Assimilating fission-code FIFRELIN using machine learning

oleh: Bazelaire Guillaume, Chebboubi Abdelhazize, Bernard David, Daniel Geoffrey, Blanchard Jean-Baptiste

Format: Article
Diterbitkan: EDP Sciences 2024-01-01

Deskripsi

This paper presents work that has been done on the FIFRELIN Monte-Carlo code. The purpose of the code is to simulate the de-excitation process of fission fragments. Numerous quantity of insterest are calculated (mass yields, prompt particle spectra, mulitiplicities … ). Up to now the code relies on four free parameters which control the initial excitation and total angular momentum of fission fragment. Finding the good set of the free parameters is a diffucult task. In this work, we have developed an optimization algorithm based on Gaussian Process regression.