主催: 一般社団法人 日本機械学会
会議名: 第37回 計算力学講演会
開催日: 2024/10/18 - 2024/10/20
In this paper, we construct a surrogate model for radiation dose rate predictions using simulation results and deep learning, specifically for an indoor space containing a square pillar, and verify its accuracy. We also demonstrate, based on the principle of superposition, that the surrogate model can predict the distribution of radiation dose rates in a space with multiple radiation sources. Furthermore, we propose a method to predict the radiation dose rates in a space with multiple square pillars and sources by using a corrected surrogate model. Based on these findings, we assess the feasibility of predicting the radiation dose rates in the reactor building with complex structures in real time and with high accuracy.