PEMODELAN SPASIAL TINGKAT KERENTANAN KEBAKARAN MULTI KEDALAMAN LAHAN GAMBUT TROPIS BERBASIS MACHINE LEARNING

Tropical peatlands play a vital role as global carbon sinks, habitat for endangered flora & fauna, and provider of freshwater and source of livelihood for the people. Yet, their well-being and existence is currently threatened by increasingly severe and frequent wildfire linked to climate change...

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Main Author: Fadlansyah Ramadhan, Lukman
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/69092
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:69092
spelling id-itb.:690922022-09-20T10:47:16ZPEMODELAN SPASIAL TINGKAT KERENTANAN KEBAKARAN MULTI KEDALAMAN LAHAN GAMBUT TROPIS BERBASIS MACHINE LEARNING Fadlansyah Ramadhan, Lukman Indonesia Final Project peatlands, fire, machine learning, vulnerability, soil water and carbon content INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/69092 Tropical peatlands play a vital role as global carbon sinks, habitat for endangered flora & fauna, and provider of freshwater and source of livelihood for the people. Yet, their well-being and existence is currently threatened by increasingly severe and frequent wildfire linked to climate change. Therefore, quantifying peat vulnerability to fires and understanding the underlying driving mechanisms is crucial to developing mitigation and adaptation strategies. One such effort to accomplish that is by applying Machine Learning algorithm to spatially model multi-depth peatland fire vulnerability. Three algorithms used in this study are Random Forest, Classification and Regression Tree (CART), and Support Vector Machine (SVM). Data processing is done on Google Earth Engine. Fire data from MODIS satellite serves as the response variable, while the predictor variables consist of drought index, soil moisture, precipitation, and soil water & carbon content at six different depth layers. At model fitting stage, spatial block cross-validation is conducted iteratively five times yielding probability and binary map of peatland fire vulnerability. The study found that 1) Peatlands in Central Borneo, coastal South Sumatra, and parts of Riau and West Borneo are very vulnerable to fire and require utmost attention, 2) the most potent predictor variable in the models varies between soil carbon content and drought index/precipitation, and 3) output model of RF and CART fulfills AUC-ROC, Sensitivity-Specificity, and Overall Accuracy test, while SVM only fulfills the Overall Accuracy test. 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 Tropical peatlands play a vital role as global carbon sinks, habitat for endangered flora & fauna, and provider of freshwater and source of livelihood for the people. Yet, their well-being and existence is currently threatened by increasingly severe and frequent wildfire linked to climate change. Therefore, quantifying peat vulnerability to fires and understanding the underlying driving mechanisms is crucial to developing mitigation and adaptation strategies. One such effort to accomplish that is by applying Machine Learning algorithm to spatially model multi-depth peatland fire vulnerability. Three algorithms used in this study are Random Forest, Classification and Regression Tree (CART), and Support Vector Machine (SVM). Data processing is done on Google Earth Engine. Fire data from MODIS satellite serves as the response variable, while the predictor variables consist of drought index, soil moisture, precipitation, and soil water & carbon content at six different depth layers. At model fitting stage, spatial block cross-validation is conducted iteratively five times yielding probability and binary map of peatland fire vulnerability. The study found that 1) Peatlands in Central Borneo, coastal South Sumatra, and parts of Riau and West Borneo are very vulnerable to fire and require utmost attention, 2) the most potent predictor variable in the models varies between soil carbon content and drought index/precipitation, and 3) output model of RF and CART fulfills AUC-ROC, Sensitivity-Specificity, and Overall Accuracy test, while SVM only fulfills the Overall Accuracy test.
format Final Project
author Fadlansyah Ramadhan, Lukman
spellingShingle Fadlansyah Ramadhan, Lukman
PEMODELAN SPASIAL TINGKAT KERENTANAN KEBAKARAN MULTI KEDALAMAN LAHAN GAMBUT TROPIS BERBASIS MACHINE LEARNING
author_facet Fadlansyah Ramadhan, Lukman
author_sort Fadlansyah Ramadhan, Lukman
title PEMODELAN SPASIAL TINGKAT KERENTANAN KEBAKARAN MULTI KEDALAMAN LAHAN GAMBUT TROPIS BERBASIS MACHINE LEARNING
title_short PEMODELAN SPASIAL TINGKAT KERENTANAN KEBAKARAN MULTI KEDALAMAN LAHAN GAMBUT TROPIS BERBASIS MACHINE LEARNING
title_full PEMODELAN SPASIAL TINGKAT KERENTANAN KEBAKARAN MULTI KEDALAMAN LAHAN GAMBUT TROPIS BERBASIS MACHINE LEARNING
title_fullStr PEMODELAN SPASIAL TINGKAT KERENTANAN KEBAKARAN MULTI KEDALAMAN LAHAN GAMBUT TROPIS BERBASIS MACHINE LEARNING
title_full_unstemmed PEMODELAN SPASIAL TINGKAT KERENTANAN KEBAKARAN MULTI KEDALAMAN LAHAN GAMBUT TROPIS BERBASIS MACHINE LEARNING
title_sort pemodelan spasial tingkat kerentanan kebakaran multi kedalaman lahan gambut tropis berbasis machine learning
url https://digilib.itb.ac.id/gdl/view/69092
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