Aperiodic variability is a characteristic feature of young stars, massive stars, and active galactic nuclei. With the recent proliferation of time-domain surveys, it is increasingly essential to develop methods to quantify and analyze aperiodic variability. We develop three timescale metrics that have been little used in astronomy—Δm-Δt plots, peak-finding, and Gaussian process regression—and present simulations comparing their effectiveness across a range of aperiodic light curve shapes, characteristic timescales, observing cadences, and signal to noise ratios. We find that Gaussian process regression is easily confused by noise and by irregular sampling, even when the model being fit reflects the process underlying the light curve, but th...
We present variability analysis of data from the Northern Sky Variability Survey (NSVS). Using the c...
We analyse 829,481 stars from the Next Generation Transit Survey (NGTS) to extract variability perio...
We present variability analysis of data from the Northern Sky Variability Survey (NSVS). Using the c...
Aperiodic variability is a characteristic feature of young stars, massive stars, and active galactic...
Nearly all young stars are variable, with the variability traditionally divided into two classes: pe...
We present the use of continuous-time autoregressive moving average (CARMA) models as a method for e...
Celestial objects exhibit a wide range of variability in brightness at different wavebands. Surprisi...
To explore young star variability on a large range of timescales, we have used the MOST satellite to...
This paper presents a comparison of popular period finding algorithms applied to the light curves of...
The standard method of studying period changes in variable stars is to study the timing residuals o...
Over the past decade, a number of dedicated stellar variability surveys have launched from both the ...
The definitive version can be found at: http://onlinelibrary.wiley.com/ Copyright Royal Astronomical...
peer reviewedPhotometric measurements are prone to systematic errors presenting a challenge to lowam...
Presented are the results of a near-IR photometric survey of 1678 stars in the direction of the ρ Op...
Context. The light curves of variable stars are commonly described using simple trigonometric models...
We present variability analysis of data from the Northern Sky Variability Survey (NSVS). Using the c...
We analyse 829,481 stars from the Next Generation Transit Survey (NGTS) to extract variability perio...
We present variability analysis of data from the Northern Sky Variability Survey (NSVS). Using the c...
Aperiodic variability is a characteristic feature of young stars, massive stars, and active galactic...
Nearly all young stars are variable, with the variability traditionally divided into two classes: pe...
We present the use of continuous-time autoregressive moving average (CARMA) models as a method for e...
Celestial objects exhibit a wide range of variability in brightness at different wavebands. Surprisi...
To explore young star variability on a large range of timescales, we have used the MOST satellite to...
This paper presents a comparison of popular period finding algorithms applied to the light curves of...
The standard method of studying period changes in variable stars is to study the timing residuals o...
Over the past decade, a number of dedicated stellar variability surveys have launched from both the ...
The definitive version can be found at: http://onlinelibrary.wiley.com/ Copyright Royal Astronomical...
peer reviewedPhotometric measurements are prone to systematic errors presenting a challenge to lowam...
Presented are the results of a near-IR photometric survey of 1678 stars in the direction of the ρ Op...
Context. The light curves of variable stars are commonly described using simple trigonometric models...
We present variability analysis of data from the Northern Sky Variability Survey (NSVS). Using the c...
We analyse 829,481 stars from the Next Generation Transit Survey (NGTS) to extract variability perio...
We present variability analysis of data from the Northern Sky Variability Survey (NSVS). Using the c...