This research introduces the Deep Operator Network (DeepONet) as a robust
surrogate modeling method within the context of digital twin (DT) systems for
nuclear engineering. With the increasing importance of nuclear energy as a
carbon-neutral solution, adopting DT technology has become crucial to enhancing
operational efficiencies, safety, and predictive capabilities in nuclear
engineering applications. DeepONet exhibits remarkable prediction accuracy,
outperforming traditional ML methods. Through extensive benchmarking and
evaluation, this study showcases the scalability and computational efficiency
of DeepONet in solving a challenging particle transport problem. By taking
functions as input data and constructing the operator G from training data,
DeepONet can handle diverse and complex scenarios effectively. However, the
application of DeepONet also reveals challenges related to optimal sensor
placement and model evaluation, critical aspects of real-world implementation.
Addressing these challenges will further enhance the method's practicality and
reliability. Overall, DeepONet presents a promising and transformative tool for
nuclear engineering research and applications. Its accurate prediction and
computational efficiency capabilities can revolutionize DT systems, advancing
nuclear engineering research. This study marks an important step towards
harnessing the power of surrogate modeling techniques in critical engineering
domains