Application of Generalized Additive Model for Identification of Potential Fishing Zones Using Aqua and Terra MODIS Imagery Data

Remote sensing applications can provide information on oceanographic conditions for identification of potential fishing zones by combining statistical approaches. Determination of fish catch zones needs to be studied on the relationship between oceanographic parameters and fish catches to improve th...

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Main Authors: Bandi Sasmito, Nurhadi Bashit, Bella Riskyta Arinda, Abdi Sukmono
Format: Article
Language:English
Published: Politeknik Negeri Batam 2022-05-01
Series:Journal of Applied Geospatial Information
Subjects:
Online Access:https://jurnal.polibatam.ac.id/index.php/JAGI/article/view/3962
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author Bandi Sasmito
Nurhadi Bashit
Bella Riskyta Arinda
Abdi Sukmono
author_facet Bandi Sasmito
Nurhadi Bashit
Bella Riskyta Arinda
Abdi Sukmono
author_sort Bandi Sasmito
collection DOAJ
description Remote sensing applications can provide information on oceanographic conditions for identification of potential fishing zones by combining statistical approaches. Determination of fish catch zones needs to be studied on the relationship between oceanographic parameters and fish catches to improve the efficiency and effectiveness of fishing operations by fishermen. Based on this, identification of potential fishing zones needs to examine the relationship between fish catches and oceanographic parameters using the Generalized Additive Model (GAM) in the Java Sea. GAM analysis was carried out using fish catch data as response variables and oceanographic parameters such as sea surface temperature (SST) and chlorophyll-a image processing results from MODIS, SSS from CMES, and Depth data as predictor variables. The selection of the best model is determined by the highest percentage of CDE and the lowest AIC. GAM modeling results show that 60.3% of fish catches in the Java Sea are influenced by oceanographic factors and 39.7% by other factors. The oceanographic parameter that has the most influence on fish catches is the concentration of chlorophyll-a. GAM modeling results show that fish in the Java Sea tend to be found in sea that have chlorophyll-a concentrations of 0.2 mg/m3 – 0.5 mg/m3, SST 280C – 310C, salinity 31.8 PSU – 33 PSU, and a depth of 20 m. – 50 meters. Potential fishing zones were identified based on the results of the GAM modeling analysis. Potential fishing zones in the Java Sea from March 2021 to June 2021 have varying spatial distributions. The results of the most fishing potential zones were found on June 3, 2021, which were distributed the most in the sea around Pulau Laut, in the southern part of the island of Borneo, and the north on the island of Madura.
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spelling doaj.art-c4438567f6bc4fdab1158f6f792ea5222022-12-22T03:27:39ZengPoliteknik Negeri BatamJournal of Applied Geospatial Information2579-36082022-05-016158359110.30871/jagi.v6i1.39623962Application of Generalized Additive Model for Identification of Potential Fishing Zones Using Aqua and Terra MODIS Imagery DataBandi Sasmito0Nurhadi Bashit1Bella Riskyta Arinda2Abdi Sukmono3Department of Geodetic Engineering – Engineering Faculty – Diponegoro University, Jl. Prof Sudarto, SH, Tembalang, Semarang, IndonesiaDepartment of Geodetic Engineering – Engineering Faculty – Diponegoro University, Jl. Prof Sudarto, SH, Tembalang, Semarang, IndonesiaDepartment of Geodetic Engineering – Engineering Faculty – Diponegoro University, Jl. Prof Sudarto, SH, Tembalang, Semarang, IndonesiaDepartment of Geodetic Engineering – Engineering Faculty – Diponegoro University, Jl. Prof Sudarto, SH, Tembalang, Semarang, IndonesiaRemote sensing applications can provide information on oceanographic conditions for identification of potential fishing zones by combining statistical approaches. Determination of fish catch zones needs to be studied on the relationship between oceanographic parameters and fish catches to improve the efficiency and effectiveness of fishing operations by fishermen. Based on this, identification of potential fishing zones needs to examine the relationship between fish catches and oceanographic parameters using the Generalized Additive Model (GAM) in the Java Sea. GAM analysis was carried out using fish catch data as response variables and oceanographic parameters such as sea surface temperature (SST) and chlorophyll-a image processing results from MODIS, SSS from CMES, and Depth data as predictor variables. The selection of the best model is determined by the highest percentage of CDE and the lowest AIC. GAM modeling results show that 60.3% of fish catches in the Java Sea are influenced by oceanographic factors and 39.7% by other factors. The oceanographic parameter that has the most influence on fish catches is the concentration of chlorophyll-a. GAM modeling results show that fish in the Java Sea tend to be found in sea that have chlorophyll-a concentrations of 0.2 mg/m3 – 0.5 mg/m3, SST 280C – 310C, salinity 31.8 PSU – 33 PSU, and a depth of 20 m. – 50 meters. Potential fishing zones were identified based on the results of the GAM modeling analysis. Potential fishing zones in the Java Sea from March 2021 to June 2021 have varying spatial distributions. The results of the most fishing potential zones were found on June 3, 2021, which were distributed the most in the sea around Pulau Laut, in the southern part of the island of Borneo, and the north on the island of Madura.https://jurnal.polibatam.ac.id/index.php/JAGI/article/view/3962generalized additive model (gam), java sea, modis, potential fishing zone
spellingShingle Bandi Sasmito
Nurhadi Bashit
Bella Riskyta Arinda
Abdi Sukmono
Application of Generalized Additive Model for Identification of Potential Fishing Zones Using Aqua and Terra MODIS Imagery Data
Journal of Applied Geospatial Information
generalized additive model (gam), java sea, modis, potential fishing zone
title Application of Generalized Additive Model for Identification of Potential Fishing Zones Using Aqua and Terra MODIS Imagery Data
title_full Application of Generalized Additive Model for Identification of Potential Fishing Zones Using Aqua and Terra MODIS Imagery Data
title_fullStr Application of Generalized Additive Model for Identification of Potential Fishing Zones Using Aqua and Terra MODIS Imagery Data
title_full_unstemmed Application of Generalized Additive Model for Identification of Potential Fishing Zones Using Aqua and Terra MODIS Imagery Data
title_short Application of Generalized Additive Model for Identification of Potential Fishing Zones Using Aqua and Terra MODIS Imagery Data
title_sort application of generalized additive model for identification of potential fishing zones using aqua and terra modis imagery data
topic generalized additive model (gam), java sea, modis, potential fishing zone
url https://jurnal.polibatam.ac.id/index.php/JAGI/article/view/3962
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AT nurhadibashit applicationofgeneralizedadditivemodelforidentificationofpotentialfishingzonesusingaquaandterramodisimagerydata
AT bellariskytaarinda applicationofgeneralizedadditivemodelforidentificationofpotentialfishingzonesusingaquaandterramodisimagerydata
AT abdisukmono applicationofgeneralizedadditivemodelforidentificationofpotentialfishingzonesusingaquaandterramodisimagerydata