Modeling performance and information exchange between fishing vessels with artificial neural networks
Authored by M Dreyfus-Leon, D Gaertner
Date Published: 2006
DOI: 10.1016/j.ecolmodel.2005.11.006
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Abstract
A fishery is simulated in which 20 artificial vessels learn to make
decisions through an artificial neural network in order to search for
schools of fish among the available fishing grounds. Three scenarios
with different degrees of variability including uncertainty in the
searching process, are considered. The simulation model accounts for the
main features commonly observed in a purse seine tuna fishery in a time
and a space scale. Vessel strategies are chosen by the artificial neural
network, on the basis of the following decision criteria: information
concerning time searching in a specific area, previous performance in
this area, knowledge of the quality of surrounding fishing grounds, presence of other vessels fishing actively and trip length. An analysis
of the effects of sharing information between vessels is done and this
was compared to individual artificial fishing vessels. In general, a
group of fishing vessels show higher performance than individual
vessels. A convex performance comparison curve for several group sizes
is found in all scenarios considered. The optimum group size differs
according to the variability of the artificial world. At bigger group
sizes performance decreases, probably due to competition and depletion
effects of some fishing grounds. (c) 2005 Elsevier B.V. All rights
reserved.
Tags
behavior
Dynamics
Search
fisheries
Stock
Abundance