利用多任务卫星数据进行时空相干氰化有害藻华监测

Kate C. Fickas, Ryan E. O'Shea, N. Pahlevan, Brandon Smith, Sarah L. Bartlett, Jennifer L. Wolny
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摘要

蓝藻有害藻华(cyanoHABs)提出了一个关键的公共卫生挑战水生资源和公共卫生管理者。卫星遥感有利于查明和绘制蓝藻有害藻华及其动态,为淡水资源管理者提供一种快速和长期保护公众健康的工具。利用遥感监测湖泊和水库中的蓝藻有害藻华需要强大的处理技术,以便以高重访率在地方和全球尺度上产生准确和一致的产品。我们利用Sentinel-2 (S2)多光谱仪器(MSI)和Sentinel-3 (S3)海洋陆地颜色仪器(OLCI)这两个多光谱卫星传感器分别提供的高时空分辨率叶绿素-a (Chla)和藻蓝蛋白(PC)地图,研究了2018年美国犹他湖的水华动态。我们使用已建立的混合密度网络(mdn)从MSI中映射Chla,并训练新的mdn用于从OLCI中检索PC,使用先前用于从高光谱图像中检索PC的相同架构和训练数据集。我们的评估表明,与现有性能最高的PC算法相比,该算法的中位数不确定性和偏差(即分别为42%和-4%)更低。此外,我们将基于mdd的PC和Chla产品的水华趋势与卫星衍生的蓝藻细胞密度估计值蓝藻指数(CI-cyano)进行了比较,以评估它们在公共卫生风险管理方面的效用。我们的综合分析表明,与CI-cyano相比,基于mnd的地图在华度、频率、发生和范围方面的时空一致性有所提高,并且具有用于公共卫生和水生资源管理人员监测氰化有害藻华的潜力。
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Leveraging multimission satellite data for spatiotemporally coherent cyanoHAB monitoring
Cyanobacteria harmful algal blooms (cyanoHABs) present a critical public health challenge for aquatic resource and public health managers. Satellite remote sensing is well-positioned to aid in the identification and mapping of cyanoHABs and their dynamics, giving freshwater resource managers a tool for both rapid and long-term protection of public health. Monitoring cyanoHABs in lakes and reservoirs with remote sensing requires robust processing techniques for generating accurate and consistent products across local and global scales at high revisit rates. We leveraged the high spatial and temporal resolution chlorophyll-a (Chla) and phycocyanin (PC) maps from two multispectral satellite sensors, the Sentinel-2 (S2) MultiSpectral Instrument (MSI) and the Sentinel-3 (S3) Ocean Land Colour Instrument (OLCI) respectively, to study bloom dynamics in Utah Lake, United States, for 2018. We used established Mixture Density Networks (MDNs) to map Chla from MSI and train new MDNs for PC retrieval from OLCI, using the same architecture and training dataset previously proven for PC retrieval from hyperspectral imagery. Our assessment suggests lower median uncertainties and biases (i.e., 42% and -4%, respectively) than that of existing top-performing PC algorithms. Additionally, we compared bloom trends in MDN-based PC and Chla products to those from a satellite-derived cyanobacteria cell density estimator, the cyanobacteria index (CI-cyano), to evaluate their utility in the context of public health risk management. Our comprehensive analyses indicate increased spatiotemporal coherence of bloom magnitude, frequency, occurrence, and extent of MDN-based maps compared to CI-cyano and potential for use in cyanoHAB monitoring for public health and aquatic resource managers.
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