Forecasting and Mapping Coffee Borer Beetle Attacks Using GSTAR-SUR Kriging and GSTARX-SUR Kriging Models

The research aimed to use Generalized Space Time Autoregressive (GSTAR) and GSTARX modeling with the Seemingly Unrelated Regression (SUR) approach and combine them with the Kriging interpolation technique in an unobserved location. The case study was coffee borer beetle forecasting in Probolinggo Re...

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Main Authors: Henny Pramoedyo, Arif Ashari, Alfi Fadliana
Format: Article
Language:English
Published: Bina Nusantara University 2020-12-01
Series:ComTech
Subjects:
Online Access:https://journal.binus.ac.id/index.php/comtech/article/view/6389
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spelling doaj-60e2c5848edc41888c4661004eae40902021-04-27T10:41:05ZengBina Nusantara UniversityComTech2087-12442476-907X2020-12-01112657310.21512/comtech.v11i2.63895522Forecasting and Mapping Coffee Borer Beetle Attacks Using GSTAR-SUR Kriging and GSTARX-SUR Kriging ModelsHenny Pramoedyo0Arif Ashari1Alfi FadlianaDepartment of Statistics, Faculty of Mathematics and Natural Sciences Brawijaya UniversityDepartment of Statistics, Faculty of Mathematics and Natural Sciences Brawijaya UniversityThe research aimed to use Generalized Space Time Autoregressive (GSTAR) and GSTARX modeling with the Seemingly Unrelated Regression (SUR) approach and combine them with the Kriging interpolation technique in an unobserved location. The case study was coffee borer beetle forecasting in Probolinggo Regency, East Java, Indonesia, with Watupanjang Village as the unobserved location. The results show that GSTAR-SUR Kriging and GSTARX-SUR Kriging models can predict coffee borer beetle attacks in unobserved areas with high accuracy. It is indicated by the Mean Absolute Percentage Error (MAPE) values of less than 10%. The addition of exogenous variables (rainfall) into the model is proven to improve the accuracy of the model. The Root-Mean-Square Error (RMSE) value of the GSTARX-SUR Kriging model is smaller than the GSTAR-SUR Kriging model. The structure of the model produced from the research, GSTARX-SUR (1,[1,12])(10,0,0), can be used as a reference in modeling coffee borer beetle attacks in other regencies. Map of forecasting coffee borer beetle attack shows that the spread of coffee borer beetle attack is spatial clustering with the attack center located in the eastern region of Probolinggo Regency.https://journal.binus.ac.id/index.php/comtech/article/view/6389coffee borer beetlegeneralized space time autoregressive (gstar)gstarxseemingly unrelated regression (sur) kriging
collection DOAJ
language English
format Article
sources DOAJ
author Henny Pramoedyo
Arif Ashari
Alfi Fadliana
spellingShingle Henny Pramoedyo
Arif Ashari
Alfi Fadliana
Forecasting and Mapping Coffee Borer Beetle Attacks Using GSTAR-SUR Kriging and GSTARX-SUR Kriging Models
ComTech
coffee borer beetle
generalized space time autoregressive (gstar)
gstarx
seemingly unrelated regression (sur)
kriging
author_facet Henny Pramoedyo
Arif Ashari
Alfi Fadliana
author_sort Henny Pramoedyo
title Forecasting and Mapping Coffee Borer Beetle Attacks Using GSTAR-SUR Kriging and GSTARX-SUR Kriging Models
title_short Forecasting and Mapping Coffee Borer Beetle Attacks Using GSTAR-SUR Kriging and GSTARX-SUR Kriging Models
title_full Forecasting and Mapping Coffee Borer Beetle Attacks Using GSTAR-SUR Kriging and GSTARX-SUR Kriging Models
title_fullStr Forecasting and Mapping Coffee Borer Beetle Attacks Using GSTAR-SUR Kriging and GSTARX-SUR Kriging Models
title_full_unstemmed Forecasting and Mapping Coffee Borer Beetle Attacks Using GSTAR-SUR Kriging and GSTARX-SUR Kriging Models
title_sort forecasting and mapping coffee borer beetle attacks using gstar-sur kriging and gstarx-sur kriging models
publisher Bina Nusantara University
series ComTech
issn 2087-1244
2476-907X
publishDate 2020-12-01
description The research aimed to use Generalized Space Time Autoregressive (GSTAR) and GSTARX modeling with the Seemingly Unrelated Regression (SUR) approach and combine them with the Kriging interpolation technique in an unobserved location. The case study was coffee borer beetle forecasting in Probolinggo Regency, East Java, Indonesia, with Watupanjang Village as the unobserved location. The results show that GSTAR-SUR Kriging and GSTARX-SUR Kriging models can predict coffee borer beetle attacks in unobserved areas with high accuracy. It is indicated by the Mean Absolute Percentage Error (MAPE) values of less than 10%. The addition of exogenous variables (rainfall) into the model is proven to improve the accuracy of the model. The Root-Mean-Square Error (RMSE) value of the GSTARX-SUR Kriging model is smaller than the GSTAR-SUR Kriging model. The structure of the model produced from the research, GSTARX-SUR (1,[1,12])(10,0,0), can be used as a reference in modeling coffee borer beetle attacks in other regencies. Map of forecasting coffee borer beetle attack shows that the spread of coffee borer beetle attack is spatial clustering with the attack center located in the eastern region of Probolinggo Regency.
topic coffee borer beetle
generalized space time autoregressive (gstar)
gstarx
seemingly unrelated regression (sur)
kriging
url https://journal.binus.ac.id/index.php/comtech/article/view/6389
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AT arifashari forecastingandmappingcoffeeborerbeetleattacksusinggstarsurkrigingandgstarxsurkrigingmodels
AT alfifadliana forecastingandmappingcoffeeborerbeetleattacksusinggstarsurkrigingandgstarxsurkrigingmodels
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