利用简单特征建立正丁烷氧化脱氢的 Al2O3 吸附混合金属氧化物催化剂的智能化学计量模型

IF 3.4 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY Reaction Chemistry & Engineering Pub Date : 2024-05-17 DOI:10.1039/D4RE00118D
Ridhwan Lawal, Hassan Alasiri, Abdullah Aitani, Abdulazeez Abdulraheem and Gazali Tanimu
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引用次数: 0

摘要

近年来,用于正丁烷氧化脱氢(ODH)生产丁烯和丁二烯的高效选择性催化剂的开发一直是研究的热点。在此,我们报告了一种利用人工智能(AI)预测以 Al2O3 为载体的混合金属氧化物用于 ODH 的性能的新方法。具体来说,我们使用一致的实验数据集训练了人工神经网络 (ANN)、带 Nu 参数的支持向量回归 (NuSVR)、极端梯度提升回归 (XGBR) 和梯度提升回归 (GBR) 机器学习算法,以建立化学计量模型,使用反应温度、O2:C4 进料比和催化剂组成作为输入特征,预测 ODH 产物的产率,以此衡量催化剂的性能。结果表明,基于人工智能的模型可以熟练预测混合金属氧化物催化剂在正丁烷 ODH 中的性能,使用 ANN、NuSVR、XGBR 和 GBR 模型的预测准确率分别为 82%、89%、92% 和 95%。特征重要性分析还显示,催化剂中的镍负载量对丁烯和丁二烯产量的影响最大。这些研究结果表明,即使使用简单易得的特征也能准确预测催化剂的性能,从而为开发和发现更高效的催化剂铺平了道路。
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Intelligent chemometric modelling of Al2O3 supported mixed metal oxide catalysts for oxidative dehydrogenation of n-butane using simple features

The development of efficient and selective catalysts for the oxidative dehydrogenation (ODH) of n-butane to produce butenes and butadiene with high performance has been the subject of intense research in recent years. Herein, we report a novel approach for predicting the performance of mixed metal oxides supported on Al2O3 for ODH using artificial intelligence (AI). Specifically, artificial neural networks (ANNs), support vector regression with nu parameter (NuSVR), extreme gradient boosting regressor (XGBR), and gradient boosting regression (GBR) machine learning algorithms were trained with a dataset of consistent experimental data to build the chemometric models using reaction temperatures, feed ratios of O2 : C4, and catalyst composition as input features to predict the yield of ODH products as a measure of catalyst performance. The results show that the AI-based models can proficiently predict the performance of mixed metal oxide catalysts for ODH of n-butane, with a prediction accuracy of 82%, 89%, 92%, and 94% using ANN, NuSVR, XGBR, and GBR models, respectively. Feature importance analyses also revealed that the amount of Ni loading in the catalyst(s) has the greatest influence on the yield of butenes and butadiene. These findings demonstrate that accurate predictions of catalyst performance can be made even with simple and easily accessible features, thus paving the way for the development and discovery of more efficient catalysts.

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来源期刊
Reaction Chemistry & Engineering
Reaction Chemistry & Engineering Chemistry-Chemistry (miscellaneous)
CiteScore
6.60
自引率
7.70%
发文量
227
期刊介绍: Reaction Chemistry & Engineering is a new journal reporting cutting edge research into all aspects of making molecules for the benefit of fundamental research, applied processes and wider society. From fundamental, molecular-level chemistry to large scale chemical production, Reaction Chemistry & Engineering brings together communities of chemists and chemical engineers working to ensure the crucial role of reaction chemistry in today’s world.
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