卷积神经网络
碳汇
计算机科学
水槽(地理)
人工神经网络
林业
机器学习
人工智能
气候变化
生态学
地图学
生物
地理
作者
Lizhu Leng,Chengwei Wang
标识
DOI:10.1109/iccect60629.2024.10545761
摘要
To release oxygen and sequester carbon, forests are essential. For Chinese cities to attain carbon neutrality and carbon peak, a precise evaluation of forest carbon storage is important. This work used a prediction system based on convolutional neural networks in the design of a forestry carbon sink measurement and prediction system. Using eastern China's 2020 forest field inventory data as an experimental sample, we investigated the capabilities of deep-learning algorithms such as Convolutional Neural Network (CNN). The findings demonstrated that the main factors influencing the estimation of forest carbon density were coherence from Sentinel-l, backscatter and textural features from ALOS-2, and vegetation indices from Sentinel-2. It was also discovered that the CNN model outperformed conventional models. Combining the optical and radar data effectively confirmed the improvements through the results of the forest carbon-density estimation. Deep learning provides a better chance of correctly calculating forest carbon density from multisource remote-sensing data than conventional regression techniques.
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