Levy Foraging in a Dynamic Environment – Extending the Levy Search

A common task for robots is the patrolling of an unknown area with inadequate information about target locations. Under these circumstances it has been suggested that animal foraging could provide an optimal or at least sub-optimal search methodology, namely the Levy flight search. Although still in...

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Main Authors: Vincenzo Fioriti, Fabio Fratichini, Stefano Chiesa, Claudio Moriconi
Format: Article
Language:English
Published: SAGE Publishing 2015-07-01
Series:International Journal of Advanced Robotic Systems
Online Access:https://doi.org/10.5772/60414
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spelling doaj-0163acac15dd49a8a6d540ee2b04da3c2020-11-25T03:24:36ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142015-07-011210.5772/6041410.5772_60414Levy Foraging in a Dynamic Environment – Extending the Levy SearchVincenzo Fioriti0Fabio Fratichini1Stefano Chiesa2Claudio Moriconi3ENEA Centra Ricerche Casaccia, Roma, ItalyENEA Centra Ricerche Casaccia, Roma, ItalyENEA Centra Ricerche Casaccia, Roma, ItalyENEA Centra Ricerche Casaccia, Roma, ItalyA common task for robots is the patrolling of an unknown area with inadequate information about target locations. Under these circumstances it has been suggested that animal foraging could provide an optimal or at least sub-optimal search methodology, namely the Levy flight search. Although still in debate, it seems that predators somehow follow this search pattern when foraging, because it avoids being trapped in a local search if the food is beyond the sensory range. A Levy flight is a particular case of the random walk. Its displacements on a 2-D surface are drawn from the Pareto-Levy probability distribution, characterized by power law tails. The Levy flight search has many applications in optical material, ladars, optics, large database search, earthquake data analysis, location of DNA sites, human mobility, stock return analysis, online auctions, astronomy, ecology and biology. Almost all studies and simulations concerning the Levy flight foraging examine static or slowly moving (with respect to the forager) uniformly distributed resources. Moreover, in recent works a small swarm of underwater autonomous vehicles has been used to test the standard Levy search in the underwater environment, with good results. In this paper we extend the classical Levy foraging framework taking into consideration a moving target allocated on a 2-D surface according to a radial probability distribution and comparing its performance with the random walk search. The metric used in the numerical simulations is the detection rate. Simulations include the sensor resolution, intended as the maximum detection distance of the forager from the target. Furthermore, contrarily to the usual Levy foraging framework, we use only one target. Results show that Levy flight outperforms the random walk if the sensor detection radius is not too small or too large. We also find the Levy flight in the velocity of the center of mass model of a fish school according the Kuramoto equation, a famous model of synchronization phenomena. Finally, a discussion about the controversy concerning the innate or evolutionary origin of the Levy foraging is given.https://doi.org/10.5772/60414
collection DOAJ
language English
format Article
sources DOAJ
author Vincenzo Fioriti
Fabio Fratichini
Stefano Chiesa
Claudio Moriconi
spellingShingle Vincenzo Fioriti
Fabio Fratichini
Stefano Chiesa
Claudio Moriconi
Levy Foraging in a Dynamic Environment – Extending the Levy Search
International Journal of Advanced Robotic Systems
author_facet Vincenzo Fioriti
Fabio Fratichini
Stefano Chiesa
Claudio Moriconi
author_sort Vincenzo Fioriti
title Levy Foraging in a Dynamic Environment – Extending the Levy Search
title_short Levy Foraging in a Dynamic Environment – Extending the Levy Search
title_full Levy Foraging in a Dynamic Environment – Extending the Levy Search
title_fullStr Levy Foraging in a Dynamic Environment – Extending the Levy Search
title_full_unstemmed Levy Foraging in a Dynamic Environment – Extending the Levy Search
title_sort levy foraging in a dynamic environment – extending the levy search
publisher SAGE Publishing
series International Journal of Advanced Robotic Systems
issn 1729-8814
publishDate 2015-07-01
description A common task for robots is the patrolling of an unknown area with inadequate information about target locations. Under these circumstances it has been suggested that animal foraging could provide an optimal or at least sub-optimal search methodology, namely the Levy flight search. Although still in debate, it seems that predators somehow follow this search pattern when foraging, because it avoids being trapped in a local search if the food is beyond the sensory range. A Levy flight is a particular case of the random walk. Its displacements on a 2-D surface are drawn from the Pareto-Levy probability distribution, characterized by power law tails. The Levy flight search has many applications in optical material, ladars, optics, large database search, earthquake data analysis, location of DNA sites, human mobility, stock return analysis, online auctions, astronomy, ecology and biology. Almost all studies and simulations concerning the Levy flight foraging examine static or slowly moving (with respect to the forager) uniformly distributed resources. Moreover, in recent works a small swarm of underwater autonomous vehicles has been used to test the standard Levy search in the underwater environment, with good results. In this paper we extend the classical Levy foraging framework taking into consideration a moving target allocated on a 2-D surface according to a radial probability distribution and comparing its performance with the random walk search. The metric used in the numerical simulations is the detection rate. Simulations include the sensor resolution, intended as the maximum detection distance of the forager from the target. Furthermore, contrarily to the usual Levy foraging framework, we use only one target. Results show that Levy flight outperforms the random walk if the sensor detection radius is not too small or too large. We also find the Levy flight in the velocity of the center of mass model of a fish school according the Kuramoto equation, a famous model of synchronization phenomena. Finally, a discussion about the controversy concerning the innate or evolutionary origin of the Levy foraging is given.
url https://doi.org/10.5772/60414
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