Please use this identifier to cite or link to this item: https://research.matf.bg.ac.rs/handle/123456789/3184
Title: Solving the 2-level atom non-LTE problem using soft actor-critic reinforcement learning
Authors: Panos, Brandon
Milić, Ivan 
Affiliations: Astronomy 
Keywords: algorithms;numerical methods;radiative transfer - machine learning - reinforcement learning;simulations
Issue Date: 1-Jan-2026
Rank: M20/M50
Publisher: Oxford University Press
Journal: Ras Techniques and Instruments
Abstract: 
We present a novel reinforcement learning (RL) approach for solving the classical 2-level atom non-LTE radiative transfer problem by framing it as a control task in which an RL agent learns a depth-dependent source function $S(\tau)$ that self-consistently satisfies the equation of statistical equilibrium (SE). The agent’s policy is optimized entirely via reward-based interactions with a radiative transfer engine, without explicit knowledge of the ground truth. This method bypasses the need for constructing approximate lambda operators ($\Lambda ^{*}$) common in accelerated iterative schemes. Additionally, it requires no extensive precomputed labelled data sets to extract a supervisory signal, and avoids backpropagating gradients through the complex RT solver itself. Finally, we show through experiment that a simple feedforward neural network trained greedily cannot solve for SE, possibly due to the moving target nature of the problem. Our $\Lambda ^{*}-\text{Free}$ method offers potential advantages for complex scenarios (e.g. atmospheres with enhanced velocity fields, multidimensional geometries, or complex microphysics) where $\Lambda ^{*}$ construction or solver differentiability is challenging. Additionally, the agent can be incentivized to find more efficient policies by manipulating the discount factor, leading to a reprioritization of immediate rewards. If demonstrated to generalize past its training data, this RL framework could serve as an alternative or accelerated formalism to achieve SE. To the best of our knowledge, this study represents the first application of reinforcement learning in solar physics that directly solves for a fundamental physical constraint.
URI: https://research.matf.bg.ac.rs/handle/123456789/3184
DOI: 10.1093/rasti/rzag005
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