Taira Yuichiro
Prediction of Standing Stock Variation for Phytoplankton using Neural Networks
        Journal of National Fisheries University Volume 56 Issue 3
        Page 251-259
        
    published_at 2008-02
            Title
        
        ニューラルネットワークによる植物ブランクトン現存量変動の予測
        Prediction of Standing  Stock Variation for Phytoplankton using Neural Networks
        
    
        
            Source Identifiers
        
                    [PISSN] 0370-9361
    
    
            Creator Keywords
        
            Neural network
            Prediction
            Biomass
            Phytoplankton
            Chlorophylls
            Diatoms
    This study develops a prediction method for a phytoplankton standing stock (chlorophyll-a and diatomaceous cell number) in a fish farm using data obtained from experiments for bottom sediment improvement (environmental monitoring research) in the Katada Culture Farm in Ago Bay, Mie prefecture. Results show that the fluctuation of a phytoplankton standing stock from the surface layer (a depth of 0.5 m) to the bottom layer (a depth of 0.5 m on the bottom face) can be estimated using a neural network whose inputs are water depth, water temperature, salinity, dissolved oxygen, pH, chemical oxygen demand, hours of sunshine, and respective amounts of precipitation and mean air temperature.
        
        
            Languages
        
            jpn
    
    
        
            Resource Type
        
        departmental bulletin paper
    
    
        
            Publishers
        
            National Fisheries University
    
    
        
            Date Issued
        
        2008-02
    
    
        
            File Version
        
        Version of Record
    
    
        
            Access Rights
        
        open access
    
    
            Relations
        
            
                
                
                [ISSN]0370-9361
            
    
