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Technical Papers

MELCOR Analysis of OSU Multi-Application Small Light Water Reactor (MASLWR) Experiment

ORCID Icon, , , &
Pages 277-292 | Received 22 Nov 2016, Accepted 21 Mar 2017, Published online: 23 May 2017
 

Abstract

A Multi-Application Small Light Water Reactor (MASLWR) conceptual design was developed by Oregon State University (OSU) with emphasis on passive safety systems. The passive containment safety system employs condensation and natural circulation to achieve the necessary heat removal from the containment in case of postulated accidents. Containment condensation experiments at the MASLWR test facility at OSU are modeled and analyzed with MELCOR, a system-level reactor accident analysis computer code. The analysis assesses its ability to predict condensation heat transfer in the presence of noncondensable gas for accidents where high-energy steam is released into the containment. This work demonstrates MELCOR’s ability to predict the pressure-temperature response of the scaled containment. Our analysis indicates that the heat removal rates are underestimated in the experiment due to the limited locations of the thermocouples and applies corrections to these measurements by conducting integral energy analyses along with computational fluid dynamics simulation for confirmation. The corrected heat removal rate measurements and the MELCOR predictions on the heat removal rate from the containment show good agreement with the experimental data.

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