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Search for periodic sources C. Palomba. Signal duration much larger than typical observation time. Possibility to reduce the false alarm probability to negligible values. Signal often (but not always) predictable and depending on the kind of source
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Search for periodic sources C. Palomba • Signal duration much larger than typical observation time Possibility to reduce the false alarm probability to negligible values • Signal often (but not always) predictable and • depending on the kind of source • depending on a (large) number of (poorly known) parameters
Different approach in the analysis depending if we know the source parameters (targeted search) or not (blind search) • Blind searches are computationally bound • Different kinds of periodic sources can be considered: • isolated NS • NS in binary systems • accreting NS (r-modes excitation) • We will focuse attention on the first type and discuss what changes in the other cases
Signal characterization - 1 • Doppler frequency modulation, due to the detector motion and to the source motion
Spin-down or spin-up • Intrinsic frequency modulation, due to a companion, an accretion disk or a wobble • Amplitude modulation, due to the detector radiation pattern and possibly to intrinsic effects (e.g. wobble) • Glitches
Signal at the detector detector beam pattern function wave polarizations phase evolution amplitudes
Data characterization • Stationarity • Gaussianity • Impulsive noise • Holes in the data • Correct data timing
Detection of periodic signals • If we had a monochromatic signal, the most natural strategy would be that of looking for significant peaks in the spectrum of data • Due to the frequency modulation and spin-down the signal power is spread in a large number of frequency bins • If the signal frequency evolution is known we can correct for the modulation (targeted search) • Otherwise we need to perform a ‘rough’ search, select some candidates and refine the analysis on them (blind search -> hierarchical methods)
Targeted vs blind searches • Targeted: • possibility to apply optimal methods • computationally not expensive • upper limits • Blind: • oriented to detection • computationally expensive • non optimal methods
Targeted search for isolated NS - 1 • Assume sky position, emission frequency and spin-down are known • Amplitude, source inclination, polarization angle, initial phase typically are unknown • Allow to use optimal DA methods • Nominal sensitivity • For f.a.p=0.01 and f.d.p.=.1 the sensitivity, averaging over source position and inclination and wave polarization, is
Targeted search for isolated NS - 2 • Time-domain methods • Re-sampling procedure: use a sampling frequency proportional to the varying received frequency
Targeted search for isolated NS - 3 • Heterodyning procedure (Abbott et al., PRL94 181103, 2005): multiply the signal by • Allow to take into account complex phase evolution, e.g. using data from radio telescopes, in a straightforward way • Frequency domain methods • F-statistics (Jaranowski et al., PRD58 063001, 1998; Abbott et al. PRD69 082004, 2004) : based on the maximization of the likelihood function
Targeted search for isolated NS - 4 • Can be used as coherent step in a hierarchical procedure • Analytical signal (Astone et al., PRD65 022001, 2001) : start from a set of short FFTs, compute the analytical signal, correct for the frequency variations, compute the new spectrum • Can be used as coherent step in a hierarchical procedure
Blind search - 1 • Assume source position, frequency and spin-down are not known (or only loosely constrained) • Cannot be performed with optimal methods due to the huge number of points in the source parameter space Unreachable computing power
Blind search - 2 • Hierarchical methods have been developed which strongly reduce the needed computing power at the price of a small sensitivity loss (Rome, Potsdam…) • Typically based on alternation between coherent steps and incoherent ones. • Two kinds of incoherent steps are popular: • stack-slide (Radon transform) • Hough transform • Both methods start from a collection of ‘short’ FFTs: their length is such that a signal would be confined within a frequency bin
Radon transform • Compute periodograms from short FFTs • Shift (slide) periodograms according to the frequency evolution f t 3. Sum (stack) the periodograms
Hough transform - 1 • Parameter estimator of patterns in digital images • Developed in the ’60 by P. Hough to analyze particle tracks in bubble chamber images • Example: find parameters of a straight line y=mx+q y q (xi, yi) q=yi-mxi x m
Frequency Time Hough transform - 2 • In our case the HT connects the time-frequency plane to the source parameter space • On the periodograms select peaks above a threshold
Hough transform - 3 • For each point in the peak-map we have a circle in the sky
Hough transform - 5 • Slightly less sensitive than Radon (~12% in amplitude) Hough vs. Radon Sensitivity ratio Threshold for peak selection • More robust against non-stationarities and disturbances • Computing power reduced by ~10
Hierarchicalmethodoutline h-reconstructed data SFDB SFDB peak map peak map hough transf. hough transf. candidates coincidences candidates coherent step events
Short FFT database - 1 • Time domain disturbances • identification of events through an adaptive threshold (on the CR); • background estimated from the AR mean of the absolute value and square of the samples; • events removal. (Astone et al., CQG22, S1197)
Short FFT database - 2 • Construction of the short FFT database • Maximum length • 4 SFDB for frequency bands [0,31.25Hz], [31.25Hz,125Hz], [125Hz,500Hz], [500Hz,2kHz] • Estimation of the average spectrum • based on AR estimation; • used for peaks selection and in the Hough transform;
Peak map • Construction based on the ratio R between the spectrum and its AR estimation; • A threshold is set on R and all the local maxima above it are selected as peaks; • The threshold is chosen in order to maximize the CR on the Hough map (see next) • With thr=2.5 we have that ~1/12 of the frequency bins are selected
Hough transform • For each search frequency takes a Doppler band around it and compute the hough map for all the possible spin-down values • Adaptive hough transform for non-stationarities (Palomba et al., CQG22, S1255, 2005) • Computationally heaviest part of the hierarchical analysis • Efficient implementation needed • Use of computing grids
Hough statistics • In the case of pure noise the number count in a Hough map follows a binomial distribution N: total number of spectra h0(q): peak selection probability (depending on the threshold q) • In presence of a signal (e.g. Krishnan et al., PRD70, 082001)
The choice of the threshold is done maximizing the critical ratio CR: • The optimal choice would be • is still nearly optimal and reduce the prob. of peak selection to ~1/12 • We select candidates putting a threshold on the number count • The threshold is chosen on the basis of the maximum number of candidates we can manage (e.g. )
Sensitivity - 1 • Loss factor for nominal sensitivity • Nominal sensitivity • Number of points in the parameter space • The number of ‘basic’ hough operations (increasing by 1 the number count in a pixel) is
Sensitivity - 2 • The needed computing power is • where is the ‘number of equivalent floating point operations’ needed for pixel increase and the analysis time is assumed to be half of the observation time • Computing power of the order of 1Tflops needed for • Larger CP available, reduce the spin-down age
Sensitivity - 3 • To compute the ‘effective’ sensitivity loss of the hierarchical method we have to take into account candidate selection • For the optimal method, the loss due to the selection of 10^9 candidates is (exponential statistics) • The Hough number count distribution is binomial • Using the gaussian approximation, the threshold as a function of the number of selected candidates is
Sensitivity - 4 hough map mean value hough map std. dev. peak selection prob. in the peak map • The 10^9 sensitivity reduction factor is ~2.2-2.8 depending on the frequency band • The ‘effective’ loss respect to the optimal method is 2 – 4 depending on the freq. band
Pulsars in binary systems - 1 • Orbital parameters must be taken into account (up to 5) • Orbital Doppler shift may give more stringent limits to the maximum length of FFTs (from Dhurandhar & Vecchio, PRD63, 122001)
Pulsars in binary systems - 2 • Optimal methods can be applied only if the system parameters are known or the uncertainties are small • Otherwise, hierarchical non-optimal methods are needed
Accreting NS (e.g. LMXB) • Same parameters as in the previous case • The frequency will change randomly due to fluctuations in the rate of matter accretion • In LMXB a clustering of frequencies is observed, though the exact rotation frequency is not known • Possibility to apply coherent methods over short time period (few hours) (Vecchio, GWDAW10)
Summary of results • Coherent analysis • Explorer: 0.72Hz, 1 sd, all-sky, h90=1e-22 • LIGO S2: 28 isolated NS, h95>1.7e-24 • LIGO S2: Sco-X1, h95=2e-22 • Incoherent analysis: • LIGO S2: all-sky, 1 sd, 200-400Hz, h95=4.4e-23
Two thresholds enter into the game: peaks selection candidates selection • False dismissal probability