Testing a New Star Formation History Model from Principal Component Analysis to Facilitate Spectral Synthesis Modeling (2502.18561v1)
Abstract: The spectrum of a galaxy is a complicated convolution of many properties of the galaxy, such as the star formation history (SFH), initial mass function, and metallicity. Inferring galaxy properties from the observed spectrum via spectral synthesis modeling is thus challenging. In particular, a simple yet flexible model for the SFH is required to obtain unbiased inferences. In this paper, we use SFHs from the IllustrisTNG and EAGLE simulations to test SFH models in their capabilities of describing the simulated SFHs and the spectra generated from them. In addition to some commonly used SFH models ($\Gamma$, $\tau$, and non-parametric), we also examine a model developed from the principal component analysis (PCA) trained by a set of SFHs from IllustrisTNG. We find that when using the first 5 principal components (eigen-histories), the PCA-based model can achieve a good balance between simplicity and accuracy. Among all the SFH models, the PCA-based model is the best in matching the simulated SFHs. To accurately reproduce the spectra generated from the simulated SFHs, it is necessary to have a degree of freedom to describe the most recent SFH (e.g., a step function covering the age of 0 - 0.3 Gyr). Overall, the PCA+step model performs the best in covering the diversity of SFHs and in reproducing the input spectra, thus providing a reliable SFH model for spectral synthesis modeling.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.