利用机器学习中的成像光谱和高程估计间歇性潮汐湿地的土壤盐度

IF 2.9 3区 环境科学与生态学 Q2 ECOLOGY
Ecosphere Pub Date : 2025-08-05 DOI:10.1002/ecs2.70356
Germán D. Silva, Dar A. Roberts, Kristin B. Byrd, K. Dana Chadwick, Ian J. Walker, Jennifer Y. King
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引用次数: 0

摘要

由于干旱、海平面上升和淡水流入的变化,沿海土壤盐渍化模式正在发生变化。预计这些变化将影响滨海湿地植物健康和生态系统功能,如生物量和生产力的变化。这些影响使我们对如何在空间和时间尺度上监测土壤盐渍化产生了更大的兴趣。遥感是估算土地管理者决策所需空间尺度土壤盐度的一种很有前途的工具。然而,开发湿地土壤盐度的遥感估算方法必须考虑两个因素:(1)沿海湿地的高度时空异质性;(2)土壤盐度是多种历史土地利用、水文和地貌过程的结果。2022年春季,一项名为SHIFT的联合空战行动每周收集一次机载可见到短波红外(VSWIR)图像光谱数据的时间序列。该数据集提供了一个独特的机会来评估精细空间(5米)和时间(周)分辨率VSWIR数据在估计根区土壤盐度方面的应用;当与海拔等环境变量相结合时,这些数据可以解释其中的一些因素。在这项研究中,我们利用随机森林回归中的VSWIR和高程数据集来预测和绘制位于加利福尼亚州圣巴巴拉县的间歇性潮汐河口Devereux Slough的土壤盐度。最终的模型将光谱指数与海拔结合起来,尽管相关性较低(r = 0.85),但比单独使用海拔(r = 0.92)更好地捕获土壤盐分动态。本研究展示了利用遥感数据集,即海拔高度和改进的花青素反射指数(mARI)来预测间歇性潮汐滨海湿地根区土壤盐度的实用性。这些发现是推进沿海遥感的重要一步,它创建了一个网格化的盐度数据集,可用于盐度监测和其他沿海应用,如模拟面临气候变率和变化影响的植被群落或生态系统的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Using imaging spectroscopy and elevation in machine learning to estimate soil salinity in intermittently tidal wetlands

Using imaging spectroscopy and elevation in machine learning to estimate soil salinity in intermittently tidal wetlands

Using imaging spectroscopy and elevation in machine learning to estimate soil salinity in intermittently tidal wetlands

Using imaging spectroscopy and elevation in machine learning to estimate soil salinity in intermittently tidal wetlands

Using imaging spectroscopy and elevation in machine learning to estimate soil salinity in intermittently tidal wetlands

Using imaging spectroscopy and elevation in machine learning to estimate soil salinity in intermittently tidal wetlands

Coastal soil salinization patterns are changing due to drought, sea level rise (SLR), and changing freshwater inflow. These changes are expected to impact coastal wetland plant health and ecosystem function, such as changes to biomass and productivity. These impacts have led to greater interest in how we monitor soil salinization across spatial and temporal scales. Remote sensing is a promising tool for estimating soil salinity at the spatial scales required for decision making by land managers. However, the development of a remote sensing estimation approach for wetland soil salinity must account for two factors: (1) the high spatial and temporal heterogeneity of coastal wetlands and (2) the fact that soil salinity is the result of multiple historical land use, hydrological, and geomorphic processes. In spring 2022, a combined airborne-field campaign, known as SHIFT, collected a weekly time series of airborne visible to shortwave infrared (VSWIR) image spectroscopy data. This dataset provides a unique opportunity to assess the application of fine spatial (5 m) and temporal (weekly) resolution VSWIR data to estimate root zone soil salinity; when combined with environmental variables such as elevation, these data can account for some of these factors. In this study, we utilized VSWIR and elevation datasets in a random forest regression to predict and map soil salinity in an intermittently tidal estuary, Devereux Slough, located in Santa Barbara County, California. The final model combined spectral indices with elevation to better capture soil salinity dynamics despite lower correlation (r = 0.85) than solely using elevation (r = 0.92). This research demonstrates the utility of remote sensing datasets, namely, elevation and the modified Anthocyanin Reflectance Index (mARI), for predicting root zone soil salinity in intermittently tidal coastal wetlands. These findings are an important step in advancing coastal remote sensing by creating a gridded salinity dataset that can be used for salinity monitoring and other coastal applications, such as modeling change in vegetation communities or ecosystems facing the impacts of climatic variability and change.

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来源期刊
Ecosphere
Ecosphere ECOLOGY-
CiteScore
4.70
自引率
3.70%
发文量
378
审稿时长
15 weeks
期刊介绍: The scope of Ecosphere is as broad as the science of ecology itself. The journal welcomes submissions from all sub-disciplines of ecological science, as well as interdisciplinary studies relating to ecology. The journal''s goal is to provide a rapid-publication, online-only, open-access alternative to ESA''s other journals, while maintaining the rigorous standards of peer review for which ESA publications are renowned.
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