Chair of Remote Sensing, Faculty of Environmental Sciences, Technische Universität Dresden, Helmholtz Straße 10, 01069, Dresden, Germany.
Environ Monit Assess. 2024 Feb 24;196(3):299. doi: 10.1007/s10661-024-12478-5.
Climate change is one of the greatest threats recently, of which developing countries are facing most of the brunt. In the fight against climate change, forests can play an important role, since they hold a substantial amount of terrestrial carbon and can therefore affect the global carbon cycle. Deforestation, however, is a significant challenge. There are financial incentives that can help in halting deforestation by compensating developing countries for their efforts. They require however assessments which makes it essential for developing countries to regularly monitor their stocking. Based on the aforementioned, forest carbon stock assessment was conducted in Margalla Hills National Park i.e., Sub-tropical Chir Pine Forest (SCPF) and Sub-tropical Broadleaved Evergreen Forest (SBEF), in Pakistan combining field inventory with a remote-sensing-based approach using machine learning algorithms. Circular plots of a 20 m radius were used for recording the data and Sentinel-2 (S2) and Sentinel-1 (S1) satellite data were used for estimating the Aboveground Biomass (AGB). The performances of Random Forests (RF) and Support Vector Machine (SVM) were explored. The AGB was higher for the SCPF. The RF performed better for SCPF, but SVM was better for SBEF. The free available satellite data in the form of S2 and S1 data offers an advantage for AGB estimations. The combination of S2 and S1 for future AGB studies in Pakistan is also recommended.
气候变化是最近面临的最大威胁之一,发展中国家首当其冲。在应对气候变化的过程中,森林可以发挥重要作用,因为它们储存了大量的陆地碳,因此可以影响全球碳循环。然而,森林砍伐是一个重大挑战。存在一些金融激励措施,可以通过补偿发展中国家的努力来帮助阻止森林砍伐。但是,这些措施需要进行评估,因此发展中国家定期监测其森林存量至关重要。基于上述情况,在巴基斯坦,对玛格丽特山国家公园(即亚热带华山松森林(SCPF)和亚热带阔叶常绿森林(SBEF))进行了森林碳储量评估,结合了实地清查和基于机器学习算法的遥感方法。使用 20 米半径的圆形样本来记录数据,并使用 Sentinel-2(S2)和 Sentinel-1(S1)卫星数据来估计地上生物量(AGB)。探索了随机森林(RF)和支持向量机(SVM)的性能。SCPF 的 AGB 更高。RF 对 SCPF 的表现更好,但 SVM 对 SBEF 的表现更好。S2 和 S1 等免费可用的卫星数据为 AGB 估算提供了优势。还建议在巴基斯坦未来的 AGB 研究中结合使用 S2 和 S1。