Papers
arxiv:2110.00924

Application of Artificial Neural Networks for Catalysis

Published on Oct 3, 2021
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Abstract

Artificial neural networks enhance catalyst development by reducing time and resource consumption while improving economic benefits through nonlinear transformation and self-learning capabilities.

AI-generated summary

Catalyst, as an important material, plays a crucial role in the development of chemical industry. By improving the performance of the catalyst, the economic benefit can be greatly improved. Artificial neural network (ANN), as one of the most popular machine learning algorithms, relies on its good ability of nonlinear transformation, parallel processing, self-learning, self-adaptation and good associative memory, has been widely applied to various areas. Through the optimization of catalyst by ANN, the consumption of time and resources can be greatly reduced and greater economic benefits can be obtained. In this review, we show how this powerful technique helps people address the highly complicated problems and accelerate the progress of the catalysis community.

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