{"title":"高山泥炭地的遥感:绘制分布在广阔山区的数千个稀疏小地点的挑战","authors":"Qiqi Li, Manudeo Singh, Sonia Silvestri","doi":"10.1029/2025EA004201","DOIUrl":null,"url":null,"abstract":"<p>Alpine peatlands are one of the carbon reservoirs, provide vital ecosystem services, and support endangered biodiversity. However, they are globally understudied, including those in the Italian Alps, which host thousands of small sites averaging under 1 ha. Their complex geomorphology makes detection challenging with single-sensor, low-resolution remote sensing imagery. In the last decade, high resolution multi-source imagery (e.g., Sentinel series) and the cloud-based computation platforms (e.g., Google Earth Engine—GEE) have become available. Using these advancements, we developed a method to map the distribution of alpine peatlands. Utilizing 1 and 30 m digital elevation models (DEMs), optical, and microwave data sets, our method exploits a pixel-based Random Forest (RF) machine-learning algorithm on the GEE platform to map alpine peatlands in the Avisio River basin of the Italian Alps. The results show that the data set of single-year time series multi-source imagery, binary samples (peatland or non-peatland), and 30 m DEM is the most effective for mapping alpine peatlands. The method achieved an overall accuracy of 90.5%, with 81.8% true positives and 0.8% false positives. The method identified 11.635 km<sup>2</sup> of alpine peatlands, surpassing the 7.764 km<sup>2</sup> documented in official inventories, this discrepancy may be due to overestimation but also gaps in the existing reference inventory. In the classification process, DEM derived variables proved more effective than optical and microwave derived variables. Variable importance analysis in the RF model indicated that elevation is the most influential factor, while the microwave derived VV-VH difference (ascending track) contributes the least.</p>","PeriodicalId":54286,"journal":{"name":"Earth and Space Science","volume":"12 7","pages":""},"PeriodicalIF":2.6000,"publicationDate":"2025-07-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://onlinelibrary.wiley.com/doi/epdf/10.1029/2025EA004201","citationCount":"0","resultStr":"{\"title\":\"Remote Sensing of Alpine Peatlands: Challenges of Mapping Thousands of Sparse Small Sites Scattered Across Extensive Mountainous Territories\",\"authors\":\"Qiqi Li, Manudeo Singh, Sonia Silvestri\",\"doi\":\"10.1029/2025EA004201\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>Alpine peatlands are one of the carbon reservoirs, provide vital ecosystem services, and support endangered biodiversity. 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The method achieved an overall accuracy of 90.5%, with 81.8% true positives and 0.8% false positives. The method identified 11.635 km<sup>2</sup> of alpine peatlands, surpassing the 7.764 km<sup>2</sup> documented in official inventories, this discrepancy may be due to overestimation but also gaps in the existing reference inventory. In the classification process, DEM derived variables proved more effective than optical and microwave derived variables. 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引用次数: 0
摘要
高寒泥炭地是碳库之一,提供重要的生态系统服务,并支持濒危的生物多样性。然而,它们在全球范围内都没有得到充分的研究,包括在意大利阿尔卑斯山,那里有数千个平均小于1公顷的小遗址。它们复杂的地貌使得单传感器、低分辨率遥感图像的检测具有挑战性。在过去十年中,高分辨率多源图像(例如Sentinel系列)和基于云的计算平台(例如谷歌Earth Engine-GEE)已经可用。利用这些进展,我们开发了一种绘制高山泥炭地分布图的方法。利用1米和30米数字高程模型(dem)、光学和微波数据集,我们的方法在GEE平台上利用基于像素的随机森林(RF)机器学习算法来绘制意大利阿尔卑斯山的Avisio河流域的高山泥炭地。结果表明,单年时间序列多源影像、二值样本(泥炭地或非泥炭地)和30 m DEM数据集是高寒泥炭地最有效的制图方法。该方法的总体准确率为90.5%,其中真阳性为81.8%,假阳性为0.8%。该方法确定了11.635 km2的高山泥炭地,超过了官方清单记录的7.764 km2,这种差异可能是由于高估,也可能是由于现有参考清单的差距。在分类过程中,DEM衍生变量比光学和微波衍生变量更有效。射频模型的变量重要性分析表明,高程是影响最大的因素,而微波衍生的VV-VH差(上升轨迹)的影响最小。
Remote Sensing of Alpine Peatlands: Challenges of Mapping Thousands of Sparse Small Sites Scattered Across Extensive Mountainous Territories
Alpine peatlands are one of the carbon reservoirs, provide vital ecosystem services, and support endangered biodiversity. However, they are globally understudied, including those in the Italian Alps, which host thousands of small sites averaging under 1 ha. Their complex geomorphology makes detection challenging with single-sensor, low-resolution remote sensing imagery. In the last decade, high resolution multi-source imagery (e.g., Sentinel series) and the cloud-based computation platforms (e.g., Google Earth Engine—GEE) have become available. Using these advancements, we developed a method to map the distribution of alpine peatlands. Utilizing 1 and 30 m digital elevation models (DEMs), optical, and microwave data sets, our method exploits a pixel-based Random Forest (RF) machine-learning algorithm on the GEE platform to map alpine peatlands in the Avisio River basin of the Italian Alps. The results show that the data set of single-year time series multi-source imagery, binary samples (peatland or non-peatland), and 30 m DEM is the most effective for mapping alpine peatlands. The method achieved an overall accuracy of 90.5%, with 81.8% true positives and 0.8% false positives. The method identified 11.635 km2 of alpine peatlands, surpassing the 7.764 km2 documented in official inventories, this discrepancy may be due to overestimation but also gaps in the existing reference inventory. In the classification process, DEM derived variables proved more effective than optical and microwave derived variables. Variable importance analysis in the RF model indicated that elevation is the most influential factor, while the microwave derived VV-VH difference (ascending track) contributes the least.
期刊介绍:
Marking AGU’s second new open access journal in the last 12 months, Earth and Space Science is the only journal that reflects the expansive range of science represented by AGU’s 62,000 members, including all of the Earth, planetary, and space sciences, and related fields in environmental science, geoengineering, space engineering, and biogeochemistry.