39
Foreground subtraction or foreground avoidance? Adrian Liu, UC Berkeley

Foreground subtraction or foreground avoidance?

  • Upload
    iram

  • View
    45

  • Download
    0

Embed Size (px)

DESCRIPTION

Foreground subtraction or foreground avoidance?. Adrian Liu, UC Berkeley. Vision. The redshifted 21cm line is possibly our only direct probe of reionization and the dark ages. 21cmFAST, Mesinger et al. Current power spectrum limits from experiments like PAPER…. - PowerPoint PPT Presentation

Citation preview

Page 1: Foreground subtraction or foreground avoidance?

Foreground subtraction or foreground avoidance?

Adrian Liu, UC Berkeley

Page 2: Foreground subtraction or foreground avoidance?

Vision

Page 3: Foreground subtraction or foreground avoidance?

The redshifted 21cm line is possibly our only direct

probe of reionization and the dark ages

21cm

FAST

, Mes

inge

r et

al.

Page 4: Foreground subtraction or foreground avoidance?

Current power

spectrum limits from

experiments like PAPER…

Parsons, AL et al. 2013, 1304.4991

Page 5: Foreground subtraction or foreground avoidance?

…are sensitivity/integration time

limited at high k…

Parsons, AL et al. 2013, 1304.4991

Page 6: Foreground subtraction or foreground avoidance?

…are likely limited by foreground

contamination at low k.

Parsons, AL et al. 2013, 1304.4991

Page 7: Foreground subtraction or foreground avoidance?

Foreground contamination is serious

Foregrounds ~ O(100 K); Signal ~ O(1-10 mK)

Page 8: Foreground subtraction or foreground avoidance?

Cosmic Microwave Background

21cm Tomography

(See AL, Pritchard, Tegmark, Loeb 2013 PRD 87, 043002 for more details)

Page 9: Foreground subtraction or foreground avoidance?

Parsons, AL et al. 2013, 1304.4991

Foreground subtraction• Work at low k.• Instrumental noise

low.• Foreground

modeling requirements extreme.

Page 10: Foreground subtraction or foreground avoidance?

Parsons, AL et al. 2013, 1304.4991

Foreground avoidance• Work at high k.• Instrumental noise

high.• Foreground

modeling requirements easier.

Page 11: Foreground subtraction or foreground avoidance?

Foreground subtraction or foreground avoidance?

Page 12: Foreground subtraction or foreground avoidance?

Take-home messages• A robust framework for the

quantification of errors is essential for a detection of the power spectrum.

• “Optimal” methods may be overly aggressive and susceptible to mis-modeling of foregrounds.

• Assuming that foregrounds are Gaussian-distributed may lead to an underestimation of errors.

• Foreground avoidance may be a more robust way forward.

Page 13: Foreground subtraction or foreground avoidance?

Necessary ingredients for successful foreground mitigation

Page 14: Foreground subtraction or foreground avoidance?

Ingredients for foreground mitigation

1. A power spectrum estimation framework that fully propagates error covariances.

Data

Foreground model

Model uncertai

nty

Fourier, binning

Bias removal

Page 15: Foreground subtraction or foreground avoidance?

10-

110-

2

10-

1

100

101

100

10-

50

10-

100AL 2013, in prep.

Page 16: Foreground subtraction or foreground avoidance?

10-

110-

2

10-

1

100

101

100

10-

50

10-

100AL 2013, in prep.

Page 17: Foreground subtraction or foreground avoidance?

10-

110-

2

10-

1

100

101

100

10-

50

10-

100AL 2013, in prep.

Page 18: Foreground subtraction or foreground avoidance?

Ingredients for foreground mitigation

1. A power spectrum estimation framework that fully propagates error covariances.• Window functions.• Covariant errors.

Page 19: Foreground subtraction or foreground avoidance?

Along constant k-tracks, error properties differ

k~0.1

hMpc-1

k~0.4 hMpc-

1

k~3

hMpc-1

Page 20: Foreground subtraction or foreground avoidance?

Ignoring error correlations can yield larger error bars or

mistaken detectionsR

elat

ive

erro

r ba

r in

crea

se

10-

110-

2 k [Mpc-1]100

101

-20%

0%20%

40%60%

80%

Dillon, AL, Williams et al. 2013, 1304.4229

Page 21: Foreground subtraction or foreground avoidance?

Ingredients for foreground mitigation

1. A power spectrum estimation framework that fully propagates error covariances.• Window functions.• Covariant errors.

Page 22: Foreground subtraction or foreground avoidance?

1. A power spectrum estimation framework that fully propagates error covariances.• Window functions.• Covariant errors.

2. A good foreground model including error covariances (see, e.g., Trott et al. 2012, ApJ 757, 101).

Ingredients for foreground mitigation

Foreground model

Model uncertai

nty

Page 23: Foreground subtraction or foreground avoidance?

1. A power spectrum estimation framework that fully propagates error covariances.• Window functions.• Covariant errors.

2. A good foreground model including error covariances (see, e.g., Trott et al. 2012, ApJ 757, 101).

3. A method for propagating foreground properties through instrumental effects (e.g. chromatic beams).

Ingredients for foreground mitigation

Page 24: Foreground subtraction or foreground avoidance?

10-

110-

2

10-

1

100

101

100

10-

50

10-

100AL 2013, in prep.

Page 25: Foreground subtraction or foreground avoidance?

Ingredients for foreground mitigation

1. A power spectrum estimation framework that fully propagates error covariances.• Window functions.• Covariant errors.

2. A good foreground model including error covariances (see, e.g., Trott et al. 2012, ApJ 757, 101).

3. A method for propagating foreground properties through instrumental effects (e.g. chromatic beams).

Page 26: Foreground subtraction or foreground avoidance?

Foreground subtraction or foreground avoidance?

Page 27: Foreground subtraction or foreground avoidance?

Subtraction

Avoidance

Projection matrix, e.g.

delay transform

Page 28: Foreground subtraction or foreground avoidance?

10-

110-

2

10-

1

102.

5

100

AL 2013, in prep.

101

Error(avoid)

Error(sub)10

0

Page 29: Foreground subtraction or foreground avoidance?

10-

110-

2

10-

1

100

102.

5

100

AL 2013, in prep.

101

Error(avoid)

Error(sub)

Page 30: Foreground subtraction or foreground avoidance?

AL 2013, in prep.

Subtraction

Avoidance

Page 31: Foreground subtraction or foreground avoidance?

Leakage from mismodeled foregrounds more extended for subtraction than for avoidance

10-

1

10-

1

100

101

10-

50

10-

100AL 2013, in prep.

100Avoidanc

e

10-

2

Page 32: Foreground subtraction or foreground avoidance?

Leakage from mismodeled foregrounds more extended for subtraction than for avoidance

10-

1

10-

1

100

101

AL 2013, in prep.

Subtraction

10-

50

10-

100

100

10-

2

Page 33: Foreground subtraction or foreground avoidance?

Non-Gaussianity?

Page 34: Foreground subtraction or foreground avoidance?

Foregrounds are highly non-Gaussian

de Oliveira-Costa 2008, MNRAS 388,

247

T

Log[

p(T

)]

Histogram

Page 35: Foreground subtraction or foreground avoidance?

AL 2013, in prep.

0 1000

2000

10-

8

10-

6

10-

4

10-

2

T [K]

p(T)

Gaussian

Log-norm

Page 36: Foreground subtraction or foreground avoidance?

Assuming Gaussianity doesn’t bias the estimator

Pick b to ensure cancellation

Page 37: Foreground subtraction or foreground avoidance?

Assuming Gaussianity causes the error to be

underestimated

Page 38: Foreground subtraction or foreground avoidance?

Assuming Gaussianity causes the error to be

underestimated

Page 39: Foreground subtraction or foreground avoidance?

Take-home messages• A robust framework for the

quantification of errors is essential for a detection of the power spectrum.

• “Optimal” methods may be overly aggressive and susceptible to mis-modeling of foregrounds.

• Assuming that foregrounds are Gaussian-distributed may lead to an underestimation of errors.

• Foreground avoidance may be a more robust way forward.