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ROHSA: Regularized Optimization for Hyper-Spectral Analysis

机译:ROHSA:高光谱分析的正则化优化

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Context. Extracting the multiphase structure of the neutral interstellar medium is key to understanding star formation in galaxies. The radiative condensation of the diffuse warm neutral medium producing a thermally unstable lukewarm medium and a dense cold medium is closely related to the initial step leading the atomic-to-molecular (HI-to-H_(2)) transition and the formation of molecular clouds. Up to now, the mapping of these phases out of 21 cm emission hyper-spectral cubes has remained elusive mostly due to the velocity blending of individual cold structures present on a given line of sight. As a result, most of the current knowledge about the HI phases rests on a small number of absorption measurements on lines of sight crossing radio sources. Aims. The goal of this work is to develop a new algorithm to perform separation of diffuse sources in hyper-spectral data. Specifically the algorithm was designed in order to address the velocity blending problem by taking advantage of the spatial coherence of the individual sources. The main scientific driver of this effort was to extract the multiphase structure of the HI from 21 cm line emission only, providing a means to map each phase separately, but the algorithm developed here should be generic enough to extract diffuse structures in any hyper-spectral cube. Methods. We developed a new Gaussian decomposition algorithm named ROHSA based on a multi-resolution process from coarse to fine grid. ROHSA uses a regularized nonlinear least-square criterion to take into account the spatial coherence of the emission and the multiphase nature of the gas simultaneously. In order to obtain a solution with spatially smooth parameters, the optimization is performed on the whole data cube at once. The performances of ROHSA were tested on a synthetic observation computed from numerical simulations of thermally bi-stable turbulence. We apply ROHSA to a 21 cm observation of a region of high Galactic latitude from the GHIGLS survey and present our findings. Results. The evaluation of ROHSA on synthetic 21 cm observations shows that it is able to recover the multiphase nature of the HI. For each phase, the power spectra of the column density and centroid velocity are well recovered. More generally, this test reveals that a Gaussian decomposition of HI emission is able to recover physically meaningful information about the underlying three-dimensional fields (density, velocity, and temperature). The application on a real 21 cm observation of a field of high Galactic latitude produces a picture of the multiphase HI, with isolated, filamentary, and narrow ( σ ~ 1?2 km s~(?1)) structures, and broader ( σ ~ 4?10 km s~(?1)), diffuse, and space-filling components. The test-case field used here contains significant intermediate-velocity clouds that were well mapped out by the algorithm. As ROHSA is designed to extract spatially coherent components, it performs well at projecting out the noise. Conclusions. In this paper we introduce ROHSA , a new algorithm that performs a separation of diffuse sources in hyper-spectral data on the basis of a Gaussian decomposition. The algorithm makes no assumption about the nature of the sources, except that each one has a similar line width. The tests we made shows that ROHSA is well suited to decomposing complex 21 cm line emission of regions of high Galactic latitude, but its design is general enough that it could be applied to any hyper-spectral data type for which a Gaussian model is relevant.
机译:上下文。提取中性星际介质的多相结构是了解星系中恒星形成的关键。产生热不稳定温热介质和致密冷介质的扩散温暖中性介质的辐射凝结与导致原子到分子(HI-to-H_(2))转变和分子形成的初始步骤密切相关云。到现在为止,这些相在21 cm发射高光谱立方体中的映射仍然难以捉摸,这主要是由于在给定视线上存在的单个冷结构的速度混合。结果,关于HI相位的当前大多数知识都取决于视线交叉的无线电源上的少量吸收测量。目的这项工作的目的是开发一种新算法,以分离高光谱数据中的扩散源。专门设计了该算法,以便通过利用各个源的空间相干性来解决速度混合问题。这项工作的主要科学驱动力是仅从21 cm的线发射中提取HI的多相结构,从而提供了分别绘制每个相的方法,但是此处开发的算法应该足够通用,可以提取任何高光谱中的扩散结构立方体。方法。我们基于从粗网格到精细网格的多分辨率过程,开发了一种名为ROHSA的新高斯分解算法。 ROHSA使用正则化的非线性最小二乘准则来同时考虑排放的空间相干性和气体的多相性质。为了获得具有空间平滑参数的解决方案,立即对整个数据立方体执行优化。 ROHSA的性能是在根据热双稳态湍流数值模拟计算出的综合观测值上进行测试的。我们通过GHIGLS调查将ROHSA应用于21厘米高银河纬度地区的观测,并提出了我们的发现。结果。对ROHSA的21厘米合成观测资​​料进行评估显示,它能够恢复HI的多相性质。对于每个相,都可以很好地恢复色谱柱密度和质心速度的功率谱。更广泛地说,该测试表明,HI发射的高斯分解能够恢复有关基础三维场(密度,速度和温度)的物理意义上的信息。在高银河纬度的真实21 cm观测中的应用产生了多相HI的图像,它具有孤立的,丝状的,狭窄的(σ〜1?2 km s〜(?1))结构,以及更宽的(σ 〜4?10 km s〜(?1)),扩散和空间填充成分。此处使用的测试用例字段包含重要的中速云,该云已通过算法很好地映射。由于ROHSA旨在提取空间相干成分,因此在投射噪声方面表现良好。结论。在本文中,我们介绍了ROHSA,这是一种基于高斯分解对高光谱数据中的散射源进行分离的新算法。该算法不假设光源的性质,只是每个光源具有相似的线宽。我们进行的测试表明,ROHSA非常适合分解高银河纬度区域的复杂的21 cm线发射,但其设计足够通用,可以应用于与高斯模型相关的任何高光谱数据类型。

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