Machine learning-aided process design using limited experimental data: A microwave-assisted ammonia synthesis case study

IF 3.5 3区 工程技术 Q2 ENGINEERING, CHEMICAL AIChE Journal Pub Date : 2024-10-18 DOI:10.1002/aic.18621
Md Abdullah Al Masud, Alazar Araia, Yuxin Wang, Jianli Hu, Yuhe Tian
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Abstract

An open research question lies in how machine learning (ML) can accelerate the design optimization of chemical processes which are at very early experimental development stage with limited data availability. As an example, this article investigates the design of an intensified microwave-assisted ammonia production reactor with 46 experimental data. We present an integrated approach of neural networks and synthetic minority oversampling technique to quantify the nonlinear input-output relationships of this process. For ammonia concentration predictions at discrete operating conditions, the approach demonstrates 96.1% average accuracy over other ML methods (e.g., support vector regression 84.2%). The approach has also been applied for continuous optimization, identifying the optimal synthesis conditions at 597.37 K, 0.55MPa with feed flow rate of 1.67 ×10−3 m3/s kg and hydrogen to nitrogen ratio of 1 which is consistent with experimental observations. The data-driven model enables to integrate this reactor with existing ammonia production infrastructure and benchmark with conventional techniques.

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利用有限的实验数据进行机器学习辅助工艺设计:微波辅助氨合成案例研究
机器学习(ML)如何加速处于早期实验开发阶段且数据有限的化学工艺的设计优化,是一个有待解决的研究问题。本文以 46 个实验数据为例,研究了强化微波辅助合成氨生产反应器的设计。我们提出了一种神经网络和合成少数过采样技术的综合方法,用于量化该过程的非线性输入输出关系。对于离散操作条件下的氨浓度预测,该方法的平均准确率为 96.1%,高于其他 ML 方法(如支持向量回归 84.2%)。该方法还被应用于连续优化,在 597.37 K、0.55MPa、进料流速为 1.67 ×10-3 m3/s kg 和氢氮比为 1 的条件下确定了最佳合成条件,这与实验观察结果一致。数据驱动模型可将该反应器与现有的合成氨生产基础设施相结合,并与传统技术进行比较。
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来源期刊
AIChE Journal
AIChE Journal 工程技术-工程:化工
CiteScore
7.10
自引率
10.80%
发文量
411
审稿时长
3.6 months
期刊介绍: The AIChE Journal is the premier research monthly in chemical engineering and related fields. This peer-reviewed and broad-based journal reports on the most important and latest technological advances in core areas of chemical engineering as well as in other relevant engineering disciplines. To keep abreast with the progressive outlook of the profession, the Journal has been expanding the scope of its editorial contents to include such fast developing areas as biotechnology, electrochemical engineering, and environmental engineering. The AIChE Journal is indeed the global communications vehicle for the world-renowned researchers to exchange top-notch research findings with one another. Subscribing to the AIChE Journal is like having immediate access to nine topical journals in the field. Articles are categorized according to the following topical areas: Biomolecular Engineering, Bioengineering, Biochemicals, Biofuels, and Food Inorganic Materials: Synthesis and Processing Particle Technology and Fluidization Process Systems Engineering Reaction Engineering, Kinetics and Catalysis Separations: Materials, Devices and Processes Soft Materials: Synthesis, Processing and Products Thermodynamics and Molecular-Scale Phenomena Transport Phenomena and Fluid Mechanics.
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