Presentation Information
[2B11]Uncertainty estimation of plume directions in atmospheric dispersion predictions: application of Bayesian machine learning
*Masanao Kadowaki1, Haruyasu Nagai1, Toshiya Yoshida2, Hiroaki Terada1, Katsunori Tsuduki1 (1. JAEA, 2. Japan Wind Energy Consulting Inc.)
Keywords:
Bayesian machine learning,atmospheric dispersion prediction,uncertainty estimation,numerical simulation,WSPEEDI-DB
We have developed a method to quantitatively evaluate uncertainties in the dispersion direction of a radioactive plume in atmospheric dispersion predictions using an analysis model obtained by applying Bayesian machine learning to a database that has accumulated long-term prediction calculation results. The validity of this method is verified by the results of atmospheric dispersion calculations for hypothetical releases from the site of JAEA.
