Towards a Machine-Learned Poisson Solver for Low-Temperature Plasma Simulations in Complex Geometries
Ihda Chaerony Siffa, Markus M. Becker, Klaus-Dieter Weltmann, and Jan, Trieschmann

TL;DR
This paper introduces a machine-learned Poisson solver tailored for low-temperature plasma simulations in complex geometries, achieving accurate results with potential speed advantages over traditional methods.
Contribution
A novel hybrid CNN-transformer neural network architecture trained on synthetic data for efficient, generalizable Poisson solutions in complex 2D plasma reactor geometries.
Findings
Achieves accurate Poisson solutions comparable to traditional methods.
Generalizes well to unseen reactor geometries.
Potentially faster than conventional iterative solvers.
Abstract
Poisson's equation plays an important role in modeling many physical systems. In electrostatic self-consistent low-temperature plasma (LTP) simulations, Poisson's equation is solved at each simulation time step, which can amount to a significant computational cost for the entire simulation. In this paper, we describe the development of a generic machine-learned Poisson solver specifically designed for the requirements of LTP simulations in complex 2D reactor geometries on structured Cartesian grids. Here, the reactor geometries can consist of inner electrodes and dielectric materials as often found in LTP simulations. The approach leverages a hybrid CNN-transformer network architecture in combination with a weighted multiterm loss function. We train the network using highly-randomized synthetic data to ensure the generalizability of the learned solver to unseen reactor geometries. The…
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TopicsAdvanced Data Storage Technologies · Error Correcting Code Techniques · Speech Recognition and Synthesis
