various rupak mahapatra (for angela, joel, mike & jeff) timing cuts

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Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timin g Cut s

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General Idea Nuclear Recoil Band based on Yield Recoil Energy (keV) Z2/Z3/Z5 20 keV 10-40% Z Reduced ionization collection and fast rise time

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Page 1: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

Various

Rupak Mahapatra(for Angela, Joel, Mike & Jeff)

Timing Cuts

Page 2: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

Different Timing Cuts

• 2-D pminrtc & pdelc: Angela• 2-D pfracc & pdelc: Rupak/Joel• 4-D 2 pfracc, pminrtc, pdelc & y: Rupak/Joel• 2-D Neural Net pfracc & pdelc: Mike A• Technique presentation (2 ): Jeff

Page 3: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

General IdeaNuclear Recoil Band based on Yield

Recoil Energy (keV)0 10 20 30 40 50 60 70 80 90 100

1.5

1.0

0.5

0.0

Z2/Z3/Z5

20 keV10-40%

Z

Reduced ionization collection and fast rise time

Page 4: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

The Discriminators: Use Combination• Yield = Ionization Energy/ Phonon Recoil Energy

• Surface recoils tend to have lower ionization, mix with NR

• Pfracc = Highest_Phonon_Energy/Opposite_Phonon_Energy

•Surface recoils on phonon side tend to have higher energy partition due to proximity to phonon sensors

• pminrtc = 10%-40% risetime of the largest phonon signal

•Surface recoils tend to have lower risetime than bulk recoils

• pdelc = 20% delay of largest phonon signal wrt to charge st.

•Surface recoils tend to have lower delay than bulk recoils

All discriminators are correlated to some degreeAll discriminators have energy dependence to some degree

Page 5: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

Definition of Surface Recoils()• Low Yield events from Ba• R118: reject in 3 NR• R119: Use wider definition

: 0.1 < yic < - 5• More stats for cut defn.• Establish timing cut to

reject all but “n” wide s• Estimate closed leakage

based on allowed leakages in open dataset

Page 6: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

QuickTime™ and aTIFF (LZW) decompressor

are needed to see this picture.

2-D cut in pminrtc and pdelc: Angela

•Define delpric and rtpric: energy corrected pdelc and pminrtc •For events between 10 and 100keV in pric, plot pdelc and pminrtc neutrons and betas.•Fit delpric-rtpric distributions for neutrons with gaussian, exclude all events (betas) outside 4 sigma of this distribution.•Define a cut in delpric+rtpric that allows desired beta leakage (set on the sixth event in each detector for this analysis.

Page 7: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

Issues associated with timing cutsT2Z5 charge collection: Walter did a study of the timing outliers in T2Z5, which are all clustered at the bottom of the delay plot. He defined several cuts to exclude the affected region. In this analysis, the cut used is a simple ydel>-20 cut.

T1Z1has low efficiency as usual

Page 8: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

QuickTime™ and aTIFF (LZW) decompressor

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Results

•Allowed 5 events of leakage in each detector for an exected leakage of 6 events/detector*6Ge detectors =36 betas.•In the WIMP search data, the leakage from these cuts is expected to be on the order of a fraction of an event overall.•Neutron efficiencies for these cuts are around 75% in the higher energy bins and worse at low energies.

N Eff 10-20keV 20-40keV 40-60 keV60-100 keVT1Z1 9.3 30.4 60 51.43T1Z2 45.86 64.73 96.36 70.27T1Z3 48.77 59.38 65.96 77.27T1Z5 56.42 72.27 75 83.33T2Z3 51.61 65.64 73.08 74.07T2Z5 52.56 66.27 83.72 76.19

Leakage by E bin

Page 9: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

Low energies and timing

QuickTime™ and aTIFF (LZW) decompressor

are needed to see this picture.

Below 7keV, Long found uncertainty in charge energy, causing leakage from ER toNRBelow 15keV, uncertainty in Qist that affects pdelc. Mostly does not affect the timing cut Below 10keV, ER and NR bands not well separated, hence difficult to define populationBelow 20keV, timing cut efficiency is low ~ around 20% Further work needed to determine where to set our analysis threshold. Probably it should be above 7keV.

QuickTime™ and aTIFF (LZW) decompressor

are needed to see this picture.

Page 10: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

2-D pfracc & pdelc: Rupak/Joel •Reject all in 3 NR

•Found 9 extreme outliers. 3 rejected in T2Z5 by Walter’s cut

•Discovered that flash time cut may be helpful

•Flashtime RQ broken. Joel defined a function that utilizes DAQ gpib log to get flashtime

•Efficiency ~ 70-80% w 6 leakages in open Ba

Page 11: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

4-D y,pfracc,pminrtc, pdelc: Rupak/Joel• Similar to Vuk’s rb-rn

method, normalized to 1• Define 4-D space in y,

pfracc, pminrtc & pdelc• Calculate neutron and

centroids from 3 NR• In 4-D space, calculate

dist. of each event from neutron (rn) and (rb)

• Define cut to reject all • Efficiency ~ 70-80% w 1

leakage in open Ba

Page 12: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

4-D Cut with 2: Rupak/Joel

• Earlier 4-D cut assumes each discriminator has equal power in discr.

• Assign natural weights to each discriminators based on their accuracy in discrimination

• Calculate combined 2 distance for each event from neutron and

• Efficiency > 80% with 1 leakage in open Ba with WIDE distribution

Page 13: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

R119 pfracc & pdelc Timing Cuts using a Neural Network

M. Attisha

• Can create cuts that would be v. tough to parametize by hand

• Easy to experiment with a range of input (RQ) parameters

• Cut must be chosen based on performance upon simulation data

Training Data = Ba open + Cf (even Event#)Simulation Data = Ba closed + Cf (odd Event#)

• Trained on all betas & neutrons within the 3σ NR band

• The cut is calculated in each ZIP for a single energy bin (pric): 10-100 keV

Page 14: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

• ~90% rejection below 60keV pric

• Reduced efficiency at higher energies due to low neutron stats

• 6 beta leakage events remain in Z2, Z3, Z5, Z9 & Z11

• Current rejection performed using pdelc and pfracc

• Naïve addition of other parameters such as pminrtc gives little improvement, but plan to study effect of weighting inputs

R119 Timing Cuts using a Neural Network, cont.

M. Attisha

Page 15: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

Chi-squared Methods: Jeff

• Our pulse shape and timing parameters show differing discrimination powers and significant correlations– We’d like to figure out the appropriate “metric” on this multi-dimensonal

parameter space.• In the case of gaussian parameters, the optimal metric is provided by the

inverse of the covariance matrix

• Basic Plan:– Preselect samples of neutrons and betas (and perhaps gammas), calculate

mean, cov for each population– Compute

– Make a 1-D cut in

– Reject outliers with large chi-squareds

jijiij xxxx cov

...pdelc

pminrtc where),(cov)( ,

1,,

2, xxx nbnb

Tnbnb

22bn

Page 16: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

Chi-Squared Methods

• Do we include yield?– Most rejection power, but

betas clearly non-gaussian

– For now, separate band cut

• Energy dependence– Work in energy bins at

first– Use energy variations in

computed mu, sigma to define energy corrections

– Perform energy-independent cut (or fewer bins, at least)

Page 17: Various Rupak Mahapatra (for Angela, Joel, Mike & Jeff) Timing Cuts

Status and Plans

• Standard 2-D timing cut looks polished• 4-D timing cut needs refinement to take full

advantage of correlations for better rejection• Not clear whether to include the best discriminator y

in likelihood. Excluding gives easier leakage estimate• Neural Net analysis looks promising• Important to fully exploit all discrimination

parameters provided by our tremendous detectors• Timing cut group needs to formulate an action plan