The Application of Machine Learning in Tidal Evolution Simulation of Star-Planet Systems
- URL: http://arxiv.org/abs/2408.16212v1
- Date: Thu, 29 Aug 2024 02:09:19 GMT
- Title: The Application of Machine Learning in Tidal Evolution Simulation of Star-Planet Systems
- Authors: Shuaishuai Guo, Jianheng Guo, KaiFan Ji, Hui Liu, Lei Xing,
- Abstract summary: The speed at which we generate evolutionary curves exceeds that of model-generated curves by more than four orders of magnitude.
Our work provides an efficient method to save significant computational resources and time with minimal loss in accuracy.
- Score: 13.080151140004276
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the release of a large amount of astronomical data, an increasing number of close-in hot Jupiters have been discovered. Calculating their evolutionary curves using star-planet interaction models presents a challenge. To expedite the generation of evolutionary curves for these close-in hot Jupiter systems, we utilized tidal interaction models established on MESA to create 15,745 samples of star-planet systems and 7,500 samples of stars. Additionally, we employed a neural network (Multi-Layer Perceptron - MLP) to predict the evolutionary curves of the systems, including stellar effective temperature, radius, stellar rotation period, and planetary orbital period. The median relative errors of the predicted evolutionary curves were found to be 0.15%, 0.43%, 2.61%, and 0.57%, respectively. Furthermore, the speed at which we generate evolutionary curves exceeds that of model-generated curves by more than four orders of magnitude. We also extracted features of planetary migration states and utilized lightGBM to classify the samples into 6 categories for prediction. We found that by combining three types that undergo long-term double synchronization into one label, the classifier effectively recognized these features. Apart from systems experiencing long-term double synchronization, the median relative errors of the predicted evolutionary curves were all below 4%. Our work provides an efficient method to save significant computational resources and time with minimal loss in accuracy. This research also lays the foundation for analyzing the evolutionary characteristics of systems under different migration states, aiding in the understanding of the underlying physical mechanisms of such systems. Finally, to a large extent, our approach could replace the calculations of theoretical models.
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