Meningkatkan Efisiensi Pemetaan Kelapa Sawit Dengan Google Earth Engine dan Algoritma Machine Learning Untuk Mendukung Sertifikasi RSPO
Enhancing Palm Oil Mapping Efficiency With Google Earth Engine and Machine Learning Algorithms To Support RSPO Certification
Abstract
Accurate and efficient palm oil plantation mapping is crucial to support the RSPO
(Roundtable on Sustainable Palm Oil) Certification program. This study aims to develop an
efficient palm oil plantation mapping method using Google Earth Engine and machine
learning algorithms. Two machine learning algorithms, Deep Learning and SVM (Support
Vector Machine), were used to classify palm oil plantations from Landsat 8, Landsat 9, and
SRTM satellite images. The results showed that the SVM algorithm produced higher
classification accuracy (98.1% on training and 96% on testing) compared to Deep Learning
(90.53% and 93.46%). The mapping results were compared with actual mapping obtained
from Serawak Oil Palm Concession data on land owned by Sunbest Mill Sdn Bhd, yielding
SVM accuracy of 94.7% and Deep Learning accuracy of 93%. This mapping meets 5 points
in the RSPO Formatting Requirements for Map Data Submission document, but does not yet
meet points 4 and 6 related to concession boundary mapping and palm oil plantation attribute information. This study demonstrates that using Google Earth Engine and machine learning algorithms can improve the efficiency of palm oil plantation mapping with high accuracy. However, further development is needed to meet all points in the RSPO document
Collections
- Undergraduate Theses [1401]