Energy Efficiency of a New Parallel PIC Code for Numerical Simulation of Plasma Dynamics in Open Trap
-
Published:2022-10-08
Issue:19
Volume:10
Page:3684
-
ISSN:2227-7390
-
Container-title:Mathematics
-
language:en
-
Short-container-title:Mathematics
Author:
Chernykh IgorORCID,
Kulikov IgorORCID,
Vshivkov Vitaly,
Genrikh Ekaterina,
Weins Dmitry,
Dudnikova Galina,
Chernoshtanov Ivan,
Boronina MarinaORCID
Abstract
The generation of energy-efficient parallel scientific codes became very important in the time of carbon footprint reduction. In this paper, we briefly present our latest particle-in-cell code with the results of a numerical simulation of plasma dynamics in an open trap. This code can be auto-vectorized by the Fortran compiler for Intel Xeon processors with AVX-512 instructions such as Intel Xeon Phi and the highest series of all generations of Intel Xeon Scalable processors. Efficient use of processor architecture is the main feature of an energy-efficient solution. We present a step-by-step methodology of energy consumption calculation using Intel hardware features and Intel VTune software. We also give an estimated value of carbon footprint with the impact of high-performance water cooled hardware. The Power Usage Effectiveness (PUE) in the case of high-performance water cooled hardware is equal to 1.03–1.05, and is up to 1.3 in the case of air-cooled systems. This means that power consumption of liquid cooled systems is lower than that air-cooled ones by up to 25%. All these factors play an important role in the carbon footprint reduction problem.
Funder
Russian Science Foundation
Subject
General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)
Reference28 articles.
1. Energy Consumption in Aluminium Smelting and Changing Technologies Towards Gas Emissionhttps://www.alcircle.com/specialreport/319/energy-consumption-in-aluminium-smelting-and-changing-technologies-towards-gas-emission
2. The ecological impact of high-performance computing in astrophysics
3. High performance computing and energy efficiency: Focus on OpenFOAM;Bonamy;arXiv,2019
4. Energy-Efficient High Performance Computing;Laros,2013
5. Energy-Aware High-Performance Computing: Survey of State-of-the-Art Tools, Techniques, and Environments