A comparative study of neural-network and fuzzy time series forecasting techniques - Case study: Marine fish production forecasting

Various forecasting methods have been developed on the basis of fuzzy time series data, but accuracy has been matter of concern in these forecasts. Historical data of marine fish production of India have been taken to implement the model; as such time series data obtained through sample survey are l...

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Veröffentlicht in:Indian journal of marine sciences 2013-10, Vol.42 (6), p.707-716
Hauptverfasser: Yadav, V K, Krishnan, M, Biradar, R S, Kumar, N R, Bharti, V S
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container_issue 6
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container_title Indian journal of marine sciences
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creator Yadav, V K
Krishnan, M
Biradar, R S
Kumar, N R
Bharti, V S
description Various forecasting methods have been developed on the basis of fuzzy time series data, but accuracy has been matter of concern in these forecasts. Historical data of marine fish production of India have been taken to implement the model; as such time series data obtained through sample survey are likely to be imprecise. Fuzzy sets theory of1 and fuzzy time series models introduced by2-5, were applied in this study. The forecast to marine fish production have also been obtained by developing an Artificial Neural Network (ANN) model using Back propagation algorithm. It is aimed to find the marine fish production forecast for a lead year by using different fuzzy time series models and back propagation algorithm for the forecast. Forecasted marine fish production, obtained through these techniques, has been compared and their performance has been examined. Present infers that ANN produces more accurate results in comparison of fuzzy time series methods.
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title A comparative study of neural-network and fuzzy time series forecasting techniques - Case study: Marine fish production forecasting
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