WISE 勘测 2 的大规模遥远星团:第二次数据发布

Khunanon Thongkham, Anthony H. Gonzalez, Mark Brodwin, Ariane Trudeau, Peter Eisenhardt, S. A. Stanford, Emily Moravec, Thomas Connor, Daniel Stern, Ryan Spivey and Karolina Garcia
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摘要

我们发布了 WISE 勘测 2(MaDCoWS2)的第二个数据版本。我们将首次发布的赤道数据扩展到暗能量相机遗留巡天的大部分区域,覆盖总面积达 6498 平方千米。星表包括 133036 个信噪比(S/N)≥ 5 的候选星系团,其信噪比为 0.1 ≤ z ≤ 2,其中包括 6790 个 z > 1.5 的候选星系团。我们训练了一个卷积神经网络(CNN)来识别虚假探测,并在最终星表中加入了基于CNN的星系团概率。我们还将 MaDCoWS2 样本与同一地区的文献目录进行了比较。更大的样本提供了与我们首次发布的数据一致的可靠结果。在信噪比≥5时,我们重新发现了现有星表中位于MC2未掩蔽区域的59%-91%的星团。位置偏移的中位数小于 250 kpc,红移的标准偏差为 0.031(1 + z)。我们对 MaDCoWS2 信噪比和现有星表中的观测数据之间的关系拟合了一个随红移变化的幂律。在与 MaDCoWS2 重叠的红移范围内,S/N 与光学/红外巡天观测数据之间的散度最小。我们还利用模拟光锥测量了纯度和完整性与星团质量的函数关系,评估了我们方法的性能。纯度高于90%,我们估计50%的完整度阈值为log(M/M⊙)≈14.3的病毒质量。由于光锥中的大质量光环数量较少,对完整性的估计并不确定,但与通过与其他星团星表比较发现的恢复分数是一致的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Massive and Distant Clusters of WISE Survey 2: Second Data Release
We present the second data release of the Massive and Distant Clusters of WISE Survey 2 (MaDCoWS2). We expand from the equatorial first data release to most of the Dark Energy Camera Legacy Survey area, covering a total area of 6498 deg2. The catalog consists of 133,036 signal-to-noise ratio (S/N) ≥ 5 galaxy cluster candidates at 0.1 ≤ z ≤ 2, including 6790 candidates at z > 1.5. We train a convolutional neural network (CNN) to identify spurious detections and include CNN-based cluster probabilities in the final catalog. We also compare the MaDCoWS2 sample with literature catalogs in the same area. The larger sample provides robust results that are consistent with our first data release. At S/N ≥ 5, we rediscover 59%–91% of clusters in existing catalogs that lie in the unmasked area of MC2. The median positional offsets are under 250 kpc, and the standard deviation of the redshifts is 0.031(1 + z). We fit a redshift-dependent power law to the relation between MaDCoWS2 S/N and observables from existing catalogs. Over the redshift ranges where the surveys overlap with MaDCoWS2, the lowest scatter is found between S/N and observables from optical/infrared surveys. We also assess the performance of our method using a mock light cone measuring purity and completeness as a function of cluster mass. The purity is above 90%, and we estimate the 50% completeness threshold at a virial mass of log(M/M⊙) ≈ 14.3. The completeness estimate is uncertain due to the small number of massive halos in the light cone, but consistent with the recovery fraction found by comparing to other cluster catalogs.
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