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Published byMarlon Stripling Modified over 9 years ago
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Update on diffuse extraterrestrial neutrino flux search with 2000 AMANDA-II data Jessica Hodges, Gary Hill, Jodi Cooley This version of the presentation has been expanded to include work done after the meeting – where part of the nch problem was found to be related to no cross-talk cleaning in the cascade fit
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Review of previous work Jodi Cooley’s thesis work – presented Mons October 2003 Basic quality cuts 2-D cut against coincident muons 2-D cut against nch>50 and positive smoothness – likelihood ratio track/shower vs ldirc 2-D on cogz versus l.r. track/shower model rejection potential optimised on nch
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Review of previous work Cuts developed on 50% of data After nch>80 cut – 6 events on atmospheric background of 3.3 Second 50% of data yielded 4 events Combined 100% data nch>87 – 9 events on atmospheric background of 4.5 One event believed to be a coincident muon What does this excess mean?
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New developments Reinvestigation of coincident muons using new dcorsika simulations Discovery that the nch>50, positive smoothness cut isn’t justified (which was suggested by others earlier!) Very recently started checking things with second 50% data, but only for nch less than 80 (less than where the cut would be)
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The 50<nch<80, positive smoothness problem Jodi noticed a bump in the nch distribtion above 50 channels
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The 50<nch<80, positive smoothness problem nch>50, big excess at positive smoothness
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The 50<nch<80, positive smoothness problem nch>50, big excess at positive smoothness
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First half of data set ldirc versus l.r. track/shower
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First half of data set ldirc versus l.r. track/shower
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Second half of data set ldirc versus l.r. track/shower
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Second half of data set ldirc versus l.r. track/shower
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Summary of the 50<nch<80, positive smoothness problem Expect 14.1 atmospheric neutrinos First half data – 35 events Second half data – 15 events After cut – expect 8.2 atmos First half data – 9 events Second half data – 7 events
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Summary of the 50<nch<80, positive smoothness problem DataAtmospheric neutrinos TotalPassFailTotalPassFail 1.3592614.18.25.9 2.157814.18.25.9 F.50163428.216.411.8
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Summary of the 50<nch<80, positive smoothness problem DataAtmospheric neutrinos TotalPassFailTotalPassFail 1.3592614.18.25.9 2.157814.18.25.9 F.50163428.216.411.8
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Summary of the 50<nch<80, positive smoothness problem 26 events on 5.9 is quite a fluctuation 34 events on 10.8 is as well…. ….even accounting for all the plots I’ve looked at in my life
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Second half nch plot
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First half nch plot
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Full year nch plot Still a bump in the full year
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Full year smoothness plot Still an excess at positive smoothness
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Examine the 34 events Look at distributions, both 1 and 2 dimensional See if any of the events lie in “bad” corners of the cut space – indicative of background
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line fit velocity Excess at slow velocities
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smoothness, ndirc Excess at largest smoothness Excess at largest ndirc!
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likelihood ratios, up/down, track/shower Maybe trend to lower ratios Tendency to lower ratios as seen already
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ldirc, ldirb Nothing obviously bad
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Cosine zenith, nch Maybe less vertical than expected Higher nch as observed already
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Distributions of the 34 events Looks ok
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Distributions of the 34 events Maybe a pileup toward low speed and high smoothness
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Distributions of the 34 events No obvious disagreement
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My conclusions about nch>50, positive smoothness Some of the 34 events are some kind of unsimulated background, some are good track events The difference between the two data halves is certainly a fluctuation on these underlying distributions Hard to imagine a periodic signal that just happens to coincide with our data separation by file numbers
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My conclusions about nch>50, positive smoothness Some of these events are very nice tracks with long direct lengths Eliminate the original cut – maybe look at cutting on line fit velocity vs smoothness Tighten other cuts Good events will survive to higher levels Bad events will get eliminated elsewhere See what happens in subsequent years
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Passing rates with tightened cuts Start with cuts just described Tighten gradually until events disappear Examine passing rates of data and simulation
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Passing rates with tightened cuts l.r. up to zenith-weighted downgoing fit - jkchi(12)-jkchi(11) = 35 - 53 ldirb(11) = 10 - 28 ndirc(11) = 155 - 200 | smootallphit(11) | = 0.275 - 0.05 10 cut sets defined (40 - 49)
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First half data vs cut level
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Second half data vs cut level
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Total data vs cut level
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Limit setting potential versus cut level E 2 (E) < 2.35 10 -7 GeV -1 cm -2 s -1 sr -1
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The cut against coincident muons Original cut: slope 18 New cut: slope 4
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The cut against coincident muons Original cut: slope 18 MRF : 0.2348
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The cut against coincident muons New cut: slope 4 MRF : 0.2379
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Outlook for the 2000 diffuse analysis Some sort of weird effect was seen in the 1 st 50%, but not in the 2 nd Eliminate the problematic cut Tighten cut against coincident muons
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Explanation of one part of the nch>50, positive smoothness problem Clue (Doug Cowen) – cascade fit is very sensitive to noise hits If the Monte Carlo and data have slightly different noise, then a cascade fit comparison might not make sense
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The cascade fit was performed before the cross talk filter was applied! Cascade fits on data have been done with all the cross talk present Monte Carlo contains no cross talk Likelihood ratios based on different hit selections make no sense
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track/shower l.r. before nch>50 cut Dramatic improvement in the agreement of this variable!
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Bump in nch, correlates with excess at positive smoothness
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track/shower l.r., ldirc vs t/s l.r. for nch>50, positive smoothness
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Same plots, with consistent cross talk cleaning
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Data and simulation now agree! (in shape)
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Where they did not before
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Place a new cut – data and atmos neutrinos are now both split about 50:50 about this cut
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Place a different cut – excess now shows up in corner, but that’s where the E -2 is more prevalent…
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Examine the 22 events in the corner
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Scanning of the events inside the green circle reveals some indication of residual cross talk – a classic “string 9/10 event”
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New conclusions Once the cascade fit is correctly performed using the cross talk filtering selection, the excess of events at nch>50 and positive smoothness moves to the low l.r. / low ldirc corner of the 2D plot - which could be indicative of background However, this is the region where the E -2 signal prediction is expected to cluster We cannot cut this region away!
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