论文标题
Photoweb红移:通过大型光谱调查提高光度红移精度
PhotoWeb redshift: boosting photometric redshift accuracy with large spectroscopic surveys
论文作者
论文摘要
在大型成像调查中改善距离测量是更好地揭示星系在大规模上分布并将星系特性与其环境联系起来的主要挑战。光度红移可以与从重叠的光谱调查中提取的宇宙Web(CW)有效合并,以提高其准确性。我们使用基于卷积神经网络(CNN)的新一代光度红移应用类似的方法。 CNN对SDSS图像进行了培训,该图像具有主星系样品(SDSS-MGS,$ r \ leq 17.8 $)和GAMA Spectroscopic RedShifts tor $ \ sim 19.8 $。 CW的映射是通过MGS和Boss Surveys的680,000个光谱红移获得的。经过校准的红移概率分布函数(PDF)(无偏和狭窄,$ \ leq 120 $ MPC),沿视线拦截了一些CW结构。将这些PDF与密度场分布相结合,提供了新的光度红移,$ z_ {web} $,对于带有$ r \ leq 17.8 $的星系的星系的准确性提高了两个(即$σ\ sim 0.004(1+z)$)。对于其中一半,距离精度优于10 cmpc。原始PDF较窄,准确性的提升越大。对于原始PDF的宽度不超过0.03。最终的$ z_ {web} $ pdfs看起来也很好地校准。该方法在被动星系中的性能要比恒星形成的星系稍好,并且对于大型组的星系,这些方法的性能更好,因为这些人群可以更好地追踪潜在的大规模结构。将光谱采样减少8倍仍然可以提高光度速度准确性25%。将该方法扩展到星系范围比MGS限制仍然可以改善70%的星系的红移估计值,而在低$ Z $的情况下,精度为20%,而CW的分辨率最高。
Improving distance measurements in large imaging surveys is a major challenge to better reveal the distribution of galaxies on a large scale and to link galaxy properties with their environments. Photometric redshifts can be efficiently combined with the cosmic web (CW) extracted from overlapping spectroscopic surveys to improve their accuracy. We apply a similar method using a new generation of photometric redshifts based on a convolution neural network (CNN). The CNN is trained on the SDSS images with the main galaxy sample (SDSS-MGS, $r \leq 17.8$) and the GAMA spectroscopic redshifts up tor $\sim 19.8$. The mapping of the CW is obtained with 680,000 spectroscopic redshifts from the MGS and BOSS surveys. The redshift probability distribution functions (PDF), which are well calibrated (unbiased and narrow, $\leq 120$ Mpc), intercept a few CW structure along the line of sight. Combining these PDFs with the density field distribution provides new photometric redshifts, $z_{web}$, whose accuracy is improved by a factor of two (i.e.,$σ \sim 0.004(1+z)$) for galaxies with $r \leq 17.8$. For half of them, the distance accuracy is better than 10 cMpc. The narrower the original PDF, the larger the boost in accuracy. No gain is observed for original PDFs wider than 0.03. The final $z_{web}$ PDFs also appear well calibrated. The method performs slightly better for passive galaxies than star-forming ones, and for galaxies in massive groups since these populations better trace the underlying large-scale structure. Reducing the spectroscopic sampling by a factor of 8 still improves the photometric redshift accuracy by 25%. Extending the method to galaxies fainter than the MGS limit still improves the redshift estimates for 70% of the galaxies, with a gain in accuracy of 20% at low $z$ where the resolution of the CW is the highest.