催化剂发现的计算和机器学习

Dong Hyeon Mok, W. Lee, Jongseung Kim, H. Jung, Ho Yeon Jang, S. Moon, Chaehyeon Lee, S. Back
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引用次数: 1

摘要

为了实现可持续能源的未来,开发具有改进性能的新型催化剂对于Haber-Bosch工艺、水电解和燃料电池等关键催化系统至关重要。遗憾的是,目前最先进的催化剂仍然存在贵金属成本高、催化活性不足和长期稳定性差的问题。此外,目前开发新催化剂的策略依赖于“试错法”,这种方法可能既耗时又低效。为了应对这一挑战,原子水平的模拟已经证明了促进催化剂发现的潜力。在过去的几十年里,模拟已经变得相当准确,因此它们可以为实验观察到的催化性能改进的起源提供有用的见解。此外,随着计算能力的指数级增长,高通量催化剂筛选已成为可能。更令人兴奋的是,机器学习的最新进展为进一步加速催化剂的发现开辟了可能性。在此,我们介绍了计算和机器学习在催化剂发现方面的最新应用和挑战。
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Computation and Machine Learning for Catalyst Discovery
Towards a sustainable energy future, it is essential to develop new catalysts with improved properties for key catalytic systems such as Haber-Bosch process, water electrolysis and fuel cell. Unfortunately, the current state-of-the-art catalysts still suffer from high cost of noble metals, insufficient catalytic activity and long-term stability. Furthermore, the current strategy to develop new catalysts relies on “trial-and-error” method, which could be time-consuming and inefficient. To tackle this challenge, atomic-level simulations have demonstrated the potential to facilitate catalyst discovery. For the past decades, the simulations have become reasonably accurate so that they can provide useful insights toward the origin of experimentally observed improvements in catalytic properties. In addition, with the exponential increase in computing power, high-throughput catalyst screening has become feasible. More excitingly, recent advances in machine learning have opened the possibility to further accelerate catalyst discovery. Herein, we introduce recent applications and challenges of computation and machine learning for catalyst discovery.
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