Přístupnostní navigace
E-application
Search Search Close
Publication detail
KENYERES, M. KENYERES, J. ŠKORPIL, V.
Original Title
The Distributed Convergence Classifier Using the Finite Difference
Type
journal article in Web of Science
Language
English
Original Abstract
The paper presents a novel distributed classifier of the convergence, which allows to detect the convergence/the divergence of a distributed converging algorithm. Since this classifier is supposed to be primarily applied in wireless sensor networks, its proposal makes provision for the character of these networks. The classifier is based on the mechanism of comparison of the forward finite differences from two consequent iterations. The convergence/the divergence is classifiable only in terms of the changes of the inner states of a particular node and therefore, no message redundancy is required for its proper functionality.
Keywords
Distributed computing, wireless sensor networks, average consensus, distributed classifier
Authors
KENYERES, M.; KENYERES, J.; ŠKORPIL, V.
Released
1. 4. 2016
ISBN
1210-2512
Periodical
Radioengineering
Year of study
25
Number
1
State
Czech Republic
Pages from
148
Pages to
155
Pages count
9
BibTex
@article{BUT122510, author="Martin {Kenyeres} and Jozef {Kenyeres} and Vladislav {Škorpil}", title="The Distributed Convergence Classifier Using the Finite Difference", journal="Radioengineering", year="2016", volume="25", number="1", pages="148--155", doi="10.13164/re.2016.0148", issn="1210-2512" }