Enhancing Catalyst Performance Prediction with Hybrid Quantum Neural Networks: A Comparative Study on Data Consistency Variation
- Authors
- Oh, Seunghyeon; Roh, Jiwon; Park, Hyundo; Lee, Donggyun; Joo, Chonghyo; Park, Jinwoo; Moon, Il; Ro, Insoo; Kim, Junghwan
- Issue Date
- Jan-2025
- Publisher
- American Chemical Society
- Keywords
- machine learning; quantumneural network; parameterizedquantum circuit; preferential oxidation; oxidativecoupling of methane; catalyst
- Citation
- ACS Sustainable Chemistry & Engineering, v.13, no.5, pp 2048 - 2059
- Pages
- 12
- Indexed
- SCIE
SCOPUS
- Journal Title
- ACS Sustainable Chemistry & Engineering
- Volume
- 13
- Number
- 5
- Start Page
- 2048
- End Page
- 2059
- URI
- https://scholarworks.dongguk.edu/handle/sw.dongguk/57615
- DOI
- 10.1021/acssuschemeng.4c08534
- ISSN
- 2168-0485
2168-0485
- 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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Collections - College of Engineering > Department of Chemical and Biochemical Engineering > 1. Journal Articles

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