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Production of Alternate Realizations of DESI Fiber Assignment for Unbiased Clustering Measurement in Data and Simulations

arXiv (Cornell University)(2024)

Cited 1|Views33
Abstract
A critical requirement of spectroscopic large scale structure analyses is correcting for selection of which galaxies to observe from an isotropic target list. This selection is often limited by the hardware used to perform the survey which will impose angular constraints of simultaneously observable targets, requiring multiple passes to observe all of them. In SDSS this manifested solely as the collision of physical fibers and plugs placed in plates. In DESI, there is the additional constraint of the robotic positioner which controls each fiber being limited to a finite patrol radius. A number of approximate methods have previously been proposed to correct the galaxy clustering statistics for these effects, but these generally fail on small scales. To accurately correct the clustering we need to upweight pairs of galaxies based on the inverse probability that those pairs would be observed (Bianchi & Percival 2017). This paper details an implementation of that method to correct the Dark Energy Spectroscopic Instrument (DESI) survey for incompleteness. To calculate the required probabilities, we need a set of alternate realizations of DESI where we vary the relative priority of otherwise identical targets. These realizations take the form of alternate Merged Target Ledgers (AMTL), the files that link DESI observations and targets. We present the method used to generate these alternate realizations and how they are tracked forward in time using the real observational record and hardware status, propagating the survey as though the alternate orderings had been adopted. We detail the first applications of this method to the DESI One-Percent Survey (SV3) and the DESI year 1 data. We include evaluations of the pipeline outputs, estimation of survey completeness from this and other methods, and validation of the method using mock galaxy catalogs.
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Density-based Clustering,Semi-supervised Clustering,Stream Data Clustering,Fuzzy Clustering,Cluster Validation
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要点】:本文提出了一种生成DESI调查的替代实现方法,通过改变相同目标相对优先级来计算反概率,从而对 galaxy clustering 统计进行准确校正,以纠正选择偏差并用于无偏聚类测量。

方法】:通过创建替代的Merged Target Ledgers(AMTL)来生成DESI的替代实现,这些文件将观测和目标联系起来,并基于实际观测记录和硬件状态跟踪这些实现。

实验】:本文将所提方法应用于DESI One-Percent Survey(SV3)和DESI第一年数据,使用模拟星系目录验证了方法,并评估了管道输出以及从这些和其他方法估计的调查完整性。