Learning based Modelling of Throttleable Engine Dynamics for Lunar Landing Mission
NeutralArtificial Intelligence
The study on throttleable engine dynamics for lunar landing missions highlights the importance of accurate modeling in achieving successful soft landings. Utilizing a learning-based system identification approach, researchers developed a model based on data from a high-fidelity propulsion model. This model was validated through experimental results, ensuring its reliability for closed-loop guidance and control simulations. As lunar missions become more frequent, advancements like this are essential for improving the safety and efficiency of landings, ultimately contributing to the broader goals of space exploration.
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