Multi-cloud management strategies for simulating IoT applications

Márkus András and Dombi József Dániel: Multi-cloud management strategies for simulating IoT applications. In: Acta cybernetica, (24) 1. pp. 83-103. (2019)

[thumbnail of actacyb_24_1_2019_083_103.pdf]
Preview
Cikk, tanulmány, mű
actacyb_24_1_2019_083_103.pdf

Download (476kB) | Preview

Abstract

The Internet of Things (IoT) paradigm is closely coupled with cloud technologies, and the support for managing sensor data is one of the primary concerns of Cloud Computing. IoT-Cloud systems are widely used to manage sensors and different smart devices connected to the cloud, hence a large amount of data is generated by these things that need to be efficiently stored and processed. Simulation platforms have the advantage of enabling the investigation of complex systems without the need of purchasing and installing physical resources. In our previous work, we chose the DISSECT-CF simulator to model IoT-Cloud systems, and we also introduced provider pricing models to enable cost-aware policies for experimentation. The aim of this paper is to further extend the simulation capabilities of this tool by enabling multi-cloud resource management. In this paper we introduce four cloud selection strategies aimed to reduce application execution time and utilization costs. We detail our proposed method towards multi-cloud extension, and evaluate the defined strategies through scenarios of a meteorological application.

Item Type: Article
Journal or Publication Title: Acta cybernetica
Date: 2019
Volume: 24
Number: 1
ISSN: 0324-721X
Page Range: pp. 83-103
Language: English
Publisher: University of Szeged, Institute of Informatics
Place of Publication: Szeged
Event Title: Conference of PhD students in computer science (11.) (2018) (Szeged)
Related URLs: http://acta.bibl.u-szeged.hu/62212/
DOI: 10.14232/actacyb.24.1.2019.7
Uncontrolled Keywords: Számítástechnika
Additional Information: Bibliogr.: p. 101-103. ; összefoglalás angol nyelven
Subjects: 01. Natural sciences
01. Natural sciences > 01.02. Computer and information sciences
Date Deposited: 2019. Jul. 17. 13:36
Last Modified: 2022. Jun. 21. 09:12
URI: http://acta.bibl.u-szeged.hu/id/eprint/59229

Actions (login required)

View Item View Item