Machine learning plasma-surface interface for coupling sputtering and gas-phase transport simulations
Florian Kr\"uger, Tobias Gergs, Jan Trieschmann

TL;DR
This paper introduces a machine learning approach using neural networks to efficiently predict sputtered particle distributions in plasma-surface interactions, bridging the gap between detailed surface models and gas-phase transport simulations.
Contribution
It presents a novel machine learning-based model interface that accurately predicts sputtered particle distributions for arbitrary incident ion energies, improving simulation efficiency.
Findings
Neural network accurately predicts sputtered particle distributions.
Model generalizes to unseen ion energy distributions.
Demonstrated effectiveness with Ar ion bombardment on Ti-Al composite.
Abstract
Thin film processing by means of sputter deposition inherently depends on the interaction of energetic particles with a target surface and the subsequent particle transport. The length and time scales of the underlying physical phenomena span orders of magnitudes. A theoretical description which bridges all time and length scales is not practically possible. Advantage can be taken particularly from the well-separated time scales of the fundamental surface and plasma processes. Initially, surface properties may be calculated from a surface model and stored for a number of representative cases. Subsequently, the surface data may be provided to gas-phase transport simulations via appropriate model interfaces (e.g., analytic expressions or look-up tables) and utilized to define insertion boundary conditions. During run-time evaluation, however, the maintained surface data may prove to be…
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