纳波湿润森林的季节性洪水景观连通性及其对鱼类的影响:高分辨率绘图法

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Francisco Cuesta , Marco Calderón-Loor , Paulina Rosero , Marlon Calispa , Hedi Zisling , Yunierkis Pérez-Castillo , Gabriela Echevarría , Blanca Ríos-Touma
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引用次数: 0

摘要

亚马逊河流域的鱼类多样性是由其动态洪水脉冲系统决定的,该系统对水文和生态的连通性至关重要。本研究考察了纳波湿润森林(NMF)生态区,利用遥感和深度学习模型绘制了 2018 年至 2021 年的永久性和季节性洪泛区地图。我们的目标是以高空间分辨率(10 米像素)绘制这些区域的地图,并分析它们在维持鱼类多样性所必需的横向连通性方面的作用。利用哨兵-1 的合成孔径雷达数据和深度学习算法,我们绘制了高精度洪水地图,以评估河流和洪泛区之间的景观连通性。我们的方法包括利用归一化差异水指数创建地面实况数据集,并整合高分辨率光学数据进行模型训练,克服了云层覆盖和植被茂密的挑战。我们的预测模型达到了很高的精度(平均像素精度 = 97%),并在四年中持续预测了 4801 平方公里的地表水,其中只有 3%(130 平方公里)为季节性洪涝区。卡克塔(Caquetá)、下马拉尼翁(Bajo Marañón)、纳波(Napo)和帕斯塔萨(Pastaza)流域占洪涝区的近 60%,凸显了其生态重要性。对 NMF 生态区内的三个相关区域进行的连通性分析表明,由于淹没区特征的变化,水文连通性出现了重要的季节性和年际性波动。在枯水季节,淹没区的数量和面积减少,增加了淹没区之间的距离,导致淹没区、河道和河流之间的连接断开。尽管有水文波动,但某些斑块仍保持着持续的洪涝,这对横向连接和维持水生生物多样性至关重要。这些季节性洪涝区起着连接作用,影响着斑块的动态以及与支流的连接。水文连通性的季节和年际变化对维持鱼类多样性至关重要。保护充满活力的冲积平原有利于洄游鱼类的生命周期和生物多样性。这项研究强调了高分辨率时空数据在水生生态系统保护规划中的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Seasonally flooded landscape connectivity and implications for fish in the Napo Moist Forest: A high-resolution mapping approach
The Amazon River Basin's fish diversity is shaped by its dynamic flood-pulse system, critical for hydrological and ecological connectivity. This study examines the Napo Moist Forest (NMF) ecoregion, mapping permanent and seasonally flooded areas from 2018 to 2021 using remote sensing and deep learning models. We aimed to map these areas at a high spatial resolution (10-m pixels) and analyse their role in maintaining lateral connectivity essential for fish diversity. Using synthetic aperture radar data from Sentinel-1 combined with deep learning algorithms, we produced high-accuracy flood maps to assess landscape connectivity between rivers and floodplains. Our methodology included creating a ground truth dataset with the Normalized Difference Water Index and integrating high-resolution optical data for model training, overcoming challenges of cloud coverage and dense vegetation. Our predictive model achieved high accuracy (mean pixel accuracy = 97 %) and consistently predicted 4801 km² of surface water, with only 3 % (130 km²) being seasonally flooded areas over four years. The Caquetá, Bajo Marañón, Napo, and Pastaza watersheds accounted for nearly 60 % of the flooded areas, highlighting their ecological importance. Connectivity analysis in three areas of interest within the NMF ecoregion revealed important seasonal and interannual fluctuations in hydrological connectivity due to changes in flooded patch characteristics. Reductions in the number and flooded patch area during low water seasons increased the distance between patches, leading to a disconnection between flooded areas, channels and rivers. Despite hydrological fluctuations, certain patches maintained consistent flooding, critical for lateral connectivity and sustaining aquatic biodiversity. These seasonally flooded areas act as connectors, influencing patch dynamics and connectivity with tributaries. Seasonal and interannual variations in hydrological connectivity are crucial for sustaining fish diversity. Conserving dynamic floodplains supports migratory fish life cycles and biodiversity. This study underscores the importance of high-resolution temporal and spatial data in conservation planning for aquatic ecosystems.
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CiteScore
7.20
自引率
4.30%
发文量
567
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