Litcius/Paper detail

Quasi-Monte Carlo sampling method for simulation-based dynamic probabilistic risk assessment of nuclear power plants

Kotaro Kubo, Sunghyon Jang, Takashi Takata, Akira Yamaguchi

2021Journal of Nuclear Science and Technology10 citationsDOI

Abstract

Dynamic probabilistic risk assessment (PRA), which handles epistemic and aleatory uncertainties by coupling the thermal-hydraulics simulation and probabilistic sampling, enables a more realistic and detailed analysis than conventional PRA. However, enormous calculation costs are incurred by these improvements. One solution is to select an appropriate sampling method. In this paper, we applied the Monte Carlo, Latin hypercube, grid-point, and quasi-Monte Carlo sampling methods to the dynamic PRA of a station blackout sequence in a boiling water reactor and compared each method. The result indicated that quasi-Monte Carlo sampling method handles the uncertainties most effectively in the assumed scenario.

Topics & Concepts

Monte Carlo methodLatin hypercube samplingProbabilistic logicComputer scienceSampling (signal processing)Boiling water reactorBlackoutImportance samplingMonte Carlo integrationMonte Carlo molecular modelingMathematical optimizationNuclear engineeringPower (physics)EngineeringMarkov chain Monte CarloMathematicsPhysicsStatisticsFilter (signal processing)Electric power systemArtificial intelligenceQuantum mechanicsComputer visionNuclear reactor physics and engineeringProbabilistic and Robust Engineering DesignGraphite, nuclear technology, radiation studies