkable accuracy and exceptional efficiency in predicting both thermodynamic and kinetic properties. Moreover, it carefully explores numerous influential studies that have notably reported substantial successes, particularly focusing on predictive performance, diverse datasets, and innovative model architectures that have profoundly contributed to enhancing computational chemistry methodologies. Ultimately, this review clearly underscores the transformative potential of machine learning in significantly improving the predictive power for intricate chemical systems, bearing considerable implications for both cutting-edge theoretical research and practical applications.

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来源期刊
International Journal of Quantum Chemistry
International Journal of Quantum Chemistry 化学-数学跨学科应用
CiteScore
4.70
自引率
4.50%
发文量
185
审稿时长
2 months
期刊介绍: Since its first formulation quantum chemistry has provided the conceptual and terminological framework necessary to understand atoms, molecules and the condensed matter. Over the past decades synergistic advances in the methodological developments, software and hardware have transformed quantum chemistry in a truly interdisciplinary science that has expanded beyond its traditional core of molecular sciences to fields as diverse as chemistry and catalysis, biophysics, nanotechnology and material science.
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