5:05 PM - 5:20 PM
[1C18] Development of Quick and Remote Analysis for Severe Accident Reactor-9
(6) Analysis of Laser-Induced Breakdown Spectra using Machine Learning -2
Keywords:fuel debris, machine learning, LIBS, laser, quantitative analysis, uranium, plutonium
We have been evaluating quantitative analysis by machine learning as analytical method of Laser Induced Breakdown Spectrometry (LIBS) for in-situ analysis of fuel debris and other materials generated by the Fukushima Daiichi Nuclear Power Plant accident. In our previous presentation, we evaluated prediction lines for interpolation/extrapolation and noise effects on spectral intensity using spectra of U/Pu mixture samples obtained by LIBS. In this presentation, we report on the evaluation of the prediction line when the wavelength of the spectrum deviates from the training data.
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