IDENTIFICATION OF RICE FIELDS USING THE RANDOM FOREST METHOD BASE ON SPECTRAL AND PHYSICAL PARAMETERS (CASE STUDY: BANDUNG REGENCY)
This research aims to identify paddy fields in Bandung Regency using the Random Forest method by incorporating spectral and physical parameters. Typically, mapping paddy fields requires several satellite images over different periods due to rice's planting cycle. To reduce time and cost, thi...
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id-itb.:849312024-08-19T10:33:56ZIDENTIFICATION OF RICE FIELDS USING THE RANDOM FOREST METHOD BASE ON SPECTRAL AND PHYSICAL PARAMETERS (CASE STUDY: BANDUNG REGENCY) Sutia Rahayu, Jania Indonesia Theses Paddy fields, Random Forest method, Spectral parameters, Physical parameters INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/84931 This research aims to identify paddy fields in Bandung Regency using the Random Forest method by incorporating spectral and physical parameters. Typically, mapping paddy fields requires several satellite images over different periods due to rice's planting cycle. To reduce time and cost, this study optimizes Random Forest classification with single-time satellite images, adding physical characteristics of paddy fields. Data includes NDVI, NDWI, LST, SMI, BSI, SAVI, slope, elevation, soil pH, total nitrogen, and clay content. Results show that combining these parameters enhances classification accuracy, achieving 91% overall accuracy and a Kappa of 0.89. This approach is both effective and efficient for mapping paddy fields, crucial for agricultural management and food security, and supports sustainable monitoring of paddy field distribution in Bandung Regency. By integrating spectral parameters (NDVI, NDWI, LST, SMI, BSI, SAVI) and physical characteristics (slope, elevation, soil pH, total nitrogen, and clay content), the Random Forest method significantly improves the classification accuracy of paddy fields compared to using only spectral data. The classification results indicated a substantial improvement, with the overall accuracy reaching 91% and a Kappa coefficient of 0.89. This methodological approach not only demonstrates its effectiveness and efficiency but also plays a vital role in agricultural management and food security. It provides a sustainable solution for monitoring paddy field distribution in Bandung Regency. text |
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This research aims to identify paddy fields in Bandung Regency using the Random
Forest method by incorporating spectral and physical parameters. Typically,
mapping paddy fields requires several satellite images over different periods due
to rice's planting cycle. To reduce time and cost, this study optimizes Random
Forest classification with single-time satellite images, adding physical
characteristics of paddy fields. Data includes NDVI, NDWI, LST, SMI, BSI, SAVI,
slope, elevation, soil pH, total nitrogen, and clay content. Results show that
combining these parameters enhances classification accuracy, achieving 91%
overall accuracy and a Kappa of 0.89. This approach is both effective and efficient
for mapping paddy fields, crucial for agricultural management and food security,
and supports sustainable monitoring of paddy field distribution in Bandung
Regency. By integrating spectral parameters (NDVI, NDWI, LST, SMI, BSI, SAVI)
and physical characteristics (slope, elevation, soil pH, total nitrogen, and clay
content), the Random Forest method significantly improves the classification
accuracy of paddy fields compared to using only spectral data. The classification
results indicated a substantial improvement, with the overall accuracy reaching
91% and a Kappa coefficient of 0.89. This methodological approach not only
demonstrates its effectiveness and efficiency but also plays a vital role in
agricultural management and food security. It provides a sustainable solution for
monitoring paddy field distribution in Bandung Regency. |
format |
Theses |
author |
Sutia Rahayu, Jania |
spellingShingle |
Sutia Rahayu, Jania IDENTIFICATION OF RICE FIELDS USING THE RANDOM FOREST METHOD BASE ON SPECTRAL AND PHYSICAL PARAMETERS (CASE STUDY: BANDUNG REGENCY) |
author_facet |
Sutia Rahayu, Jania |
author_sort |
Sutia Rahayu, Jania |
title |
IDENTIFICATION OF RICE FIELDS USING THE RANDOM FOREST METHOD BASE ON SPECTRAL AND PHYSICAL PARAMETERS (CASE STUDY: BANDUNG REGENCY) |
title_short |
IDENTIFICATION OF RICE FIELDS USING THE RANDOM FOREST METHOD BASE ON SPECTRAL AND PHYSICAL PARAMETERS (CASE STUDY: BANDUNG REGENCY) |
title_full |
IDENTIFICATION OF RICE FIELDS USING THE RANDOM FOREST METHOD BASE ON SPECTRAL AND PHYSICAL PARAMETERS (CASE STUDY: BANDUNG REGENCY) |
title_fullStr |
IDENTIFICATION OF RICE FIELDS USING THE RANDOM FOREST METHOD BASE ON SPECTRAL AND PHYSICAL PARAMETERS (CASE STUDY: BANDUNG REGENCY) |
title_full_unstemmed |
IDENTIFICATION OF RICE FIELDS USING THE RANDOM FOREST METHOD BASE ON SPECTRAL AND PHYSICAL PARAMETERS (CASE STUDY: BANDUNG REGENCY) |
title_sort |
identification of rice fields using the random forest method base on spectral and physical parameters (case study: bandung regency) |
url |
https://digilib.itb.ac.id/gdl/view/84931 |
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1822282973006790656 |