1 / 26

Characterization of reactor fuel burn-up from antineutrino spectral distortions

ANGRA Neutrinos Project. Characterization of reactor fuel burn-up from antineutrino spectral distortions. E. Kemp, L.F. G. Gonzalez, T.J.C. Bezerra and B. Miguez for the ANGRA Collaboration State University of Campinas - UNICAMP Physics Institute- Cosmic Rays Department. So/Si.

Download Presentation

Characterization of reactor fuel burn-up from antineutrino spectral distortions

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. ANGRA Neutrinos Project Characterization of reactor fuel burn-up from antineutrino spectral distortions E. Kemp, L.F. G. Gonzalez, T.J.C. Bezerra and B. Miguezfor the ANGRA Collaboration State University of Campinas - UNICAMPPhysics Institute- Cosmic Rays Department

  2. So/Si

  3. Neutrino Spectra Parametrization: • Precision spectroscopy with reactor anti-neutrinos.Patrick Huber, Thomas Schwetz , hep-ph/0407026

  4. Simulation Steps Isotope Selection Energy draw from selected spectrum 1000 events Weighting by cross-section Static Fuel Energy resolution dE = k.E dE=0 Fitting routine to extract the isotope fraction Fuel evolution

  5. Fitting convergence study:239Pu fraction 239 Pu Fission contribution • Perfect energy resolution • Static Fuel • Assumed rate: 1000/day (Angra expectation) Events

  6. High Statistics (exposure) Needs • Shape comparison: Kolmogorov-Smirnov test • Neutrino spectrum: Composition from normalized Schreckemback’s spectra (235U, 239Pu and 241Pu)

  7. Spectral Distortion:expectations from burn-up • Taking the ratio between the spectra measured in the n-th month and the first one, we can observe the distortion induced by the burn-up

  8. Spectral Distortion:expectations from burn-up

  9. Nucifer Simulations:we are in good agreement Thanks to D. Lhuillier !

  10. The Spectral Ratio Fit: an example 6th Month after reactor starting

  11. Spectral Ratio Fit Red: linear fit Green: 95% C.L. bands

  12. The slope time dependence

  13. Is the slope of R(t) a good indicator for deviations from the expected behavior ? • Let’s assume a diversion of 1/3 of the reactor fuel during the 6th month

  14. Burnup: impact on the spectrum shape with 1/3 of the fuel replaced at half-cycle Fission fraction Day number

  15. Burnup: impact on the spectrum shape with 1/3 of the fuel replaced at half-cycle Fission fraction Day number

  16. The slope time dependence Is it an outlier?

  17. The slope time dependence Yes, with 75% C.L.

  18. Simulation Steps Isotope Selection Experimental Data (Shreckemback’s Spectra) Energy draw from selected spectrum Weighting by cross-section Static Fuel Repeat until Energy resolution dE = k.E Fuel evolution:Poisson-like time interval μ= f.Δt frequency f = f(D,M)D,M: detector distance and mass dE=0 Χ2 – KS tests Null hypothesis: No distortion

  19. Simulation Steps Isotope Selection Experimental Data (Shreckemback’s Spectra) Energy draw from selected spectrum Weighting by cross-section Static Fuel Repeat until Energy resolution dE = k.E Fuel evolution:Poisson-like time interval μ= f.Δt frequency f = f(D,M)D,M: detector distance and mass dE=0 Χ2 – KS tests Null hypothesis: No distortion

  20. Simulation Steps Isotope Selection Experimental Data (Shreckemback’s Spectra) Energy draw from selected spectrum Weighting by cross-section Static Fuel Repeat until Energy resolution dE = k.E Fuel evolution:Poisson-like time interval μ= f.Δt frequency f = f(D,M)D,M: detector distance and mass dE=0 Χ2 – KS tests Null hypothesis: No distortion

  21. Hypothesis Tests Results

  22. Chi^2 vs. KS • Chi^2 (is more optimistic…) • More Type II Errors • KS test • More Type I Errors • See T.J.C. Bezerra, B. Miguez and R.M.Almeida works (poster session) for detailed numbers and generalities on this (including oscillation studies)

  23. Chi^2 vs. KS • Is it possible to profit the better from both of the tests? • Fisher’s method: • Combination of N different results (p-values) of independent statistical tests resulting in a Chi^2 like quantity with 2K degrees of freedom Next step for this study…

  24. Conclusions • Isotopic composition measurements by shape analysis only requires a large number of events • Reduce the time integration: • Large time intervals degrades information • High exposure: source luminosity + detector mass+ time • Recognition of fuel diversion is possible by observing UNEXPECTED spectral distortions (but, how much?) • Required Improvements: • More sophisticated analysis methods to quote the sensitivity in mass of the recognition method • Combining information: • Shape + Counting Rates • different statistical methods working together • Fisher’s method • PCA, LDA: decomposition of a mixed signal (?)

  25. Thank you !

More Related