Estimation of Flow Discharge Model at Temef Watershed - East Nusa Tenggara Using TRMM Satellite Data

Data collection based on satellite TRMM (Tropical Rainfall Measuring Mission) presents one of the good alternatives in estimating rainfall. TRMM technology can minimize manual rainfall recording errors and improve rainfall accuracy for hydrological analysis. The analysis method used in this research...

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Main Authors: Aprianto Nomleni, Ery Suhartanto, Donny Harisuseno
Format: Article
Language:English
Published: Universitas Brawijaya 2021-05-01
Series:Civil and Environmental Science Journal
Subjects:
Online Access:https://civense.ub.ac.id/index.php/civense/article/view/105
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author Aprianto Nomleni
Ery Suhartanto
Donny Harisuseno
author_facet Aprianto Nomleni
Ery Suhartanto
Donny Harisuseno
author_sort Aprianto Nomleni
collection DOAJ
description Data collection based on satellite TRMM (Tropical Rainfall Measuring Mission) presents one of the good alternatives in estimating rainfall. TRMM technology can minimize manual rainfall recording errors and improve rainfall accuracy for hydrological analysis. The analysis method used in this research is divided into 3 (three) stages, namely Hydrology analysis, Statistical Analysis and Artificial Neural Network Analysis. From the results of TRMM JAXA analysis in the Temef Watershed Area of East Nusa Tenggara Province obtained TRMM JAXA satellite rainfall relationship to observation data shows rainfall patterns between the two data are interconnected but for cases with very high observation rainfall, TRMM rainfall data tends to be low. From statistical method analysis, the relationship between observation rainfall and TRMM JAXA rainfall obtained results with a "Very Strong" interpretation indicated by the results of 9 years calibration and 1 year validation where the selected equation is a polynomial equation (y=-0,0123x2 + 1,5553x + 20,222). Rain data correction results simulated with Debit data to see the relationship between rain and discharge that occurred, this analysis using Artificial Neural Network with Backpropagation method, the results showed a "Strong" interpretation where statistically the value of Nash-Sutcliffe Efficiency (NSE) 0.920, the coefficient value of correlation of field discharge and TRMM rainfall is 0,877 % and the relative error occurred is 2,62%.
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spelling doaj.art-41236266d007424dac9542c3e02e111d2022-12-21T19:21:24ZengUniversitas BrawijayaCivil and Environmental Science Journal2620-62182021-05-014211512610.21776/ub.civense.2021.00402.249Estimation of Flow Discharge Model at Temef Watershed - East Nusa Tenggara Using TRMM Satellite DataAprianto NomleniEry SuhartantoDonny HarisusenoData collection based on satellite TRMM (Tropical Rainfall Measuring Mission) presents one of the good alternatives in estimating rainfall. TRMM technology can minimize manual rainfall recording errors and improve rainfall accuracy for hydrological analysis. The analysis method used in this research is divided into 3 (three) stages, namely Hydrology analysis, Statistical Analysis and Artificial Neural Network Analysis. From the results of TRMM JAXA analysis in the Temef Watershed Area of East Nusa Tenggara Province obtained TRMM JAXA satellite rainfall relationship to observation data shows rainfall patterns between the two data are interconnected but for cases with very high observation rainfall, TRMM rainfall data tends to be low. From statistical method analysis, the relationship between observation rainfall and TRMM JAXA rainfall obtained results with a "Very Strong" interpretation indicated by the results of 9 years calibration and 1 year validation where the selected equation is a polynomial equation (y=-0,0123x2 + 1,5553x + 20,222). Rain data correction results simulated with Debit data to see the relationship between rain and discharge that occurred, this analysis using Artificial Neural Network with Backpropagation method, the results showed a "Strong" interpretation where statistically the value of Nash-Sutcliffe Efficiency (NSE) 0.920, the coefficient value of correlation of field discharge and TRMM rainfall is 0,877 % and the relative error occurred is 2,62%.https://civense.ub.ac.id/index.php/civense/article/view/105artificial neural networkflow dischargetrmm jaxa
spellingShingle Aprianto Nomleni
Ery Suhartanto
Donny Harisuseno
Estimation of Flow Discharge Model at Temef Watershed - East Nusa Tenggara Using TRMM Satellite Data
Civil and Environmental Science Journal
artificial neural network
flow discharge
trmm jaxa
title Estimation of Flow Discharge Model at Temef Watershed - East Nusa Tenggara Using TRMM Satellite Data
title_full Estimation of Flow Discharge Model at Temef Watershed - East Nusa Tenggara Using TRMM Satellite Data
title_fullStr Estimation of Flow Discharge Model at Temef Watershed - East Nusa Tenggara Using TRMM Satellite Data
title_full_unstemmed Estimation of Flow Discharge Model at Temef Watershed - East Nusa Tenggara Using TRMM Satellite Data
title_short Estimation of Flow Discharge Model at Temef Watershed - East Nusa Tenggara Using TRMM Satellite Data
title_sort estimation of flow discharge model at temef watershed east nusa tenggara using trmm satellite data
topic artificial neural network
flow discharge
trmm jaxa
url https://civense.ub.ac.id/index.php/civense/article/view/105
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AT erysuhartanto estimationofflowdischargemodelattemefwatershedeastnusatenggarausingtrmmsatellitedata
AT donnyharisuseno estimationofflowdischargemodelattemefwatershedeastnusatenggarausingtrmmsatellitedata