使用行星图像和机器学习绘制山地草地和森林的高分辨率积雪地图

IF 2.6 Q2 WATER RESOURCES
Kehan Yang, Aji John, D. Shean, J. Lundquist, Ziheng Sun, Fangfang Yao, Stefan Todoran, N. Cristea
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引用次数: 2

摘要

山区积雪为森林和草地生态系统提供了重要的水资源,这些生态系统正因全球变暖而经历快速变化。要准确描述这些生态系统中的积雪异质性,需要以高空间分辨率进行积雪观测,但大多数现有的积雪数据集都具有粗略的分辨率。为了提高我们对草地和森林积雪的观测能力,我们开发了一个机器学习模型,从PlanetScope图像中以大约3米的空间分辨率生成积雪面积(SCA)地图。该模型在美国西部和瑞士的四个不同地点拍摄了103张无云图像,F1得分中值为0.75。当森林区域被排除在评估之外时,它更准确(F1分数=0.82)。我们在加利福尼亚州内华达山脉的两个研究地点对7741个山地草地的模型性能进行了进一步测试。它获得了0.83的F1中值分数,与较小和形状更复杂的草地相比,较大和更简单的几何形状草地的精度更高。虽然在靠近或低于森林冠层的区域绘制SCA仍然具有挑战性,但该模型可以准确识别相对较大的森林间隙(即15m<DCE<27m)的SCA,四个研究点的F1得分中值为0.87,并且在非常靠近(>10m)森林边缘的区域显示出有希望的准确性。我们的研究强调了高分辨率卫星图像在绘制森林地区和草地山地积雪图方面的潜力,这对在一个预计雪会发生重大变化的世界中推进生态水文研究具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-resolution mapping of snow cover in montane meadows and forests using Planet imagery and machine learning
Mountain snowpack provides critical water resources for forest and meadow ecosystems that are experiencing rapid change due to global warming. An accurate characterization of snowpack heterogeneity in these ecosystems requires snow cover observations at high spatial resolutions, yet most existing snow cover datasets have a coarse resolution. To advance our observation capabilities of snow cover in meadows and forests, we developed a machine learning model to generate snow-covered area (SCA) maps from PlanetScope imagery at about 3-m spatial resolution. The model achieves a median F1 score of 0.75 for 103 cloud-free images across four different sites in the Western United States and Switzerland. It is more accurate (F1 score = 0.82) when forest areas are excluded from the evaluation. We further tested the model performance across 7,741 mountain meadows at the two study sites in the Sierra Nevada, California. It achieved a median F1 score of 0.83, with higher accuracy for larger and simpler geometry meadows than for smaller and more complexly shaped meadows. While mapping SCA in regions close to or under forest canopy is still challenging, the model can accurately identify SCA for relatively large forest gaps (i.e., 15m < DCE < 27m), with a median F1 score of 0.87 across the four study sites, and shows promising accuracy for areas very close (>10m) to forest edges. Our study highlights the potential of high-resolution satellite imagery for mapping mountain snow cover in forested areas and meadows, with implications for advancing ecohydrological research in a world expecting significant changes in snow.
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来源期刊
Frontiers in Water
Frontiers in Water WATER RESOURCES-
CiteScore
4.00
自引率
6.90%
发文量
224
审稿时长
13 weeks
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