A Comparative Study of Bio-Inspired Odour Source Localisation Strategies from the State-Action Perspective

Locating odour sources with robots is an interesting problem with many important real-world applications. In the past years, the robotics community has adapted several bio-inspired strategies to search for odour sources in a variety of environments. This work studies and compares some of the most co...

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Main Authors: João Macedo, Lino Marques, Ernesto Costa
Format: Article
Language:English
Published: MDPI AG 2019-05-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/19/10/2231
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spelling doaj-6fa80b494b3a4d7680aeeaf01352e39e2020-11-25T01:38:03ZengMDPI AGSensors1424-82202019-05-011910223110.3390/s19102231s19102231A Comparative Study of Bio-Inspired Odour Source Localisation Strategies from the State-Action PerspectiveJoão Macedo0Lino Marques1Ernesto Costa2Institute of Systems and Robotics, University of Coimbra, 3030-290 Coimbra, PortugalInstitute of Systems and Robotics, University of Coimbra, 3030-290 Coimbra, PortugalCentre for Informatics and Systems of the University of Coimbra, 3030-290 Coimbra, PortugalLocating odour sources with robots is an interesting problem with many important real-world applications. In the past years, the robotics community has adapted several bio-inspired strategies to search for odour sources in a variety of environments. This work studies and compares some of the most common strategies from a behavioural perspective with the aim of knowing: (1) how different are the behaviours exhibited by the strategies for the same perceptual state; and (2) which are the most consensual actions for each perceptual state in each environment. The first step of this analysis consists of clustering the perceptual states, and building histograms of the actions taken for each cluster. In case of (1), a histogram is made for each strategy separately, whereas for (2), a single histogram containing the actions of all strategies is produced for each cluster of states. Finally, statistical hypotheses tests are used to find the statistically significant differences between the behaviours of the strategies in each state. The data used for performing this study was gathered from a purpose-built simulator which accurately simulates the real-world phenomena of odour dispersion and air flow, whilst being sufficiently fast to be employed in learning and evolutionary robotics experiments. This paper also proposes an xml-inspired structure for the generated datasets that are used to store the perceptual information of the robots over the course of the simulations. These datasets may be used in learning experiments to estimate the quality of a candidate solution or for measuring its novelty.https://www.mdpi.com/1424-8220/19/10/2231odour source localisationmobile robot olfactionbio-inspired strategies
collection DOAJ
language English
format Article
sources DOAJ
author João Macedo
Lino Marques
Ernesto Costa
spellingShingle João Macedo
Lino Marques
Ernesto Costa
A Comparative Study of Bio-Inspired Odour Source Localisation Strategies from the State-Action Perspective
Sensors
odour source localisation
mobile robot olfaction
bio-inspired strategies
author_facet João Macedo
Lino Marques
Ernesto Costa
author_sort João Macedo
title A Comparative Study of Bio-Inspired Odour Source Localisation Strategies from the State-Action Perspective
title_short A Comparative Study of Bio-Inspired Odour Source Localisation Strategies from the State-Action Perspective
title_full A Comparative Study of Bio-Inspired Odour Source Localisation Strategies from the State-Action Perspective
title_fullStr A Comparative Study of Bio-Inspired Odour Source Localisation Strategies from the State-Action Perspective
title_full_unstemmed A Comparative Study of Bio-Inspired Odour Source Localisation Strategies from the State-Action Perspective
title_sort comparative study of bio-inspired odour source localisation strategies from the state-action perspective
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2019-05-01
description Locating odour sources with robots is an interesting problem with many important real-world applications. In the past years, the robotics community has adapted several bio-inspired strategies to search for odour sources in a variety of environments. This work studies and compares some of the most common strategies from a behavioural perspective with the aim of knowing: (1) how different are the behaviours exhibited by the strategies for the same perceptual state; and (2) which are the most consensual actions for each perceptual state in each environment. The first step of this analysis consists of clustering the perceptual states, and building histograms of the actions taken for each cluster. In case of (1), a histogram is made for each strategy separately, whereas for (2), a single histogram containing the actions of all strategies is produced for each cluster of states. Finally, statistical hypotheses tests are used to find the statistically significant differences between the behaviours of the strategies in each state. The data used for performing this study was gathered from a purpose-built simulator which accurately simulates the real-world phenomena of odour dispersion and air flow, whilst being sufficiently fast to be employed in learning and evolutionary robotics experiments. This paper also proposes an xml-inspired structure for the generated datasets that are used to store the perceptual information of the robots over the course of the simulations. These datasets may be used in learning experiments to estimate the quality of a candidate solution or for measuring its novelty.
topic odour source localisation
mobile robot olfaction
bio-inspired strategies
url https://www.mdpi.com/1424-8220/19/10/2231
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