Treffer: Accelerating Distributed Synthetic Aperture Radar Data Simulations Via CUDA
Title:
Accelerating Distributed Synthetic Aperture Radar Data Simulations Via CUDA
Authors:
Contributors:
Pan, Chongle, Goodman, Nathan, Kong, Martin
Publication Year:
2022
Collection:
University of Oklahoma / Oklahoma State University: SHAREOK Repository
Subject Terms:
Document Type:
other/unknown material
File Description:
application/pdf; application/octet-stream
Language:
English
Relation:
OU Thesis and Dissertation Collections; https://hdl.handle.net/11244/335563
Availability:
Accession Number:
edsbas.BD5CD7F1
Database:
BASE
Weitere Informationen
A general simulation of distributed synthetic aperture radar (DSAR) data is useful to evaluate the theoretical performance of a DSAR system and its underlying algorithms without a deployed system in place. Simulating DSAR is a computationally intensive task due to the size and complexity of the resultant data, but a simulation must complete within a reasonable amount of time to be a useful tool in practice. Through the use of both MATLAB and CUDA, a DSAR simulation can be flexible and modifiable while benefiting from efficiently implemented GPU acceleration. Multiple simulation programs have been developed using these programming languages to explore techniques of parallelizing and optimizing the performance of DSAR data simulation.