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On attempting to automate the identification of mixed dipole modes for subgiant stars

机译:试图自动化亚尾恒星混合偶极模式的识别

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Context. The existence of mixed modes in stars is a marker of stellar evolution. Their detection serves for a better determination of stellar age. Aims. The goal of this paper is to identify the dipole modes in an automatic manner without human intervention. Methods. I used the power spectra obtained by the Kepler mission for the application of the method. I computed asymptotic dipole mode frequencies as a function of the coupling factor and dipole period spacing, as well as other parameters. For each star, I collapsed the power in an echelle diagramme aligned onto the monopole and dipole mixed modes. The power at the null frequency was used as a figure of merit. Using a genetic algorithm, I then optimised the figure of merit by adjusting the location of the dipole frequencies in the power spectrum. Using published frequencies, I compared the asymptotic dipole mode frequencies with published frequencies. I also used published frequencies to derive the coupling factor and dipole period spacing using a non-linear least squares fit. I used Monte-Carlo simulations of the non-linear least square fit to derive error bars for each parameter. Results. From the 44 subgiants studied, the automatic identification allows one to retrieve within 3 μ Hz, at least 80% of the modes for 32 stars, and within 6 μ Hz, at least 90% of the modes for 37 stars. The optimised and fitted gravity-mode period spacing and coupling factor are in agreement with previous measurements. Random errors for the mixed-mode parameters deduced from the Monte-Carlo simulation are about 30?50 times smaller than previously determined errors, which are in fact systematic errors. Conclusions. The period spacing and coupling factors of mixed modes in subgiants are confirmed. The current automated procedure will need to be improved upon using a more accurate asymptotic model and/or proper statistical tests.
机译:语境。恒星中混合模式的存在是恒星演化的标志。他们的检测用于更好地确定恒星时代。目标。本文的目标是以人为干预以自动方式识别偶极模式。方法。我使用了通过开普勒任务获得的功率谱来应用方法。 I计算渐近偶极模式频率作为耦合因子和偶极周期间距的函数,以及其他参数。对于每个星,我将电力折叠在对齐在单极和偶极混合模式上的echelle图中的电力。空频率的电源被用作优点的图。使用遗传算法,我通过调整功率谱中的偶极频率的位置来优化优点。使用已发布的频率,将渐近偶极模式频率与已发布的频率进行比较。我还使用已发布的频率来使用非线性最小二乘拟合导出耦合因子和偶极周期间距。我使用了非线性最小二乘拟合的Monte-Carlo模拟,以获得每个参数的误差杆。结果。从研究的44个亚尖端,自动识别允许一个人在3μHz内检索,至少80%的模式,32颗恒星,在6μHz之内,至少90%的模式为37颗恒星。优化和拟合的重力模式周期间距和耦合因子与先前的测量一致。从Monte-Carlo仿真推断的混合模式参数的随机误差大约比以前确定的错误小约30?50倍,这实际上是系统的错误。结论。确认了子檐中混合模式的周期间距和耦合因子。使用更准确的渐近模型和/或适当的统计测试,需要改善当前的自动化程序。

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