数据稀缺的沿海-河口生态系统中的叶绿素-a 和悬浮物变化

IF 2.6 3区 地球科学 Q1 MARINE & FRESHWATER BIOLOGY Estuarine Coastal and Shelf Science Pub Date : 2024-10-05 DOI:10.1016/j.ecss.2024.108973
Masuma Chowdhury , Isabel Caballero , Ignacio de la Calle , Irene Laiz
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引用次数: 0

摘要

分析河口和沿岸环境中叶绿素-a(Chl-a)和总悬浮物(TSM)的变化,对于了解生态系 统健康状况、指导环境管理决策和评估气候变化影响至关重要。卫星遥感因其广泛的时空覆盖范围,为这一分析提供了强有力的工具。虽然有几种算法可用于复杂的沿岸和河口水域,但长期数据集,如 GlobColor 的海洋颜色(OC5)和神经网络(NN)算法,经常用于稳健的变异性分析。本研究使用 GlobColor NN 算法研究了孟加拉国梅格纳河口及其邻近沿岸边缘地区 Chl-a 和 TSM 的季节和年际变化。另一种算法(即 OC5)虽然能提供最长的时间序列,但由于无效像素较多,无法在该地区使用。因此,本研究考察了不同的环境因素(即海面温度(SST)、光合有效辐射(PAR)、降雨量、带状风(ZWC)和经向风(MWC)成分以及洋流)和气候指数(即厄尔尼诺-南方涛动(ENSO)和印度洋偶极子(IOD)),以了解它们对 GlobColor NN 算法得出的 Chl-a 和 TSM 的季节和年际变化的影响。经验正交函数分析确定了研究区域的主要季节信号。Chl-a 的季节周期受 MWC、TSM、SST 和降雨等因素的影响。相比之下,TSM 的季节变化主要受降雨和 MWC 的影响。季风后 Chl-a 的年际波动主要与 TSM 的年际变化有关,季风降雨和冬季厄尔尼诺/南方涛动指数是次要影响因素。TSM 的年际变化主要与冬季厄尔尼诺/南方涛动指数和季风降雨有关。这项研究阐明了影响梅格纳河口及其毗邻海岸 Chl-a 和 TSM 变化的主要机制,从而加深了对研究区域动态变化的理解。这项研究获得的信息对科学家、决策者和参与梅格纳河口及其沿海资源可持续管理的利益相关者都很有价值,尤其是在气候变化的背景下。
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Chlorophyll-a and suspended matter variability in a data-scarce coastal-estuarine ecosystem
Analyzing the variability of chlorophyll-a (Chl-a) and total suspended matter (TSM) in estuarine and coastal environments is crucial for understanding ecosystem health, guiding environmental management decisions, and evaluating climate change impacts. Satellite remote sensing offers a powerful tool for this analysis due to its extensive spatial and temporal coverage. Although several algorithms exist for complex coastal and estuarine waters, long-term datasets such as GlobColor's Ocean Color (OC5) and neural network (NN) algorithms are frequently used for robust variability analysis. This study uses the GlobColor NN algorithm to investigate the seasonal and inter-annual variability of Chl-a and TSM in a data-scare region, namely the Meghna estuary in Bangladesh and its adjacent coastal fringe. The other algorithm (i.e. OC5), while offers the longest time series, cannot be used in this region due to the high number of invalid pixels. Therefore, this study examines different environmental factors (i.e. sea surface temperature (SST), photosynthetically active radiation (PAR), rainfall, zonal (ZWC) and meridional (MWC) wind components, and ocean currents) and climatic indices (i.e., El Niño-Southern Oscillation (ENSO) and Indian Ocean Dipole (IOD)) to understand their influence on the seasonal and inter-annual variability of Chl-a and TSM derived from the GlobColor NN algorithm. Empirical orthogonal function analysis identifies the seasonal signal as dominant in the study region. The seasonal cycle of Chl-a is influenced by factors including MWC, TSM, SST, and rainfall. In contrast, TSM seasonal variations are primarily driven by rainfall and MWC. Post-monsoon Chl-a inter-annual fluctuations are mainly linked to TSM inter-annual variability, with secondary influences from monsoon rainfall and the winter ENSO index. Inter-annual changes in TSM are primarily associated with the winter ENSO index and monsoon rainfall. This research elucidates the primary mechanisms influencing Chl-a and TSM variability in the Meghna estuary and its adjacent coast, thus advancing the understanding of the dynamics in the study region. The information obtained through this study is valuable for scientists, policymakers, and stakeholders involved in the sustainable management of the Meghna estuary and its coastal resources, particularly in the context of climate change.
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来源期刊
CiteScore
5.60
自引率
7.10%
发文量
374
审稿时长
9 months
期刊介绍: Estuarine, Coastal and Shelf Science is an international multidisciplinary journal devoted to the analysis of saline water phenomena ranging from the outer edge of the continental shelf to the upper limits of the tidal zone. The journal provides a unique forum, unifying the multidisciplinary approaches to the study of the oceanography of estuaries, coastal zones, and continental shelf seas. It features original research papers, review papers and short communications treating such disciplines as zoology, botany, geology, sedimentology, physical oceanography.
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