katrin’s-259-day-quest-for-sterile-neutrinos
KATRIN’s 259-Day Quest for Sterile Neutrinos

KATRIN’s 259-Day Quest for Sterile Neutrinos

Certainly! Here is a concise summary and explanation of the key points regarding the KATRIN experiment’s setup, data handling, analysis methods, and statistical validation information you provided:

KATRIN Experimental Setup

Goal: Measure the β-decay electron energy spectrum of tritium near the endpoint (18.6 keV) to search for neutrino masses and sterile neutrinos.
Setup includes:

Gaseous tritium source (WGTS) with high isotopic purity (~99%).
Magnetic guidance of electrons (2.5 T field in WGTS), differential and cryogenic pumping to reduce tritium flow, chicanes to reduce residual tritium.
Two spectrometers: a pre-spectrometer (low resolution) and main spectrometer (high resolution ~1 eV).
Silicon p-i-n segmented detector with about 148 pixels.

Backgrounds: Arise from cosmic muons, Rn decays, ions/electrons trapped magnetically, and sputtered 210Pb decays; mitigated by magnetic shielding, wire electrodes, cryogenic baffles, and optimized electromagnetic fields (SAP setting).
Background rate improved over campaigns—from ~0.29 cps (KNM1) to 0.12 cps (KNM3-SAP).

Data Collections (Campaigns KNM1–KNM5)

Each campaign (KNM) collects β-decay spectra over many retarding potential scans.
Source conditions improved over time (density approaching design value, temperature adjustments).
Later campaigns deployed SAP settings to reduce backgrounds.
Data divided into sets grouped by different detector configurations and operational modes (NAP vs SAP).
Total data contain ~36 million counts from 68,237 scan steps across all campaigns.
KNM4 campaign was split into two sub-campaigns due to changes in measurement time distribution and pre-spectrometer configurations (KNM4-NOM and KNM4-OPT).

Analysis Frameworks

Two independent analysis toolkits used:

KaFit: C++ based, uses numerical integrals and caching techniques for spectrum calculation and χ² minimization with MINUIT.
Netrium: Neural-network-based model approximation trained on simulated spectra, providing ~1000x speed-up.

Both frameworks cross-validate and agree well (e.g., exclusion contours and best-fit parameters).
Blinding strategy is employed using blind Asimov datasets to avoid bias and validate analysis before unblinding real data.
Anomalies in intermediate analyses (like KNM4 closed contour) triggered technical investigations and corrections.

Statistical Model and Likelihood

Likelihood modeled as a product of Poisson or Gaussian pdfs, depending on count size per pixel or patch.
Joint χ² function combines contributions from all campaigns, accounting for nuisance parameters and correlations via covariance matrices.
Systematic uncertainties included as Gaussian penalty terms.
Raster scans performed to evaluate individual and combined systematics impact; result: statistics dominate overall uncertainties.
Main systematics impacting sensitivity are related to source gas density, energy-loss function, source potential, and backgrounds.

Final-State Distribution Systematics

Ro-vibrational and electronic excited states in tritium decay affect β energy spectrum shape.
Evaluated via variations in theoretical models; impact found to be negligible for sterile neutrino sensitivity.
Nominal final-state distribution models are sufficient for current analysis precision.

Statistical Validations and Wilks’ Theorem

Use Δχ² test statistic: (Delta chi^{2} = chi^{2}(H{0}) – chi^{2}(H{1})) for hypotheses testing.
Wilks’ theorem states Δχ² follows a chi-square distribution with degrees of freedom equal to the number of tested parameters (here 2).
Monte Carlo simulations (~1000 pseudo-experiments) validated Wilks’ theorem applicability for:

Null hypothesis (no sterile neutrinos).
Best-fit sterile neutrino parameters.

Empirical cumulative distribution functions match the theoretical chi-square distribution well.
Critical values (95% CL) match expected Δχ² ~5.99.
This enables use of Wilks’ theorem to efficiently set exclusion limits and confidence intervals without extensive simulations.

Results and Sensitivity

Individual campaigns provide exclusion regions in sterile neutrino parameter space; combined data sets improve limits significantly.
Exclusion contours from measured data mostly lie within expected sensitivity bands but show some deviations attributed to statistical fluctuations or systematic effects.
Sensitivity increases with more data and lower backgrounds, validating KATRIN’s approach for sterile neutrino searches.

If you want, I can help you generate:

Specific plots or interpret existing data
Mathematical expressions or code snippets related to likelihood or fit procedures
More detailed explanations of certain experimental or analysis components

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Tags: background noise mitigationdata collection campaignsdetector configuration analysisexperimental particle physicshigh-resolution spectrometryKATRIN experimentmagnetic shielding techniquesneutrino mass determinationstatistical validation methodssterile neutrinos searchtritium decay measurementβ-decay electron energy spectrum