Enhancing Catalyst Performance Prediction with Hybrid Quantum Neural Networks: A Comparative Study on Data Consistency Variation

IF 7.3 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY ACS Sustainable Chemistry & Engineering Pub Date : 2025-01-31 DOI:10.1021/acssuschemeng.4c08534
Seunghyeon Oh, Jiwon Roh, Hyundo Park, Donggyun Lee, Chonghyo Joo, Jinwoo Park, Il Moon, Insoo Ro* and Junghwan Kim*, 
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Abstract

Data consistency affects the robustness of machine learning-based models. Most experimental and industrial data have low consistency, leading to poor generalization performance. In this study, a hybrid Quantum Neural Network (hybrid QNN) with superior generalization capabilities, was compared with established machine learning models, including artificial neural networks and decision-tree-based methods such as CatBoost and XGBoost. We evaluated these models by predicting the catalyst performance across different data-consistency scenarios using two catalyst data sets: a low-consistency preferential oxidation of CO (PROX) catalyst and a high-consistency oxidation coupling of methane (OCM) catalyst. The hybrid QNN performed better in both low- and high-consistency environments, demonstrating robust generalization capabilities. In the regression tasks, the hybrid QNN achieved a 6.7% lower mean absolute error (MAE) for the PROX catalyst and a 35.1% lower MAE for the OCM catalyst compared with the least-performing model. Adaptability is crucial in catalysis, where data scarcity and variability are common. Our research confirms the potential of the hybrid QNN as a comprehensive tool for advancing catalyst design and selection by achieving high accuracy and predictive power under diverse conditions.

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基于混合量子神经网络的催化剂性能预测:数据一致性变化的比较研究
数据一致性影响基于机器学习的模型的鲁棒性。大多数实验和工业数据一致性较低,导致泛化性能较差。在本研究中,将具有卓越泛化能力的混合量子神经网络(hybrid QNN)与已建立的机器学习模型(包括人工神经网络和基于决策树的方法,如CatBoost和XGBoost)进行了比较。我们通过使用两种催化剂数据集(低一致性CO优先氧化(PROX)催化剂和高一致性甲烷氧化偶联(OCM)催化剂)预测不同数据一致性情景下的催化剂性能来评估这些模型。混合QNN在低一致性和高一致性环境下都表现得更好,显示出鲁棒的泛化能力。在回归任务中,与表现最差的模型相比,混合QNN在PROX催化剂上的平均绝对误差(MAE)降低了6.7%,在OCM催化剂上的平均绝对误差(MAE)降低了35.1%。适应性在催化中是至关重要的,在催化中数据稀缺和可变性是常见的。我们的研究证实了混合QNN作为推进催化剂设计和选择的综合工具的潜力,通过在不同条件下实现高精度和预测能力。
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来源期刊
ACS Sustainable Chemistry & Engineering
ACS Sustainable Chemistry & Engineering CHEMISTRY, MULTIDISCIPLINARY-ENGINEERING, CHEMICAL
CiteScore
13.80
自引率
4.80%
发文量
1470
审稿时长
1.7 months
期刊介绍: ACS Sustainable Chemistry & Engineering is a prestigious weekly peer-reviewed scientific journal published by the American Chemical Society. Dedicated to advancing the principles of green chemistry and green engineering, it covers a wide array of research topics including green chemistry, green engineering, biomass, alternative energy, and life cycle assessment. The journal welcomes submissions in various formats, including Letters, Articles, Features, and Perspectives (Reviews), that address the challenges of sustainability in the chemical enterprise and contribute to the advancement of sustainable practices. Join us in shaping the future of sustainable chemistry and engineering.
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