Abstract
Accurately measuring stellar ages and internal structures is challenging, but the inclusion of asteroseismic observables can substantially improve precision. However, the curse of dimensionality means this comes at a high computational cost when using standard interpolation methods across grids of stellar models. Furthermore, without a rigorous treatment of random uncertainties in grid-based modelling, it is not possible to address systematic errors in stellar models. We present pitchfork – a multilayer perceptron neural network with a branching architecture capable of rapid emulation of both classical stellar observables and individual asteroseismic oscillation modes of solar-like oscillators. pitchfork can predict the classical observables , L, and with precisions of 5.88 K, , and , respectively, and can predict 35 individual radial mode frequencies with a uniform precision of 0.02 per cent. pitchfork is coupled to a vectorised Bayesian inference pipeline to return well-sampled and fully marginalised posterior distributions. We validate our rigorous treatment of the random uncertainties – including the asteroseismic surface effect – in an extensive hare-and-hounds exercise. We also demonstrate our ability to infer the stellar properties of benchmark stars – namely, the Sun and the binary stars 16 Cygni A and B. This work demonstrates a computationally scalable and statistically robust framework for stellar parameter inference of solar-like oscillators using individual asteroseismic mode frequencies. This provides a foundation for the treatment of systematics in preparation for the imminent abundance of asteroseismic data from future missions.
| Original language | English |
|---|---|
| Article number | stag018 |
| Journal | Monthly Notices of the Royal Astronomical Society |
| Volume | 546 |
| Issue number | 4 |
| Early online date | 7 Jan 2026 |
| DOIs | |
| Publication status | Published - Mar 2026 |
Keywords
- stars: fundamental parameters
- methods: statistical
- asteroseismology
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