A simulation model for Japanese sardine (Sardinops melanostictus) migrations in the western North Pacific
Authored by Shin-ichi Ito, Takeshi Okunishi, Yasuhiro Yamanaka
Date Published: 2009
DOI: 10.1016/j.ecolmodel.2008.10.020
Sponsors:
Japanese Fisheries Research Agency (FRA)
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Abstract
A two-dimensional individual-based model coupled with fish bioenergetics
was developed to simulate migration and growth of Japanese sardine
(Sardinops melanostictus) in the western North Pacific. In the model, fish movement is controlled by feeding and spawning migrations with
passive transport by simulated ocean current. Feeding migration was
assumed to be governed by search for local optimal habitats, which is
estimated by the spatial distribution of net growth rate of a sardine
bioenergetics model. The forage density is one of the most important
factors which determines the geographical distributions of Japanese
sardine during their feeding migrations. Spawning migration was modeled
by an artificial neural network (ANN) with an input layer composed of
five neurons that receive environmental information (surface
temperature, temperature change experienced, current speed, day length
and distance from land). Once the weight of the ANN was determined, the
fish movement was solved by combining with the feeding migration model.
To obtain the weights of the ANN, three experiments were conducted in
which (1) the ANN was trained with back propagation (BP) method with
optimum training data, (2) genetic algorithm (GA) was used to adjust the
weights and (3) the weights of the ANN were decided by the GA with BP, respectively BP is a supervised learning technique for training ANNs. GA
is a search technique used in computing to find approximate solutions, such as optimization of parameters. Condition factor of sardine in the
model is used as a factor of optimization in the GA works. The methods
using only BP or GA did not work to search the appropriate weights in
the ANN for spawning migration. in the third method, which is a combined
approach of GA with BP, the model reproduced the most realistic spawning
migration of Japanese sardine. The changes in temperature and day length
are important factors for the orientation cues of Japanese sardine
according to the sensitivity analysis of the weights of the ANN. (C)
2008 Elsevier B.V All rights reserved.
Tags
growth
Mechanisms
Recruitment
Ecosystem model
Ocean
Sockeye-salmon
Anchovy engraulis-japonicus
Fish bioenergetics model
Far-eastern
sardine
Sagami bay