2017ApJ...851..149X


Query : 2017ApJ...851..149X

2017ApJ...851..149X - Astrophys. J., 851, 149-149 (2017/December-3)

Assessing the performance of a machine learning algorithm in identifying bubbles in dust emission.

XU D. and OFFNER S.S.R.

Abstract (from CDS):

Stellar feedback created by radiation and winds from massive stars plays a significant role in both physical and chemical evolution of molecular clouds. This energy and momentum leaves an identifiable signature ("bubbles") that affects the dynamics and structure of the cloud. Most bubble searches are performed "by eye," which is usually time-consuming, subjective, and difficult to calibrate. Automatic classifications based on machine learning make it possible to perform systematic, quantifiable, and repeatable searches for bubbles. We employ a previously developed machine learning algorithm, Brut, and quantitatively evaluate its performance in identifying bubbles using synthetic dust observations. We adopt magnetohydrodynamics simulations, which model stellar winds launching within turbulent molecular clouds, as an input to generate synthetic images. We use a publicly available three-dimensional dust continuum Monte Carlo radiative transfer code, HYPERION, to generate synthetic images of bubbles in three Spitzer bands (4.5, 8, and 24 µm). We designate half of our synthetic bubbles as a training set, which we use to train Brut along with citizen-science data from the Milky Way Project (MWP). We then assess Brut's accuracy using the remaining synthetic observations. We find that Brut's performance after retraining increases significantly, and it is able to identify yellow bubbles, which are likely associated with B-type stars. Brut continues to perform well on previously identified high-score bubbles, and over 10% of the MWP bubbles are reclassified as high-confidence bubbles, which were previously marginal or ambiguous detections in the MWP data. We also investigate the influence of the size of the training set, dust model, evolutionary stage, and background noise on bubble identification.

Abstract Copyright: © 2017. The American Astronomical Society. All rights reserved.

Journal keyword(s): ISM: bubbles - ISM: clouds - methods: data analysis - stars: formation - stars: formation

Simbad objects: 15

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Number of rows : 15
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 NAME Tau-Aur-Per Region reg 03 33 +31.0           ~ 40 0
2 NAME Perseus Cloud SFR 03 35.0 +31 13           ~ 1364 0
3 LDN 1468 DNe 03 40.1 +31 25           ~ 18 0
4 IRAS 03382+3145 MIR 03 41 20.94912 +31 54 50.8572           ~ 11 0
5 [ABG2011] CPS 6 bub 03 41 24.0 +31 54 10           ~ 2 1
6 * o Per * 03 42 22.6459308614 +33 57 54.093701142 4.13 4.912 4.972     B0.5V 299 0
7 [ABG2011] CPS 8 bub 03 44 10.0 +32 17 20           ~ 2 1
8 Cl* IC 348 LRL 30 Y*O 03 44 19.1233580656 +32 09 31.285007760   12.70 11.90 11.24 11.008 F0 56 0
9 V* V695 Per Or* 03 44 19.2384711490 +32 07 34.757284615   19.71     15.014 M3.75 46 0
10 IC 348 OpC 03 44 31.7 +32 09 32           ~ 1392 1
11 HD 281159 Y*O 03 44 34.1873929 +32 09 46.137563 9.19 9.21 8.53 8.85 7.850 B5V 224 0
12 [ABG2011] CPS 10 bub 03 44 35.0 +32 10 10           ~ 2 1
13 [ABG2011] CPS 11 bub 03 44 50.0 +32 18 10           ~ 2 1
14 NAME Taurus Complex SFR 04 41.0 +25 52           ~ 4415 0
15 NAME Ophiuchus Molecular Cloud SFR 16 28 06 -24 32.5           ~ 3629 1

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