Prediction of Rainfall Trends Using Forecasting Approaches Based on Singular Spectrum Analysis

Advanced technologies such as the Internet of Things provide an integrated platform for weather focusing, including rainfall and flood prediction. Large rainfall data frequently contain noise, which can be difficult to analyze using a standard time series model due to violated assumptions. Singular...

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Main Authors: Kismiantini, Kismiantini, Shazlyn Milleana Shaharudin, Shazlyn Milleana Shaharudin, Ezra Putranda Setiawan, Ezra Putranda Setiawan, Dhoriva Urwatul Wutsqa, Dhoriva Urwatul Wutsqa, Muhamad Afdal Ahmad Basri, Muhamad Afdal Ahmad Basri, Hairulnizam Mahdin, Hairulnizam Mahdin, Salama A. Mostafa, Salama A. Mostafa
Format: Article
Language:English
Published: ASPG 2024
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Online Access:http://eprints.uthm.edu.my/10922/1/J17378_58cd2d6376f481e780a1563554d90cfa.pdf
http://eprints.uthm.edu.my/10922/
https://doi.org/10.54216/JISIoT.110104
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spelling my.uthm.eprints.109222024-05-13T11:48:47Z http://eprints.uthm.edu.my/10922/ Prediction of Rainfall Trends Using Forecasting Approaches Based on Singular Spectrum Analysis Kismiantini, Kismiantini Shazlyn Milleana Shaharudin, Shazlyn Milleana Shaharudin Ezra Putranda Setiawan, Ezra Putranda Setiawan Dhoriva Urwatul Wutsqa, Dhoriva Urwatul Wutsqa Muhamad Afdal Ahmad Basri, Muhamad Afdal Ahmad Basri Hairulnizam Mahdin, Hairulnizam Mahdin Salama A. Mostafa, Salama A. Mostafa T Technology (General) Advanced technologies such as the Internet of Things provide an integrated platform for weather focusing, including rainfall and flood prediction. Large rainfall data frequently contain noise, which can be difficult to analyze using a standard time series model due to violated assumptions. Singular spectrum analysis (SSA) is a model-free time series analysis method that is widely used. This study aims to predict the rainfall trends in the Special Region of Yogyakarta, Indonesia, using the Recurrent SSA (SSA-R) and Vector SSA (SSA-V). The SSA-R forecasts using the recurrent continuation directly with the linear recurrent formula, while the SSA-V is a modified recurrent method. This study used 50 years of monthly rainfall data (1970-2019) from 25 stations in the special region of Yogyakarta, Indonesia. The SSA steps for forecasting rainfall data include decomposition (embedding and singular value decomposition), reconstruction (grouping and diagonal averaging), and evaluating the SSA model using w-correlation (if w-correlation is close to zero, returning to the decomposition stage; otherwise, continue the process), forecasting, evaluating the forecast results using root mean square error (RMSE), mean absolute error, r, and mean forecast error, and finally selecting the best model (either the SSA-R or SSA-V model). The results showed that the SSA-R performed better than SSA-V due to the smallest RMSE in the dry, rainy, and inter-monsoon seasons. The SSA-R model’s forecast results revealed faint, constant patterns for the dry, and rainy seasons and an increasing pattern for the inter-monsoon season. The novelty of this study is to compare the performance of the SSA-R and SSA-V models in the large rainfall data in the special region of Yogyakarta, Indonesia. ASPG 2024 Article PeerReviewed text en http://eprints.uthm.edu.my/10922/1/J17378_58cd2d6376f481e780a1563554d90cfa.pdf Kismiantini, Kismiantini and Shazlyn Milleana Shaharudin, Shazlyn Milleana Shaharudin and Ezra Putranda Setiawan, Ezra Putranda Setiawan and Dhoriva Urwatul Wutsqa, Dhoriva Urwatul Wutsqa and Muhamad Afdal Ahmad Basri, Muhamad Afdal Ahmad Basri and Hairulnizam Mahdin, Hairulnizam Mahdin and Salama A. Mostafa, Salama A. Mostafa (2024) Prediction of Rainfall Trends Using Forecasting Approaches Based on Singular Spectrum Analysis. Journal of Intelligent Systems and Internet of Things, 11 (1). pp. 29-43. https://doi.org/10.54216/JISIoT.110104
institution Universiti Tun Hussein Onn Malaysia
building UTHM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tun Hussein Onn Malaysia
content_source UTHM Institutional Repository
url_provider http://eprints.uthm.edu.my/
language English
topic T Technology (General)
spellingShingle T Technology (General)
Kismiantini, Kismiantini
Shazlyn Milleana Shaharudin, Shazlyn Milleana Shaharudin
Ezra Putranda Setiawan, Ezra Putranda Setiawan
Dhoriva Urwatul Wutsqa, Dhoriva Urwatul Wutsqa
Muhamad Afdal Ahmad Basri, Muhamad Afdal Ahmad Basri
Hairulnizam Mahdin, Hairulnizam Mahdin
Salama A. Mostafa, Salama A. Mostafa
Prediction of Rainfall Trends Using Forecasting Approaches Based on Singular Spectrum Analysis
description Advanced technologies such as the Internet of Things provide an integrated platform for weather focusing, including rainfall and flood prediction. Large rainfall data frequently contain noise, which can be difficult to analyze using a standard time series model due to violated assumptions. Singular spectrum analysis (SSA) is a model-free time series analysis method that is widely used. This study aims to predict the rainfall trends in the Special Region of Yogyakarta, Indonesia, using the Recurrent SSA (SSA-R) and Vector SSA (SSA-V). The SSA-R forecasts using the recurrent continuation directly with the linear recurrent formula, while the SSA-V is a modified recurrent method. This study used 50 years of monthly rainfall data (1970-2019) from 25 stations in the special region of Yogyakarta, Indonesia. The SSA steps for forecasting rainfall data include decomposition (embedding and singular value decomposition), reconstruction (grouping and diagonal averaging), and evaluating the SSA model using w-correlation (if w-correlation is close to zero, returning to the decomposition stage; otherwise, continue the process), forecasting, evaluating the forecast results using root mean square error (RMSE), mean absolute error, r, and mean forecast error, and finally selecting the best model (either the SSA-R or SSA-V model). The results showed that the SSA-R performed better than SSA-V due to the smallest RMSE in the dry, rainy, and inter-monsoon seasons. The SSA-R model’s forecast results revealed faint, constant patterns for the dry, and rainy seasons and an increasing pattern for the inter-monsoon season. The novelty of this study is to compare the performance of the SSA-R and SSA-V models in the large rainfall data in the special region of Yogyakarta, Indonesia.
format Article
author Kismiantini, Kismiantini
Shazlyn Milleana Shaharudin, Shazlyn Milleana Shaharudin
Ezra Putranda Setiawan, Ezra Putranda Setiawan
Dhoriva Urwatul Wutsqa, Dhoriva Urwatul Wutsqa
Muhamad Afdal Ahmad Basri, Muhamad Afdal Ahmad Basri
Hairulnizam Mahdin, Hairulnizam Mahdin
Salama A. Mostafa, Salama A. Mostafa
author_facet Kismiantini, Kismiantini
Shazlyn Milleana Shaharudin, Shazlyn Milleana Shaharudin
Ezra Putranda Setiawan, Ezra Putranda Setiawan
Dhoriva Urwatul Wutsqa, Dhoriva Urwatul Wutsqa
Muhamad Afdal Ahmad Basri, Muhamad Afdal Ahmad Basri
Hairulnizam Mahdin, Hairulnizam Mahdin
Salama A. Mostafa, Salama A. Mostafa
author_sort Kismiantini, Kismiantini
title Prediction of Rainfall Trends Using Forecasting Approaches Based on Singular Spectrum Analysis
title_short Prediction of Rainfall Trends Using Forecasting Approaches Based on Singular Spectrum Analysis
title_full Prediction of Rainfall Trends Using Forecasting Approaches Based on Singular Spectrum Analysis
title_fullStr Prediction of Rainfall Trends Using Forecasting Approaches Based on Singular Spectrum Analysis
title_full_unstemmed Prediction of Rainfall Trends Using Forecasting Approaches Based on Singular Spectrum Analysis
title_sort prediction of rainfall trends using forecasting approaches based on singular spectrum analysis
publisher ASPG
publishDate 2024
url http://eprints.uthm.edu.my/10922/1/J17378_58cd2d6376f481e780a1563554d90cfa.pdf
http://eprints.uthm.edu.my/10922/
https://doi.org/10.54216/JISIoT.110104
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score 13.211869