将遥感数据与时空原位样本相结合,进行赤潮(Karenia brevis)检测。

IF 3 4区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES Integrated Environmental Assessment and Management Pub Date : 2024-03-01 DOI:10.1002/ieam.4908
Ronald Fick, Miles Medina, Christine Angelini, David Kaplan, Paul Gader, Wenchong He, Zhe Jiang, Guangming Zheng
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引用次数: 0

摘要

我们提出了一种检测佛罗里达西海岸赤潮(Karenia brevis)的新方法,该方法由神经网络分类器驱动,结合了遥感数据和时空分布的现场样本数据。该网络利用来自 MODIS-Aqua 卫星平台(2002-2021 年)的七种海洋颜色特征以及佛罗里达鱼类和野生动物保护委员会及其合作伙伴收集的现场样本数据,对 1 公里网格范围内的藻华进行检测。两个关键的创新明显提高了模型的性能:卫星特征的深度归一化和现场特征的编码。对卫星特征进行了归一化处理,以调整沿海浅水区与深度有关的海底反射效应。原位数据用于设计一个特征,通过 K-近邻时空邻近加权方案,将鳊鱼浓度的近期附近地面实况背景化。通过严格的实验比较发现,我们的模型优于文献中介绍的和实际应用的现有远程检测方法。该分类器具有很强的可操作性,可支持对未来水华进行更有效的监测和缓解,对其空间范围和分布进行更准确的交流,并加深对该地区水华动态、迁移、驱动因素和影响的科学理解。这种方法还可用于沿海水域其他藻华的检测。Integr Environ Assess Manag 2024;00:1-15.© 2024 SETAC.
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Fusing remote sensing data with spatiotemporal in situ samples for red tide (Karenia brevis) detection

We present a novel method for detecting red tide (Karenia brevis) blooms off the west coast of Florida, driven by a neural network classifier that combines remote sensing data with spatiotemporally distributed in situ sample data. The network detects blooms over a 1-km grid, using seven ocean color features from the MODIS-Aqua satellite platform (2002–2021) and in situ sample data collected by the Florida Fish and Wildlife Conservation Commission and its partners. Model performance was demonstrably enhanced by two key innovations: depth normalization of satellite features and encoding of an in situ feature. The satellite features were normalized to adjust for depth-dependent bottom reflection effects in shallow coastal waters. The in situ data were used to engineer a feature that contextualizes recent nearby ground truth of K. brevis concentrations through a K-nearest neighbor spatiotemporal proximity weighting scheme. A rigorous experimental comparison revealed that our model outperforms existing remote detection methods presented in the literature and applied in practice. This classifier has strong potential to be operationalized to support more efficient monitoring and mitigation of future blooms, more accurate communication about their spatial extent and distribution, and a deeper scientific understanding of bloom dynamics, transport, drivers, and impacts in the region. This approach also has the potential to be adapted for the detection of other algal blooms in coastal waters. Integr Environ Assess Manag 2024;20:1432–1446. © 2024 SETAC

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来源期刊
Integrated Environmental Assessment and Management
Integrated Environmental Assessment and Management ENVIRONMENTAL SCIENCESTOXICOLOGY&nbs-TOXICOLOGY
CiteScore
5.90
自引率
6.50%
发文量
156
期刊介绍: Integrated Environmental Assessment and Management (IEAM) publishes the science underpinning environmental decision making and problem solving. Papers submitted to IEAM must link science and technical innovations to vexing regional or global environmental issues in one or more of the following core areas: Science-informed regulation, policy, and decision making Health and ecological risk and impact assessment Restoration and management of damaged ecosystems Sustaining ecosystems Managing large-scale environmental change Papers published in these broad fields of study are connected by an array of interdisciplinary engineering, management, and scientific themes, which collectively reflect the interconnectedness of the scientific, social, and environmental challenges facing our modern global society: Methods for environmental quality assessment; forecasting across a number of ecosystem uses and challenges (systems-based, cost-benefit, ecosystem services, etc.); measuring or predicting ecosystem change and adaptation Approaches that connect policy and management tools; harmonize national and international environmental regulation; merge human well-being with ecological management; develop and sustain the function of ecosystems; conceptualize, model and apply concepts of spatial and regional sustainability Assessment and management frameworks that incorporate conservation, life cycle, restoration, and sustainability; considerations for climate-induced adaptation, change and consequences, and vulnerability Environmental management applications using risk-based approaches; considerations for protecting and fostering biodiversity, as well as enhancement or protection of ecosystem services and resiliency.
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