日本地球惑星科学連合2024年大会

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[E] ポスター発表

セッション記号 U (ユニオン) » ユニオン

[U-04] Geospatial Applications for Societal Benefits

2024年5月31日(金) 17:15 〜 18:45 ポスター会場 (幕張メッセ国際展示場 6ホール)

コンビーナ:Mohamed Shariff Bin Mohamed Shariff (Universiti Putra Malaysia )、高橋 幸弘(北海道大学・大学院理学院・宇宙理学専攻)、Faustino-Eslava Villarisco Faustino-Eslava(Geological Society of the Philippines)、Perez Gay Jane(Philippine Space Agency)

17:15 〜 18:45

[U04-P05] Monitoring Mangrove Change and Estimating Aboveground Biomass in Sungai Pulai, Malaysia: A Remote Sensing and Machine Learning Approach

*Mohammed Arkan Majeed1、Siti Nur Aliaa Roslan1、Siti Khairunniza Bejo1、Mahirah Jahari1、Helmi Zulhaidi Bin MohdShafri1、Norizah Kamarudin1、Hamdan Omar2、Laili Nordin3、Bambang Trisasongko4、Huang Kaijin1、Zhou Han1、Zhao Heng Yang1、Muhamad Afizzul Misman2、Abdul Rashid Bin Mohamed Shariff1 (1.Universiti Putra Malaysia UPM、2.Forest Research Institute Malaysia、3.Geoprecision Tech Sdn Bhd、4.Bogor Agricultural University)

キーワード:Aboveground biomass (AGB) estimation, Mangrove Forests, Remote sensing, Machine learning, Alos-2 PALSAR, Landsat

Mangrove forests, such as the Sungai Pulai Mangrove Forest Reserve in Johor, Malaysia, play a crucial role in coastal protection, carbon sequestration, and biodiversity conservation. However, deforestation for coal production poses significant threats to these ecosystems. Therefore, quantifying deforestation from 1990 to 2023 using Landsat time series data and estimating aboveground biomass (AGB) using ground truth data and Alos-2 PALSAR data in 2023 using remote sensing and machine learning techniques is crucial importance for making informed decisions about management and conservation. HV polarization was chosen for machine learning training due to R² performance. Four machine learning algorithms, namely Linear Regression, Random Forest, XGBoost, and SVM, were compared based on their Root Mean Square Error (RMSE) and coefficient of determination (R²). The linear regression model showed slight superiority over other models with the lowest RMSE of 83.298 Mg ha-1 and the highest R² of 0.481, indicating better accuracy and performance in estimating AGB compared to other ML used. The study contributes valuable insights into vegetation change over the past three decades and the application of machine learning in estimating AGB. Despite the challenges posed by the spatial resolution of free SAR data and the limited number of samples, the study successfully estimated AGB in mangroves using the remote sensing and machine learning approach. Further research is recommended to improve the accuracy of the model and explore the integration of additional data sources, thereby enhancing the sustainable management and conservation of the Sungai Pulai Mangrove Forest Reserve.