...
首页> 外文期刊>Astronomy and astrophysics >TFAW: Wavelet-based signal reconstruction to reduce photometric noise in time-domain surveys
【24h】

TFAW: Wavelet-based signal reconstruction to reduce photometric noise in time-domain surveys

机译:TFAW:基于小波的信号重建,以减少时域测量中的光度学噪声

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Context. There have been many efforts to correct systematic effects in astronomical light curves to improve the detection and characterization of planetary transits and astrophysical variability. Algorithms such as the trend filtering algorithm (TFA) use simultaneously-observed stars to measure and remove systematic effects, and binning is used to reduce high-frequency random noise. Aims. We present TFAW, a wavelet-based modified version of TFA. First, TFAW aims to increase the periodic signal detection and second, to return a detrended and denoised signal without modifying its intrinsic characteristics. Methods. We modified TFA’s frequency analysis step adding a stationary wavelet transform filter to perform an initial noise and outlier removal and increase the detection of variable signals. A wavelet-based filter was added to TFA’s signal reconstruction to perform an adaptive characterization of the noise- and trend-free signal and the underlying noise contribution at each iteration while preserving astrophysical signals. We carried out tests over simulated sinusoidal and transit-like signals to assess the effectiveness of the method and applied TFAW to real light curves from TFRM. We also studied TFAW’s application to simulated multiperiodic signals. Results. TFAW improves the signal detection rate by increasing the signal detection efficiency (SDE) up to a factor ~2.5× for low S/R light curves. For simulated transits, the transit detection rate improves by a factor ~2???5× in the low-S/R regime compared to TFA. TFAW signal approximation performs up to a factor ~2× better than bin averaging for planetary transits. The standard deviations of simulated and real TFAW light curves are ~40% better compared to TFA. TFAW yields better MCMC posterior distributions and returns lower uncertainties, less biased transit parameters and narrower (by approximately ten times) credibility intervals for simulated transits. TFAW is also able to improve the characterization of multiperiodic signals. We present a newly-discovered variable star from TFRM.
机译:上下文。为了纠正天文光曲线中的系统效应,人们进行了许多努力,以改善对行星轨道和天体变率的检测和表征。诸如趋势过滤算法(TFA)之类的算法使用同时观测的恒星来测量和消除系统影响,并使用分箱来减少高频随机噪声。目的我们介绍了TFAW,这是基于小波的TFA修改版。首先,TFAW的目的是增加周期信号的检测,其次,在不改变其固有特性的情况下返回经过去趋势和去噪的信号。方法。我们修改了TFA的频率分析步骤,增加了一个固定的小波变换滤波器,以执行初始噪声和异常值消除并增加对可变信号的检测。在TFA的信号重构中添加了基于小波的滤波器,以在每次迭代时对无噪声和无趋势的信号以及潜在的噪声贡献进行自适应表征,同时保留天体信号。我们对模拟的正弦和类似过渡信号进行了测试,以评估该方法的有效性,并将TFAW应用于TFRM的真实光曲线。我们还研究了TFAW在模拟多周期信号中的应用。结果。对于低S / R光曲线,TFAW通过将信号检测效率(SDE)提高到约2.5倍来提高信号检测率。对于模拟过境,与TFA相比,在低S / R体制中,过境检测率提高了约2〜5倍。对于行星轨道,TFAW信号逼近比bin平均要好约2倍。与TFA相比,模拟和实际TFAW光曲线的标准偏差要好约40%。 TFAW产生更好的MCMC后验分布,并返回较低的不确定性,较小的过境参数和模拟过境的较窄的可信区间(大约十倍)。 TFAW还能够改善多周期信号的特性。我们提出了来自TFRM的新发现的变星。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号