PySSED:整理和拟合恒星光谱能量分布的自动方法

I. McDonald, Albert Zijlstra, Nick L. J. Cox, Emma L. Alexander, Alexander Csukai, Ria Ramkumar, Alexander Hollings
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引用次数: 1

摘要

恒星大气模型通过再现观测到的光谱能量分布,预测恒星的光度和温度,以及有效引力和金属度等参数。大多数观测数据来自使用各种通带的测光巡天。我们在此介绍 Python 恒星光谱能量分布(PySSED)例程,该例程旨在结合来自不同星表的测光数据,拟合恒星的光度和温度,并确定偏离恒星大气模型的情况,如红外线或紫外线过量。我们详细介绍了该程序的操作,并介绍了单个恒星、恒星群和更广阔天空区域的使用案例。PySSED 的优点是处理过程完全自动化,可以以每颗恒星几秒钟的速度拟合任意大的数据集。
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PySSED: An automated method of collating and fitting stellar spectral energy distributions
Stellar atmosphere modelling predicts the luminosity and temperature of a star, together with parameters such as the effective gravity and the metallicity, by reproducing the observed spectral energy distribution. Most observational data comes from photometric surveys, using a variety of passbands. We herein present the Python Stellar Spectral Energy Distribution (PySSED) routine, designed to combine photometry from disparate catalogues, fit the luminosity and temperature of stars, and determine departures from stellar atmosphere models such as infrared or ultraviolet excess. We detail the routine’s operation, and present use cases on both individual stars, stellar populations, and wider regions of the sky. PySSED benefits from fully automated processing, allowing fitting of arbitrarily large datasets at the rate of a few seconds per star.
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