A Comparison between Metaheuristics as Strategies for Minimizing Cyclic Instability in Ambient Intelligence

In this paper we present a comparison between six novel approaches to the fundamental problem of cyclic instability in Ambient Intelligence. These approaches are based on different optimization algorithms, Particle Swarm Optimization (PSO), Bee Swarm Optimization (BSO), micro Particle Swarm Optimiza...

Full description

Bibliographic Details
Main Authors: Vic Callaghan, Marco Sotelo, Efren Mezura, Rosario Baltazar, Leoncio A. Romero, Victor Zamudio
Format: Article
Language:English
Published: MDPI AG 2012-08-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/12/8/10990
id doaj-4cb7ffeee58d4b42909190406d2a6e93
record_format Article
spelling doaj-4cb7ffeee58d4b42909190406d2a6e932020-11-24T23:28:51ZengMDPI AGSensors1424-82202012-08-01128109901101210.3390/s120810990A Comparison between Metaheuristics as Strategies for Minimizing Cyclic Instability in Ambient IntelligenceVic CallaghanMarco SoteloEfren MezuraRosario BaltazarLeoncio A. RomeroVictor ZamudioIn this paper we present a comparison between six novel approaches to the fundamental problem of cyclic instability in Ambient Intelligence. These approaches are based on different optimization algorithms, Particle Swarm Optimization (PSO), Bee Swarm Optimization (BSO), micro Particle Swarm Optimization (μ-PSO), Artificial Immune System (AIS), Genetic Algorithm (GA) and Mutual Information Maximization for Input Clustering (MIMIC). In order to be able to use these algorithms, we introduced the concept of<em> Average Cumulative Oscillation</em> (ACO), which enabled us to measure the average behavior of the system. This approach has the advantage that it does not need to analyze the topological properties of the system, in particular the loops, which can be computationally expensive. In order to test these algorithms we used the well-known discrete system called the Game of Life for 9, 25, 49 and 289 agents. It was found that PSO and μ-PSO have the best performance in terms of the number of agents locked. These results were confirmed using the Wilcoxon Signed Rank Test. This novel and successful approach is very promising and can be used to remove instabilities in real scenarios with a large number of agents (including nomadic agents) and complex interactions and dependencies among them.http://www.mdpi.com/1424-8220/12/8/10990cyclic instabilityambient intelligencelocking
collection DOAJ
language English
format Article
sources DOAJ
author Vic Callaghan
Marco Sotelo
Efren Mezura
Rosario Baltazar
Leoncio A. Romero
Victor Zamudio
spellingShingle Vic Callaghan
Marco Sotelo
Efren Mezura
Rosario Baltazar
Leoncio A. Romero
Victor Zamudio
A Comparison between Metaheuristics as Strategies for Minimizing Cyclic Instability in Ambient Intelligence
Sensors
cyclic instability
ambient intelligence
locking
author_facet Vic Callaghan
Marco Sotelo
Efren Mezura
Rosario Baltazar
Leoncio A. Romero
Victor Zamudio
author_sort Vic Callaghan
title A Comparison between Metaheuristics as Strategies for Minimizing Cyclic Instability in Ambient Intelligence
title_short A Comparison between Metaheuristics as Strategies for Minimizing Cyclic Instability in Ambient Intelligence
title_full A Comparison between Metaheuristics as Strategies for Minimizing Cyclic Instability in Ambient Intelligence
title_fullStr A Comparison between Metaheuristics as Strategies for Minimizing Cyclic Instability in Ambient Intelligence
title_full_unstemmed A Comparison between Metaheuristics as Strategies for Minimizing Cyclic Instability in Ambient Intelligence
title_sort comparison between metaheuristics as strategies for minimizing cyclic instability in ambient intelligence
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2012-08-01
description In this paper we present a comparison between six novel approaches to the fundamental problem of cyclic instability in Ambient Intelligence. These approaches are based on different optimization algorithms, Particle Swarm Optimization (PSO), Bee Swarm Optimization (BSO), micro Particle Swarm Optimization (μ-PSO), Artificial Immune System (AIS), Genetic Algorithm (GA) and Mutual Information Maximization for Input Clustering (MIMIC). In order to be able to use these algorithms, we introduced the concept of<em> Average Cumulative Oscillation</em> (ACO), which enabled us to measure the average behavior of the system. This approach has the advantage that it does not need to analyze the topological properties of the system, in particular the loops, which can be computationally expensive. In order to test these algorithms we used the well-known discrete system called the Game of Life for 9, 25, 49 and 289 agents. It was found that PSO and μ-PSO have the best performance in terms of the number of agents locked. These results were confirmed using the Wilcoxon Signed Rank Test. This novel and successful approach is very promising and can be used to remove instabilities in real scenarios with a large number of agents (including nomadic agents) and complex interactions and dependencies among them.
topic cyclic instability
ambient intelligence
locking
url http://www.mdpi.com/1424-8220/12/8/10990
work_keys_str_mv AT viccallaghan acomparisonbetweenmetaheuristicsasstrategiesforminimizingcyclicinstabilityinambientintelligence
AT marcosotelo acomparisonbetweenmetaheuristicsasstrategiesforminimizingcyclicinstabilityinambientintelligence
AT efrenmezura acomparisonbetweenmetaheuristicsasstrategiesforminimizingcyclicinstabilityinambientintelligence
AT rosariobaltazar acomparisonbetweenmetaheuristicsasstrategiesforminimizingcyclicinstabilityinambientintelligence
AT leoncioaromero acomparisonbetweenmetaheuristicsasstrategiesforminimizingcyclicinstabilityinambientintelligence
AT victorzamudio acomparisonbetweenmetaheuristicsasstrategiesforminimizingcyclicinstabilityinambientintelligence
AT viccallaghan comparisonbetweenmetaheuristicsasstrategiesforminimizingcyclicinstabilityinambientintelligence
AT marcosotelo comparisonbetweenmetaheuristicsasstrategiesforminimizingcyclicinstabilityinambientintelligence
AT efrenmezura comparisonbetweenmetaheuristicsasstrategiesforminimizingcyclicinstabilityinambientintelligence
AT rosariobaltazar comparisonbetweenmetaheuristicsasstrategiesforminimizingcyclicinstabilityinambientintelligence
AT leoncioaromero comparisonbetweenmetaheuristicsasstrategiesforminimizingcyclicinstabilityinambientintelligence
AT victorzamudio comparisonbetweenmetaheuristicsasstrategiesforminimizingcyclicinstabilityinambientintelligence
_version_ 1725547661349617664