2020MNRAS.491.5301S


Query : 2020MNRAS.491.5301S

2020MNRAS.491.5301S - Mon. Not. R. Astron. Soc., 491, 5301-5316 (2020/February-1)

Weak lensing shear estimation beyond the shape-noise limit: a machine learning approach.

SPRINGER O.M., OFEK E.O., WEISS Y. and MERTEN J.

Abstract (from CDS):

Weak lensing shear estimation typically results in per galaxy statistical errors significantly larger than the sought after gravitational signal of only a few per cent. These statistical errors are mostly a result of shape noise - an estimation error due to the diverse (and a priori unknown) morphology of individual background galaxies. These errors are inversely proportional to the limiting angular resolution at which localized objects, such as galaxy clusters, can be probed with weak lensing shear. In this work, we report on our initial attempt to reduce statistical errors in weak lensing shear estimation using a machine learning approach - training a multilayered convolutional neural network to directly estimate the shear given an observed background galaxy image. We train, calibrate, and evaluate the performance and stability of our estimator using simulated galaxy images designed to mimic the distribution of HST observations of lensed background sources in the CLASH galaxy cluster survey. Using the trained estimator, we produce weak lensing shear maps of the cores of 20 galaxy clusters in the CLASH survey, demonstrating an rms scatter reduced by approximately 26 per cent when compared to maps produced with a commonly used shape estimator. This is equivalent to a survey speed enhancement of approximately 60 per cent. However, given the non-transparent nature of the machine learning approach, this result requires further testing and validation. We provide PYTHON code to train and test this estimator on both simulated and real galaxy cluster observations. We also provide updated weak lensing catalogues for the 20 CLASH galaxy clusters studied.

Abstract Copyright: © 2019 The Author(s) Published by Oxford University Press on behalf of the Royal Astronomical Society

Journal keyword(s): gravitational lensing: weak - methods: statistical - galaxies: clusters: general

Simbad objects: 25

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Number of rows : 25
N Identifier Otype ICRS (J2000)
RA
ICRS (J2000)
DEC
Mag U Mag B Mag V Mag R Mag I Sp type #ref
1850 - 2024
#notes
1 ACO 209 ClG 01 31 52.9 -13 36 53           ~ 295 0
2 ACO 383 ClG 02 48 03.3915 -03 31 45.228           ~ 359 0
3 ClG J0329-0212 ClG 03 29 41.6 -02 11 47           ~ 142 0
4 MCS J0416.1-2403 ClG 04 16 08.380 -24 04 20.80           ~ 336 0
5 ClG J0429-0253 ClG 04 29 36.0 -02 53 09           ~ 123 0
6 ClG J0647+7015 ClG 06 47 50.0 +70 14 55           ~ 153 0
7 ClG J0717+3745 ClG 07 17 36.50 +37 45 23.0           ~ 463 0
8 ClG J0744+3927 ClG 07 44 52.5 +39 27 30           ~ 181 0
9 ACO 611 ClG 08 00 58.7 +36 02 49           ~ 258 0
10 MCS J1115.8+0129 ClG 11 15 52.1 +01 29 53           ~ 131 0
11 MCS J1149.5+2223 ClG 11 49 35.8 +22 23 55           ~ 460 0
12 ACO 1423 ClG 11 57 17.3206 +33 36 39.364           ~ 168 0
13 MCS J1206.2-0847 ClG 12 06 12.2 -08 48 02           ~ 246 0
14 ClG J1226+3332 ClG 12 26 57.7 +33 32 50           ~ 215 0
15 ClG J1311-0311 ClG 13 11 01.7 -03 10 38           ~ 109 0
16 ClG J1347-1145 ClG 13 47 30.5 -11 45 07           ~ 548 0
17 ClG J1423+2404 ClG 14 23 47.7 +24 04 40           ~ 209 0
18 LEDA 1900245 Bla 15 32 53.780 +30 20 59.41   19.1   15.7 17.819 ~ 145 0
19 ClG J1720+3536 ClG 17 20 16.8 +35 36 27           ~ 141 1
20 ACO 2261 ClG 17 22 26.9 +32 07 58           ~ 342 0
21 ClG J1931-2635 ClG 19 31 49.6 -26 34 33           ~ 161 0
22 ClG J2129-0741 ClG 21 29 26.0 -07 41 28           ~ 172 0
23 ClG J2129+0005 ClG 21 29 40.5 +00 05 47           ~ 271 0
24 ClG 2137-2353 ClG 21 40 12.8 -23 39 27     18.5     ~ 378 0
25 ACO S 1063 ClG 22 48 45.4 -44 31 42           ~ 320 0

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