DocumentCode
254916
Title
Towards the Minimization of Cyclic Instability Using Embedded Algorithms
Author
Pacheco Salinas, Jose Antonio ; Zamudio, Victor ; Casillas, Miguel ; Lino, Carlos ; Baltazar, Rosario ; Callaghan, Vic ; Doctor, Faiyaz
Author_Institution
Div. of Postgrad. Studies & Res., Inst. Tecnol. de Leon, León, Mexico
fYear
2014
fDate
June 30 2014-July 4 2014
Firstpage
249
Lastpage
251
Abstract
In recent years, the problem of cyclic instability has been investigated mainly using two approaches: analysing the topological properties of the system (finding loops or feedback) and bio-inspired optimization. One of the main disadvantages of analysing the topology of the system (i.e. The connectivity of the agents involved in the environment) is the computational cost (that could be increased if the environment includes nomadic agents). Optimization-based approaches have been proven to work very well, even in the case of nomadic agents. However, the optimisation approach has been deployed mainly using computer simulations. With the breakthrough of integrated circuits, allowing a wide variety of low cost microcontrollers, the possibility of implementing intelligent algorithms (such as fuzzy logic, neural networks, etc.) on embedded agents is a reality. In this paper, we present a preliminary analysis toward the implementation of bio-inspired optimisation algorithms on embedded systems. Our long-term goal is to be able to prevent cyclic instability in real and complex rule based multi-agent environments using optimisation algorithms on embedded system.
Keywords
embedded systems; knowledge based systems; minimisation; multi-agent systems; bioinspired optimisation algorithms; bioinspired optimization; computational cost; computer simulations; cyclic instability minimization; embedded agents; embedded algorithms; integrated circuits; intelligent algorithms; microcontrollers; nomadic agents; rule based multiagent environments; system topology; topological properties; Algorithm design and analysis; Computational efficiency; Embedded systems; Genetic algorithms; Hardware; Microcontrollers; Optimization; bio-inspired optimisation; cyclic instability; embedded system;
fLanguage
English
Publisher
ieee
Conference_Titel
Intelligent Environments (IE), 2014 International Conference on
Conference_Location
Shanghai
Type
conf
DOI
10.1109/IE.2014.46
Filename
6910457
Link To Document