Predicting Performance of Hall Effect Ion Source Using Machine Learning
Jaehong Park,
Guentae Doh,
Dongho Lee
et al.
Abstract:Accurate performance prediction methods are essential for the development of high‐efficiency Hall effect ion sources, which are employed in industries ranging from material surface treatment to spacecraft electric propulsion (known as Hall thrusters). Traditional methods rely on simplified scaling laws and computationally intensive numerical simulations. Herein, a robust machine learning model is introduced that uses a neural network ensemble to predict the performance of Hall effect ion sources based on desig… Show more
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