Author:
Kobayashi Kazuma,Alam Syed Bahauddin
Abstract
AbstractThis paper focuses on the feasibility of deep neural operator network (DeepONet) as a robust surrogate modeling method within the context of digital twin (DT) enabling technology for nuclear energy systems. Machine learning (ML)-based prediction algorithms that need extensive retraining for new reactor operational conditions may prohibit real-time inference for DT across varying scenarios. In this study, DeepONet is trained with possible operational conditions and that relaxes the requirement of continuous retraining - making it suitable for online and real-time prediction components for DT. Through benchmarking and evaluation, DeepONet exhibits remarkable prediction accuracy and speed, outperforming traditional ML methods, making it a suitable algorithm for real-time DT inference in solving a challenging particle transport problem. DeepONet also exhibits generalizability and computational efficiency as an efficient surrogate tool for DT component. However, the application of DeepONet reveals challenges related to optimal sensor placement and model evaluation, critical aspects of real-world DT implementation. Addressing these challenges will further enhance the method’s practicality and reliability. Overall, this study marks an important step towards harnessing the power of DeepONet surrogate modeling for real-time inference capability within the context of DT enabling technology for nuclear systems.
Funder
National Science Foundation
Publisher
Springer Science and Business Media LLC
Reference29 articles.
1. Yadav, V. et al. Technical challenges and gaps in digital-twin-enabling technologies for nuclear reactor applications (2021).
2. Yadav, V. et al. Project Summary of Digital Twin Regulatory Viability in Nuclear Energy Applications. U.S. Nuclear Regulatory Commission (2022).
3. Yadav, V. et al. State-of-Technology and Technical Challenges in Advanced Sensors, Instrumentation, and Communication to Support Digital Twin for Nuclear Energy Application. U.S. Nuclear Regulatory Commission (2023).
4. Yadav, V. et al. Digital Twins for Nuclear Safeguards and Security: Assessment of Challenges, Opportunities, and Current State-of-Practice. U.S. Nuclear Regulatory Commission (2023).
5. Yadav, V. et al. Technical Challenges and Gaps in Integration of Advanced Sensors, Instrumentation, and Communication Technologies with Digital Twins for Nuclear Application. U.S. Nuclear Regulatory Commission (2023).
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献