Machine Learning Approaches using Satellite Data for Oil Palm Area Detection in Pekanbaru City, Riau

Arie Wahyu Wijayanto, Natasya Afira, Wahidya Nurkarim
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引用次数: 7

Abstract

Palm oil is a commodity that plays an important role in economic activity. The oil palm tree is capable of producing palm oil and is the most widely consumed vegetable oil in the world. Indonesia is the world's largest producer and exporter of palm oil. The huge potential of the palm oil industry in Indonesia demands the availability of accurate and up-to-date data sources. The latest remote sensing methods have now been widely used in detecting oil palm. We focus on modeling for oil palm detection as well as identifying features that affect oil palm to differentiate it from other land covers. This study compares the performance of the machine learning model with the Random Forest (RF), Xtreme Gradient Boosting (XGBoost), and Classification and Regression Tree (CART) methods. Grid Search is used to perform hyperparameter tuning. The results showed that the XGBoost model gave the best results with an F1 score of 0.90 and an accuracy of 90.97%. The most influential features on the model are B3 (blue). In addition, B3 is also mostly used by the palm oil class. The estimated area of oil palm based on the best model is 14,390.65 Ha, which is 13.18 percent higher than the official data.
利用卫星数据进行廖内省北干巴鲁市油棕区域检测的机器学习方法
棕榈油是一种在经济活动中发挥重要作用的商品。油棕树能够生产棕榈油,是世界上消费最广泛的植物油。印度尼西亚是世界上最大的棕榈油生产国和出口国。印度尼西亚棕榈油行业的巨大潜力要求提供准确和最新的数据来源。目前,最新的遥感方法已广泛应用于油棕的检测。我们专注于油棕检测的建模,以及识别影响油棕的特征,以将其与其他土地覆盖区分开来。本研究比较了机器学习模型与随机森林(RF)、Xtreme梯度增强(XGBoost)和分类与回归树(CART)方法的性能。网格搜索用于执行超参数调优。结果表明,XGBoost模型的F1得分为0.90,准确率为90.97%。对模型影响最大的特征是B3(蓝色)。另外,B3也是棕榈油类使用最多的。根据最佳模型估算的油棕面积为14390.65 Ha,比官方数据高出13.18%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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