HomeAbout Us Academics Student Services Research Giving Contact Us

Texas A&M researcher to develop predictive software for nuclear reactors

With dwindling coal and oil reserves and increased awareness about climate change, zero-carbon energy sources-such as nuclear energy-are in the spotlight.

Texas A&M researcher Dr. Jean Ragusa is developing predictive software that will help nuclear reactors operate more efficiently.

Texas A&M researcher Dr. Jean Ragusa is developing predictive software that will help nuclear reactors operate more efficiently.

In fact, as part of its Nuclear Energy University Program, the Department of Energy is funding Texas A&M University’s Dr. Jean Ragusa’s research that will improve the working of nuclear reactors.

Ragusa is an assistant professor in the Department of Nuclear Engineering and associate director of the Institute for Scientific Computation. For this project, he will be collaborating with Dr. Pavel Solin, an associate professor of mathematics at the University of Nevada, Reno.

Ragusa and Solin aim to provide engineers with significantly improved simulations of the various physical phenomena taking place in nuclear reactors. They will use their $587,000 grant to develop new and highly sophisticated computational methods to predict the behavior of complex coupled processes occurring in nuclear reactors, such as neutron flux, thermal-hydraulics and structural mechanics.

Current models consider or “solve” one physical process at a time. For example, these models can tell you where neutrons are in a reactor. How accurate this prediction is depends on how closely the model mimics the conditions in a reactor. Scientists know that a physical process is simultaneously influenced by different processes, but since current models consider only one physical phenomenon at a time, their predictions are not sufficiently accurate.

Ragusa and Solin will develop open-source software based on advanced numerical analysis to simultaneously solve multiple physical processes and provide accurate predictions of the reactions occurring in reactors.  Their multiphysics simulations will rely on the high-level software platforms the two researchers have developed independently in the past.

Cross-section of a model of a nuclear power reactor showing a gradient of neutrons (developed by Dr. Ragusa). Dark blue: Air with few neutrons. Green: Air with many neutrons.

Cross-sectional cut of a model of a power reactor solved with adapted mesh refinement developed by Dr. Jean Ragusa.

Ragusa and Solin’s research could help improve the efficiency of existing nuclear reactors. Since this research will allow scientists to rely more on predictive simulations rather than expensive experimental mock-ups, it will also help scientists design reactors at a lesser cost.

“Since experiments in nuclear science are expensive,” Ragusa said, “before you build a reactor, it is important to verify how it will function and ensure that safety margins are respected; this can be done at a lower cost if computer models are more accurate. Predictive models are important because they can answer these questions using high-performance computing.”

Ragusa and Solin are working with other national laboratories, including Idaho National Laboratory, to develop their software.

“Popularizing this relatively new technique will help nuclear engineers solve problems faster and more accurately,” Ragusa said.

Written by: Marissa Doshi

Popularity: 34% [?]

Both comments and pings are currently closed.

One Response to “Texas A&M researcher to develop predictive software for nuclear reactors”

  1. nana a adoo Says:

    Think this is absolutely a step in the right direction but hope other expects from across the globe could be included to make a more versatile and robust code applicable to all reactors irrespective of their geometries and material configurations.
    I again think other students with Masters or PhD level should be given scholarships to treat some aspects of this project as their major research works too.

    Dr. Jean Ragusa, Im with you in full flight. Good Luck.
    In this way I think the code will be more acceptable with zero error.