Scalability analysis of a two level domain decomposition approach in space and time solving data assimilation models

Author:

Cacciapuoti Rosalba1,D'Amore Luisa1ORCID

Affiliation:

1. Department of Mathematics and Applications Renato Caccioppoli University of Naples, Federico II Naples Italy

Abstract

SummaryWe are concerned with the mapping on high performance hybrid architectures of a parallel software implementing a two level overlapping domain decomposition, that is, along space and time directions, of the four dimensional variational data assimilation model. The reference architecture belongs to the SCoPE (Sistema Cooperativo Per Elaborazioni scientifiche multidisciplinari) data center, located at University of Naples Federico II. We consider the initial boundary problem of the shallow water equation and analyse both strong and weak scaling. Keeping the efficiency always greater than and about in most cases, we experimentally find that the isoefficiency function grows a little more than linearly with respect to the number of processes. Results, obtained by using the parallel computing toolbox of MATLABR2013a, are in agreement with the algorithm's performance prevision based on the scale up factor, confirming the appropriate mapping of the algorithm on the hybrid architecture.

Publisher

Wiley

Subject

Computational Theory and Mathematics,Computer Networks and Communications,Computer Science Applications,Theoretical Computer Science,Software

Reference23 articles.

1. A scalable space‐time domain decomposition approach for solving large scale nonlinear regularized inverse ill posed problems in 4D Variational data assimilation;D'Amore L;J Sci Comput,2022

2. HedströmKS.Technical manual for a coupled sea‐ice/ocean circulation model (Version 5); 2018.https://purl.fdlp.gov/GPO/gpo108028

3. https://www.myroms.org/wiki/Parallelization

4. Optimizing domain decomposition in an ocean model: the case of NEMO

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