Arima and integrated Arfima models for forecasting annual demersal and pelagic marine fish production in Malaysia

The seas surrounding Malaysia provide a rich source of marine fisheries. The fisheries industry is an important economic earner and the total marine fish production has increased drastically from 242,900 metric tonnes in 1970 to around a million metric tonnes in the year 2000. Since fisheries resour...

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Main Authors: Shitan, Mahendran, Wee, Pauline Mah Jin, Lim, Ying Chin, Lim, Ying Siew
Format: Article
Language:English
Published: Institute for Mathematical Research, Universiti Putra Malaysia 2008
Online Access:http://psasir.upm.edu.my/id/eprint/12597/1/04._MAHENDRAN.pdf
http://psasir.upm.edu.my/id/eprint/12597/
http://einspem.upm.edu.my/journal/volume2.2.php
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spelling my.upm.eprints.125972015-06-02T00:19:19Z http://psasir.upm.edu.my/id/eprint/12597/ Arima and integrated Arfima models for forecasting annual demersal and pelagic marine fish production in Malaysia Shitan, Mahendran Wee, Pauline Mah Jin Lim, Ying Chin Lim, Ying Siew The seas surrounding Malaysia provide a rich source of marine fisheries. The fisheries industry is an important economic earner and the total marine fish production has increased drastically from 242,900 metric tonnes in 1970 to around a million metric tonnes in the year 2000. Since fisheries resources are renewable, proper management issues should be taken to manage these fisheries resources. From the management point of view, fish forecasting is a very important tool for fisheries managers and scientists to enable them to decide on sustainable management issues. Time series models have been used to forecast various phenomena in many fields. In a previous research by Mahendran Shitan et. al. (2004), the maximum likelihood and bootstrap method were used to forecast the total Malaysian marine fish production. Marine fish can be sub-classified as demersal marine fish and pelagic marine fish and it would be interesting to forecast the individual composition of these categories. Therefore, in this research we fit time series models to forecast the demersal and pelagic marine fish production using ARIMA and integrated ARFIMA models and make predictions of each category. Our results indicate that the ARIMA models appear to be the better models and the forecasted amounts for the year 2011 are approximately 373,370 and 666,460 metric tonnes for the demersal and pelagic marine fish, respectively. Institute for Mathematical Research, Universiti Putra Malaysia 2008 Article PeerReviewed application/pdf en http://psasir.upm.edu.my/id/eprint/12597/1/04._MAHENDRAN.pdf Shitan, Mahendran and Wee, Pauline Mah Jin and Lim, Ying Chin and Lim, Ying Siew (2008) Arima and integrated Arfima models for forecasting annual demersal and pelagic marine fish production in Malaysia. Malaysian Journal of Mathematical Sciences, 2 (2). pp. 41-54. ISSN 1823-8343; ESSN: 2289-750X http://einspem.upm.edu.my/journal/volume2.2.php
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
description The seas surrounding Malaysia provide a rich source of marine fisheries. The fisheries industry is an important economic earner and the total marine fish production has increased drastically from 242,900 metric tonnes in 1970 to around a million metric tonnes in the year 2000. Since fisheries resources are renewable, proper management issues should be taken to manage these fisheries resources. From the management point of view, fish forecasting is a very important tool for fisheries managers and scientists to enable them to decide on sustainable management issues. Time series models have been used to forecast various phenomena in many fields. In a previous research by Mahendran Shitan et. al. (2004), the maximum likelihood and bootstrap method were used to forecast the total Malaysian marine fish production. Marine fish can be sub-classified as demersal marine fish and pelagic marine fish and it would be interesting to forecast the individual composition of these categories. Therefore, in this research we fit time series models to forecast the demersal and pelagic marine fish production using ARIMA and integrated ARFIMA models and make predictions of each category. Our results indicate that the ARIMA models appear to be the better models and the forecasted amounts for the year 2011 are approximately 373,370 and 666,460 metric tonnes for the demersal and pelagic marine fish, respectively.
format Article
author Shitan, Mahendran
Wee, Pauline Mah Jin
Lim, Ying Chin
Lim, Ying Siew
spellingShingle Shitan, Mahendran
Wee, Pauline Mah Jin
Lim, Ying Chin
Lim, Ying Siew
Arima and integrated Arfima models for forecasting annual demersal and pelagic marine fish production in Malaysia
author_facet Shitan, Mahendran
Wee, Pauline Mah Jin
Lim, Ying Chin
Lim, Ying Siew
author_sort Shitan, Mahendran
title Arima and integrated Arfima models for forecasting annual demersal and pelagic marine fish production in Malaysia
title_short Arima and integrated Arfima models for forecasting annual demersal and pelagic marine fish production in Malaysia
title_full Arima and integrated Arfima models for forecasting annual demersal and pelagic marine fish production in Malaysia
title_fullStr Arima and integrated Arfima models for forecasting annual demersal and pelagic marine fish production in Malaysia
title_full_unstemmed Arima and integrated Arfima models for forecasting annual demersal and pelagic marine fish production in Malaysia
title_sort arima and integrated arfima models for forecasting annual demersal and pelagic marine fish production in malaysia
publisher Institute for Mathematical Research, Universiti Putra Malaysia
publishDate 2008
url http://psasir.upm.edu.my/id/eprint/12597/1/04._MAHENDRAN.pdf
http://psasir.upm.edu.my/id/eprint/12597/
http://einspem.upm.edu.my/journal/volume2.2.php
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score 13.211869