Data-driven reduced modeling of streamer discharges in air
Jannis Teunissen, Alejandro Malag\'on-Romero

TL;DR
This paper introduces a computational framework for simulating filamentary electric discharges in air, using reduced models derived from data, enabling efficient 3D simulations that match experimental observations.
Contribution
The paper develops a data-driven reduced modeling approach for streamer discharges, incorporating stochastic branching and enabling large-scale 3D simulations efficiently.
Findings
Reduced model accurately reproduces axisymmetric simulation results.
3D simulations produce discharge morphologies consistent with experiments.
Framework allows large, efficient simulations on desktop computers.
Abstract
We present a computational framework for simulating filamentary electric discharges, in which channels are represented as conducting cylindrical segments. The framework requires a model that predicts the position, radius, and line conductivity of channels at a next time step. Using this information, the electric conductivity on a numerical mesh is updated, and the new electric potential is computed by solving a variable-coefficient Poisson equation. A parallel field solver with support for adaptive mesh refinement is used, and the framework provides a Python interface for easy experimentation. We demonstrate how the framework can be used to simulate positive streamer discharges in air. First, a dataset of 1000 axisymmetric positive streamer simulations is generated, in which the applied voltage and the electrode geometry are varied. Fit expressions for the streamer radius, velocity, and…
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Taxonomy
TopicsHigh voltage insulation and dielectric phenomena
