RAINFALL FORECAST USING KALMAN FILTER METHOD FOR SETTING CROPPING PATTERNS : Abstract

</i><b>Abstract: <i></b><p align="justify"> Deterministic model applied to forecast rainfall in tropical region in which its determinants are quite complicated, dynamic and random is unmanageable. Therefore, it needs renewable statistical model in real time. C...

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Main Author: Estiningtyas <br> NIM. 224 02 002, Woro
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/6920
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Institution: Institut Teknologi Bandung
Language: Indonesia
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spelling id-itb.:69202007-03-13T18:20:42ZRAINFALL FORECAST USING KALMAN FILTER METHOD FOR SETTING CROPPING PATTERNS : Abstract Estiningtyas <br> NIM. 224 02 002, Woro Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/6920 </i><b>Abstract: <i></b><p align="justify"> Deterministic model applied to forecast rainfall in tropical region in which its determinants are quite complicated, dynamic and random is unmanageable. Therefore, it needs renewable statistical model in real time. Crops water balance is computed by using local rainfall pattern, but by increasing the intensity and frequency of climate anomaly the computed water balance needs to be renewed more frequently through cropping pattern setting based on forecast aspects. Many approach models have been applied to forecast climate using statistical model, deterministic model or its between independent and dependent variables empirically. It is more practical to analyze the indications but it needs validation anytime and anywhere. Kalman filter combines physical and statistical model approaches to stochastic model renewable anytime for objective of on line forecasting. Validates model correlating rainfall and SST gives correlation coefficient value of more than 75%. It implies that predicting model using Kalman Filter is feasible to forecast montly rainfall. Correlation model between rainfall and SST mostly applied is ARMAX (46%). The shortest time series data period employed to run the model is between 7 to 10 years. Results of cropping pattern scenarios based on predicted rainfall show there are periods with harvest losses more than 20% especially in the locations with unequel annual rainfall distribution. Thus, it is not recommended to plant seasonal crops.</p> text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description </i><b>Abstract: <i></b><p align="justify"> Deterministic model applied to forecast rainfall in tropical region in which its determinants are quite complicated, dynamic and random is unmanageable. Therefore, it needs renewable statistical model in real time. Crops water balance is computed by using local rainfall pattern, but by increasing the intensity and frequency of climate anomaly the computed water balance needs to be renewed more frequently through cropping pattern setting based on forecast aspects. Many approach models have been applied to forecast climate using statistical model, deterministic model or its between independent and dependent variables empirically. It is more practical to analyze the indications but it needs validation anytime and anywhere. Kalman filter combines physical and statistical model approaches to stochastic model renewable anytime for objective of on line forecasting. Validates model correlating rainfall and SST gives correlation coefficient value of more than 75%. It implies that predicting model using Kalman Filter is feasible to forecast montly rainfall. Correlation model between rainfall and SST mostly applied is ARMAX (46%). The shortest time series data period employed to run the model is between 7 to 10 years. Results of cropping pattern scenarios based on predicted rainfall show there are periods with harvest losses more than 20% especially in the locations with unequel annual rainfall distribution. Thus, it is not recommended to plant seasonal crops.</p>
format Theses
author Estiningtyas <br> NIM. 224 02 002, Woro
spellingShingle Estiningtyas <br> NIM. 224 02 002, Woro
RAINFALL FORECAST USING KALMAN FILTER METHOD FOR SETTING CROPPING PATTERNS : Abstract
author_facet Estiningtyas <br> NIM. 224 02 002, Woro
author_sort Estiningtyas <br> NIM. 224 02 002, Woro
title RAINFALL FORECAST USING KALMAN FILTER METHOD FOR SETTING CROPPING PATTERNS : Abstract
title_short RAINFALL FORECAST USING KALMAN FILTER METHOD FOR SETTING CROPPING PATTERNS : Abstract
title_full RAINFALL FORECAST USING KALMAN FILTER METHOD FOR SETTING CROPPING PATTERNS : Abstract
title_fullStr RAINFALL FORECAST USING KALMAN FILTER METHOD FOR SETTING CROPPING PATTERNS : Abstract
title_full_unstemmed RAINFALL FORECAST USING KALMAN FILTER METHOD FOR SETTING CROPPING PATTERNS : Abstract
title_sort rainfall forecast using kalman filter method for setting cropping patterns : abstract
url https://digilib.itb.ac.id/gdl/view/6920
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