author_facet Kim, Y‐H.
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author Kim, Y‐H.
spellingShingle Kim, Y‐H.
Journal of Fish Biology
New modelling of complex fish migration by application of chaos theory and neural network
Aquatic Science
Ecology, Evolution, Behavior and Systematics
author_sort kim, y‐h.
spelling Kim, Y‐H. 0022-1112 1095-8649 Wiley Aquatic Science Ecology, Evolution, Behavior and Systematics http://dx.doi.org/10.1111/j.1095-8649.2003.0216s.x <jats:p>Rules or patterns of movement or migration were still vague even for the main commercial fishes due to different routs in scale or in different, times resulting from complex environments to complex behaviour concept. The quantitative model of fish migration has been investigated using chaos theory to mimic more realistic fish movements by time steps from environmental and biological stimuli. The model uses three steps within a model neural network such as input stimuli, central decision‐making and response output in fish movements. The stimuli in the first step include the main physical (temperature, salinity, light, flow <jats:italic>etc</jats:italic>.) and biotic factors (prey, predator, life cycle <jats:italic>etc</jats:italic>.) which could be quantified as intensity parameters which were then normalized as ratios. The decision‐making process can be generated available signals for motor neuron using Lorenz chaos equations by the relevant stimuli. The response of fish movements from the output signal representing speed and direction can be re‐regulated as object‐oriented migration depending on physiological state or life cycle by third response filtering. The simulation results seen as 2‐dimensional seasonal migration for demersal fishes in the southern sea of the Korean Peninsula represented more realistic meandering tracks than the interpolated tracks in previous reports.</jats:p> New modelling of complex fish migration by application of chaos theory and neural network Journal of Fish Biology
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title New modelling of complex fish migration by application of chaos theory and neural network
title_unstemmed New modelling of complex fish migration by application of chaos theory and neural network
title_full New modelling of complex fish migration by application of chaos theory and neural network
title_fullStr New modelling of complex fish migration by application of chaos theory and neural network
title_full_unstemmed New modelling of complex fish migration by application of chaos theory and neural network
title_short New modelling of complex fish migration by application of chaos theory and neural network
title_sort new modelling of complex fish migration by application of chaos theory and neural network
topic Aquatic Science
Ecology, Evolution, Behavior and Systematics
url http://dx.doi.org/10.1111/j.1095-8649.2003.0216s.x
publishDate 2003
physical 234-234
description <jats:p>Rules or patterns of movement or migration were still vague even for the main commercial fishes due to different routs in scale or in different, times resulting from complex environments to complex behaviour concept. The quantitative model of fish migration has been investigated using chaos theory to mimic more realistic fish movements by time steps from environmental and biological stimuli. The model uses three steps within a model neural network such as input stimuli, central decision‐making and response output in fish movements. The stimuli in the first step include the main physical (temperature, salinity, light, flow <jats:italic>etc</jats:italic>.) and biotic factors (prey, predator, life cycle <jats:italic>etc</jats:italic>.) which could be quantified as intensity parameters which were then normalized as ratios. The decision‐making process can be generated available signals for motor neuron using Lorenz chaos equations by the relevant stimuli. The response of fish movements from the output signal representing speed and direction can be re‐regulated as object‐oriented migration depending on physiological state or life cycle by third response filtering. The simulation results seen as 2‐dimensional seasonal migration for demersal fishes in the southern sea of the Korean Peninsula represented more realistic meandering tracks than the interpolated tracks in previous reports.</jats:p>
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author Kim, Y‐H.
author_facet Kim, Y‐H., Kim, Y‐H.
author_sort kim, y‐h.
container_issue s1
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container_title Journal of Fish Biology
container_volume 63
description <jats:p>Rules or patterns of movement or migration were still vague even for the main commercial fishes due to different routs in scale or in different, times resulting from complex environments to complex behaviour concept. The quantitative model of fish migration has been investigated using chaos theory to mimic more realistic fish movements by time steps from environmental and biological stimuli. The model uses three steps within a model neural network such as input stimuli, central decision‐making and response output in fish movements. The stimuli in the first step include the main physical (temperature, salinity, light, flow <jats:italic>etc</jats:italic>.) and biotic factors (prey, predator, life cycle <jats:italic>etc</jats:italic>.) which could be quantified as intensity parameters which were then normalized as ratios. The decision‐making process can be generated available signals for motor neuron using Lorenz chaos equations by the relevant stimuli. The response of fish movements from the output signal representing speed and direction can be re‐regulated as object‐oriented migration depending on physiological state or life cycle by third response filtering. The simulation results seen as 2‐dimensional seasonal migration for demersal fishes in the southern sea of the Korean Peninsula represented more realistic meandering tracks than the interpolated tracks in previous reports.</jats:p>
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spelling Kim, Y‐H. 0022-1112 1095-8649 Wiley Aquatic Science Ecology, Evolution, Behavior and Systematics http://dx.doi.org/10.1111/j.1095-8649.2003.0216s.x <jats:p>Rules or patterns of movement or migration were still vague even for the main commercial fishes due to different routs in scale or in different, times resulting from complex environments to complex behaviour concept. The quantitative model of fish migration has been investigated using chaos theory to mimic more realistic fish movements by time steps from environmental and biological stimuli. The model uses three steps within a model neural network such as input stimuli, central decision‐making and response output in fish movements. The stimuli in the first step include the main physical (temperature, salinity, light, flow <jats:italic>etc</jats:italic>.) and biotic factors (prey, predator, life cycle <jats:italic>etc</jats:italic>.) which could be quantified as intensity parameters which were then normalized as ratios. The decision‐making process can be generated available signals for motor neuron using Lorenz chaos equations by the relevant stimuli. The response of fish movements from the output signal representing speed and direction can be re‐regulated as object‐oriented migration depending on physiological state or life cycle by third response filtering. The simulation results seen as 2‐dimensional seasonal migration for demersal fishes in the southern sea of the Korean Peninsula represented more realistic meandering tracks than the interpolated tracks in previous reports.</jats:p> New modelling of complex fish migration by application of chaos theory and neural network Journal of Fish Biology
spellingShingle Kim, Y‐H., Journal of Fish Biology, New modelling of complex fish migration by application of chaos theory and neural network, Aquatic Science, Ecology, Evolution, Behavior and Systematics
title New modelling of complex fish migration by application of chaos theory and neural network
title_full New modelling of complex fish migration by application of chaos theory and neural network
title_fullStr New modelling of complex fish migration by application of chaos theory and neural network
title_full_unstemmed New modelling of complex fish migration by application of chaos theory and neural network
title_short New modelling of complex fish migration by application of chaos theory and neural network
title_sort new modelling of complex fish migration by application of chaos theory and neural network
title_unstemmed New modelling of complex fish migration by application of chaos theory and neural network
topic Aquatic Science, Ecology, Evolution, Behavior and Systematics
url http://dx.doi.org/10.1111/j.1095-8649.2003.0216s.x