Litcius/Paper detail

Quantized tensor networks for solving the Vlasov–Maxwell equations

Erika Ye, Nuno Loureiro

2024Journal of Plasma Physics13 citationsDOI

Abstract

The Vlasov–Maxwell equations provide an ab initio description of collisionless plasmas, but solving them is often impractical because of the wide range of spatial and temporal scales that must be resolved and the high dimensionality of the problem. In this work, we present a quantum-inspired semi-implicit Vlasov–Maxwell solver that uses the quantized tensor network (QTN) framework. With this QTN solver, the cost of grid-based numerical simulation of size $N$ is reduced from $O(N)$ to $O(\text {poly}(D))$ , where $D$ is the ‘rank’ or ‘bond dimension’ of the QTN and is typically set to be much smaller than $N$ . We find that for the five-dimensional test problems considered here, a modest $D=64$ appears to be sufficient for capturing the expected physics despite the simulations using a total of $N=2^{36}$ grid points, which would require $D=2^{18}$ for full-rank calculations. Additionally, we observe that a QTN time evolution scheme based on the Dirac–Frenkel variational principle allows one to use somewhat larger time steps than prescribed by the Courant–Friedrichs–Lewy constraint. As such, this work demonstrates that the QTN format is a promising means of approximately solving the Vlasov–Maxwell equations with significantly reduced cost.

Topics & Concepts

PhysicsVlasov equationMaxwell's equationsPlasma modelingTensor (intrinsic definition)PlasmaMathematical physicsClassical mechanicsQuantum electrodynamicsQuantum mechanicsMathematicsPure mathematicsComputational Physics and Python ApplicationsTensor decomposition and applicationsModel Reduction and Neural Networks