An Evaluation of ARIMA and Holt Winters Time Series Models for Forecasting Monthly Precipitation and Monthly Temperature (Case Study: Latian Station)

Climatic parameters including temperature and precipitation have an important role in  water resources management of river basin as well as agricultural planning. Time series models are a kind of short-term prediction for these parameters. Precipitation is one of the most important climate parameter...

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Main Authors: Leila Goodarzi, Abbas Roozbahani
Format: Article
Language:fas
Published: Shahid Chamran University of Ahvaz 2017-11-01
Series:علوم و مهندسی آبیاری
Subjects:
Online Access:http://jise.scu.ac.ir/article_13312_b466ad3c13adc239f9e810f7c2f50ce7.pdf
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spelling doaj-033b4ec5dd894898bda4e98caa623cde2020-11-25T02:54:25ZfasShahid Chamran University of Ahvazعلوم و مهندسی آبیاری2588-59522588-59602017-11-0140313714910.22055/jise.2017.1331213312An Evaluation of ARIMA and Holt Winters Time Series Models for Forecasting Monthly Precipitation and Monthly Temperature (Case Study: Latian Station)Leila Goodarzi0Abbas Roozbahani1گروه مهندسی آب-پردیس ابوریحانهیئت علمی دانشگاه تهرانClimatic parameters including temperature and precipitation have an important role in  water resources management of river basin as well as agricultural planning. Time series models are a kind of short-term prediction for these parameters. Precipitation is one of the most important climate parameters that should be addressed in water resources management. This is especially important in Iran, with an average annual rainfall of about 250 mm. Another climate parameter is temperature, which changes the climate structure of each location. For this reason, the study on temperature at various time and space scales has been addressed in a large part of the climatological researches. Time series analysis is widely used as a tool for temperature and rainfall predictions. So far, various studies have been done to predict climate and hydrologic parameters using time series analysis models. Kaushik and Singh (2008) predicted  monthly temperature and precipitation in India using the seasonal Arima Model. There are also other researchers focused on application of ARMIA model such as Naill and Momani (2009), Tularam and Ilahee (2010) and Mondal et al. (2014). Holt Winters is also one of the time series models used for prediction. For example, Costa et al. (2015) predicted  water quality parameters using the Holt Winters model and presented its effectiveness in the prediction. <br />In this research, the ability of time series models for forecasting  monthly temperature and precipitation of Latian station in Iran has been examined. Trend analysis was conducted using the Seasonal Mann- Kendall test and then, various Autoregressive Integrated Moving Average Models (ARIMA) as well as Holt Winters model were fitted to the data and the best time series model was finally selected.http://jise.scu.ac.ir/article_13312_b466ad3c13adc239f9e810f7c2f50ce7.pdftime seriesseasonal mann- kendall testseasonal arima modelholt winters modellatian
collection DOAJ
language fas
format Article
sources DOAJ
author Leila Goodarzi
Abbas Roozbahani
spellingShingle Leila Goodarzi
Abbas Roozbahani
An Evaluation of ARIMA and Holt Winters Time Series Models for Forecasting Monthly Precipitation and Monthly Temperature (Case Study: Latian Station)
علوم و مهندسی آبیاری
time series
seasonal mann- kendall test
seasonal arima model
holt winters model
latian
author_facet Leila Goodarzi
Abbas Roozbahani
author_sort Leila Goodarzi
title An Evaluation of ARIMA and Holt Winters Time Series Models for Forecasting Monthly Precipitation and Monthly Temperature (Case Study: Latian Station)
title_short An Evaluation of ARIMA and Holt Winters Time Series Models for Forecasting Monthly Precipitation and Monthly Temperature (Case Study: Latian Station)
title_full An Evaluation of ARIMA and Holt Winters Time Series Models for Forecasting Monthly Precipitation and Monthly Temperature (Case Study: Latian Station)
title_fullStr An Evaluation of ARIMA and Holt Winters Time Series Models for Forecasting Monthly Precipitation and Monthly Temperature (Case Study: Latian Station)
title_full_unstemmed An Evaluation of ARIMA and Holt Winters Time Series Models for Forecasting Monthly Precipitation and Monthly Temperature (Case Study: Latian Station)
title_sort evaluation of arima and holt winters time series models for forecasting monthly precipitation and monthly temperature (case study: latian station)
publisher Shahid Chamran University of Ahvaz
series علوم و مهندسی آبیاری
issn 2588-5952
2588-5960
publishDate 2017-11-01
description Climatic parameters including temperature and precipitation have an important role in  water resources management of river basin as well as agricultural planning. Time series models are a kind of short-term prediction for these parameters. Precipitation is one of the most important climate parameters that should be addressed in water resources management. This is especially important in Iran, with an average annual rainfall of about 250 mm. Another climate parameter is temperature, which changes the climate structure of each location. For this reason, the study on temperature at various time and space scales has been addressed in a large part of the climatological researches. Time series analysis is widely used as a tool for temperature and rainfall predictions. So far, various studies have been done to predict climate and hydrologic parameters using time series analysis models. Kaushik and Singh (2008) predicted  monthly temperature and precipitation in India using the seasonal Arima Model. There are also other researchers focused on application of ARMIA model such as Naill and Momani (2009), Tularam and Ilahee (2010) and Mondal et al. (2014). Holt Winters is also one of the time series models used for prediction. For example, Costa et al. (2015) predicted  water quality parameters using the Holt Winters model and presented its effectiveness in the prediction. <br />In this research, the ability of time series models for forecasting  monthly temperature and precipitation of Latian station in Iran has been examined. Trend analysis was conducted using the Seasonal Mann- Kendall test and then, various Autoregressive Integrated Moving Average Models (ARIMA) as well as Holt Winters model were fitted to the data and the best time series model was finally selected.
topic time series
seasonal mann- kendall test
seasonal arima model
holt winters model
latian
url http://jise.scu.ac.ir/article_13312_b466ad3c13adc239f9e810f7c2f50ce7.pdf
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