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ARTEMIS

ARTEMIS (Adaptive mesh Refinement Time-domain ElectrodynaMIcs Solver) is a high-performance coupled electrodynamics–micromagnetics solver for full physical modeling of signals in microelectronic circuitry. The overall strategy couples a finite-difference time-domain (FDTD) approach for Maxwell’s equations to a magnetization model described by the Landau–Lifshitz–Gilbert (LLG) equation. The algorithm is implemented in the Exascale Computing Project (ECP) software framework, AMReX, which provides effective scalability on manycore and GPU-based supercomputing architectures. Furthermore, the code leverages ongoing developments of the Exascale Application Code, WarpX, which is primarily being developed for plasma wakefield accelerator modeling. Our temporal coupling scheme provides second-order accuracy in space and time by combining the integration steps for the magnetic field and magnetization into an iterative sub-step that includes a trapezoidal temporal discretization for the magnetization. The performance of the algorithm is demonstrated by the excellent scaling results on NERSC multicore and GPU systems, with a significant (59×) speedup on the GPU using a node-by-node comparison. The utility of our code is validated by performing simulations of transmission lines, rectangle electromagnetic waveguides, magnetically tunable filters, on-chip coplanar waveguides and resonators, magnon-photon coupling circuits, and so on.

Installation

Download AMReX Repository

git clone [email protected]:AMReX-Codes/amrex.git

Download Artemis Repository

git clone [email protected]:AMReX-Microelectronics/artemis.git

Build

Make sure that the AMReX and Artemis are cloned in the same location in their filesystem. Navigate to the Exec folder of Artemis and execute make -j 4.
You can turn on and off the LLG equation by specifying USE_LLG during compilation.
The following command compiles Artemis without LLG make -j 4 USE_LLG=FALSE
The following command compiles Artemis with LLG make -j 4 USE_LLG=TRUE
The default value of USE_LLG is TRUE.

Running Artemis

Example input scripts are located in Examples directory.

Simple Testcase without LLG

You can run the following to simulate an air-filled X-band rectangle waveguide:

For MPI+OMP build

make -j 4 USE_LLG=FALSE
mpirun -n 4 ./main3d.gnu.TPROF.MTMPI.OMP.GPUCLOCK.ex Examples/Waveguide/inputs_3d_empty_X_band

For MPI+CUDA build

make -j 4 USE_LLG=FALSE USE_GPU=TRUE
mpirun -n 4 ./main3d.gnu.TPROF.MTMPI.CUDA.GPUCLOCK.ex Examples/Waveguide/inputs_3d_empty_X_band

Simple Testcase with LLG

You can run the following to simulate an X-band magnetically tunable filter:

For MPI+OMP build

make -j 4 USE_LLG=TRUE
mpirun -n 8 ./main3d.gnu.TPROF.MTMPI.OMP.GPUCLOCK.ex Examples/Waveguide/inputs_3d_LLG_filter

For MPI+CUDA build

make -j 4 USE_LLG=TRUE USE_GPU=TRUE
mpirun -n 8 ./main3d.gnu.TPROF.MTMPI.CUDA.GPUCLOCK.ex Examples/Waveguide/inputs_3d_LLG_filter

Visualization and Data Analysis

Refer to the following link for several visualization tools that can be used for AMReX plotfiles.

Visualization

Data Analysis in Python using yt

You can extract the data in numpy array format using yt (you can refer to this for installation and usage of yt. After you have installed yt, you can do something as follows, for example, to get variable 'Ex' (x-component of electric field)

import yt
ds = yt.load('./plt00001000/') # for data at time step 1000
ad0 = ds.covering_grid(level=0, left_edge=ds.domain_left_edge, dims=ds.domain_dimensions)
E_array = ad0['Ex'].to_ndarray()

Publications

  1. Z. Yao, R. Jambunathan, Y. Zeng and A. Nonaka, A massively parallel time-domain coupled electrodynamics–micromagnetics solver. The International Journal of High Performance Computing Applications. 2022;36(2):167-181. doi:10.1177/10943420211057906 link
  2. S. S. Sawant, Z. Yao, R. Jambunathan and A. Nonaka, Characterization of transmission lines in microelectronic circuits Using the ARTEMIS solver, IEEE Journal on Multiscale and Multiphysics Computational Techniques, vol. 8, pp. 31-39, 2023, doi: 10.1109/JMMCT.2022.3228281 link
  3. R. Jambunathan, Z. Yao, R. Lombardini, A. Rodriguez, and A. Nonaka, Two-fluid physical modeling of superconducting resonators in the ARTEMIS framework, Computer Physics Communications, 291, p.108836. doi:10.1016/j.cpc.2023.108836 link