yousuke itoh aei @ gwdaw8 uw milwaukee usa 17-20 december 2003 a large value of the detection...

12
Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 •A large value of the detection statistic indicates a candidate signal at the frequency and the sky position . •E.g., ~100 outliers of F(f) found in 100-500 Hz. •True signals produce characteristic line shapes in F=F(f). • Use the F(f) shape information to veto the outliers. Chi-square test on candidate events from CW signals coherent searches (Y. Itoh, M.A.Papa,B.Krishnan-AEI, X. Siemens –UWM ) , ( s k l f F } , { s l Left figure: Outlier example •Blue line: F(f) computed from LHO 10 h S2 real data targeting at . •Red line: Reconstructed veto signal based on the maximum likelihood estimates of the signal 0 , 0 k f

Upload: maximilian-hill

Post on 17-Jan-2016

222 views

Category:

Documents


0 download

TRANSCRIPT

Page 1: Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 A large value of the detection statistic indicates a candidate signal at the frequency and

Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003

•A large value of the detection statistic indicates a candidate signal at the frequency and the sky position .•E.g., ~100 outliers of F(f) found in 100-500 Hz.•True signals produce characteristic line shapes in F=F(f).• Use the F(f) shape information to veto the outliers.

Chi-square test on candidate events from CW signals coherent searches

(Y. Itoh, M.A.Papa,B.Krishnan-AEI, X. Siemens –UWM

),( sk lfF

},{ sl

Left figure: Outlier example

•Blue line: F(f) computed from LHO 10 h S2 real data targeting at .

•Red line: Reconstructed veto signal based on the maximum likelihood estimates of the signal parameters.

0,0

kf

Page 2: Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 A large value of the detection statistic indicates a candidate signal at the frequency and

Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003

•If the data=random Gaussian noise (r.g.n)

( distribution)

•If data=r.g.n + signal

(Non-cent. with Non-cent. param.= SNR)

•Hypothesis: data=rand. Gaussian noise + signal

becomes the χ^2 dist. if our reconstruction of the signal is good!

Basic Idea(1)Basic Idea(1)

)()( kk fnfx

),,()()( sskkk lpfsfnfx

)(2 kfFThe detection statistic: Jaranowski et al. Phys.Rev.D58:063001,1998

))(;(2 kk fxfF

))(;(2 kk fxfF

))(;(2 kk fyfF),,()()( sskkk lpfsfxfy

24

}{

2 ))(;(2outlierk kkdof fyfF

24

Page 3: Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 A large value of the detection statistic indicates a candidate signal at the frequency and

Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003

Basic Idea (2)Basic Idea (2)

• Use the maximum likelihood estimates of the signal parameters.

instead of unknown

•Use the targeting sky position

instead of unknown signal sky position

•If the veto statistic is extremely large, we veto out the outlier.

•Need to be careful

SNR dependent threshold on the veto statistic.

(Cf. TAMA inspiral upper limit report)

},,cos,{ 00 ss sshps MLEp

tl

},{ sssl

|)|(),,(),,( pSNROlpfslpfs tMLEss

Page 4: Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 A large value of the detection statistic indicates a candidate signal at the frequency and

Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003

Safety testSafety test

False dismissal

Procedure

•Inject ~ 10^6 fake signals with randomly chosen signal params and signal sky positions into 10 h Gaussian stationary noise.

•Compute (~SNR) and the veto statistic for each outlier. Targeting sky position satisfies

dofdof /2

F2

The red line gives 0 % false dismissal for this experiment.

Page 5: Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 A large value of the detection statistic indicates a candidate signal at the frequency and

Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003

Efficiency testEfficiency test

False alarm

Procedure

•Inject ~ 10^6 damped line noises with randomly chosen params into 10 h Gaussian stationary noise.

•Compute (~SNR) and the veto statistic for each outlier. Targeting sky position satisfies

dofdof /2

F2

The red line gives 8 % false alarm for this experiment.

Page 6: Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 A large value of the detection statistic indicates a candidate signal at the frequency and

Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003

Application to Real dataApplication to Real data

Procedure

•Apply the veto method on 10 h LHO4K S2 real data starting from GPS time 731210229.

•Compute (~SNR) and the veto statistic for each outlier.

•1200 targeting sky positions are randomly chosen.

•Frequency band is 100-500 Hz.

dofdof /2F2

The red line vetos 69 % of the outliers found in this data.

Some of the “Arms” are due to lines with particular freqs.

465.7 Hz line

16 Hz multiples

Page 7: Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 A large value of the detection statistic indicates a candidate signal at the frequency and

Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003

Application to Real dataApplication to Real dataWith the line noise table provided by

R. Berkowitz, M. Landry, D. Ottaway, R. Schofield

465.7 Hz line

16 Hz multiples

Experimentalists veto out some of the arms most efficiently!

The red line now vetos 75 % of the outliers found in this data.

Procedure (yet to be examined!)

•Remove 16 Hz multiples (+-1Hz).

•Remove the measured lines between 344-350 Hz.

Page 8: Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 A large value of the detection statistic indicates a candidate signal at the frequency and

Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003

Remarks and ConclusionRemarks and Conclusion

•Our veto method is rather efficient: Even with rough parameters tuning, it is demonstrated for some real data that adopting some threshold on our veto statistic, ~ 69 % of the outliers can be vetoed out. Safety test shows that the same threshold on the veto statistic gives effectively 0% (modulo sample variance) false dismissal rate.

•We have performed the safety and efficiency tests on the real data and obtained similar results.

•There are still outliers that we might keep. While studying parameters tuning and making the method more efficient, we study other veto methods and use combinations of various veto methods.

Page 9: Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 A large value of the detection statistic indicates a candidate signal at the frequency and

Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003

Veto the outliers in FDSVeto the outliers in FDS

Other possible veto strategies not yet studied.

(a) Coincidence among other channels:

F stat. outliers characteristic line noises of the instruments. Coincidence analysis among h(t) and other channels. Needs Veto channels selection.

(b) Follow up:

If true signal, the amplitude of F stat. varies w.r.t. time in a predictable maner (= Doppler amp./phase mod. etc.). Search the signal in the other IFOs, time periods, etc.

(c) Coincidence among the IFOs.

Consistency check on the MLEs of the strain that the IFOs give us.

Page 10: Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 A large value of the detection statistic indicates a candidate signal at the frequency and

Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003

465.7 Hz line465.7 Hz lineTuning the Veto method

Left figure: 465.7 Hz line in F(f)

•Blue line: F(f) computed from LHO 10 h S2 real data targeting at .

•Red line: Reconstructed veto signal based on the maximum likelihood estimates of the signal parameters.

0,0

Method and parameter tuning are being studied.

Page 11: Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 A large value of the detection statistic indicates a candidate signal at the frequency and

Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003

HistogramHistogram

Convergence of the probability at given SNR

Normalized histogram as a function of the veto statistic for some selected ranges of SNR.

Safety test Efficiency test

Pdf is well estimated. Sample size in each class is ~ 10^4-5.

Page 12: Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003 A large value of the detection statistic indicates a candidate signal at the frequency and

Yousuke Itoh AEI @ GWDAW8 UW Milwaukee USA 17-20 December 2003

Signal ParametersSignal Parameters

Maximum Likelihood Estimates of the Signal Parameters.

Signal parameters are well estimated.

Left figure: Goodness of the estimates

•Goodness of the Maximum likelihood estimates of the four amplitudes.

•Injected signals are the same as those in the safety test. Thus, ~10^6 fake signals injected into 10 h stationary Gaussian random noise.