Office of Research and Development, US EPA, Durham, NC, 27709, USA.
Oak Ridge Institute for Science and Education, US EPA, Durham, NC, 27709, USA.
Environ Monit Assess. 2022 Feb 14;194(3):179. doi: 10.1007/s10661-021-09684-w.
Water quality monitoring is relevant for protecting the designated, or beneficial uses, of water such as drinking, aquatic life, recreation, irrigation, and food supply that support the economy, human well-being, and aquatic ecosystem health. Managing finite water resources to support these designated uses requires information on water quality so that managers can make sustainable decisions. Chlorophyll-a (chl-a, µg L) concentration can serve as a proxy for phytoplankton biomass and may be used as an indicator of increased anthropogenic nutrient stress. Satellite remote sensing may present a complement to in situ measures for assessments of water quality through the retrieval of chl-a with in-water algorithms. Validation of chl-a algorithms across US lakes improves algorithm maturity relevant for monitoring applications. This study compares performance of the Case 2 Regional Coast Colour (C2RCC) chl-a retrieval algorithm, a revised version of the Maximum-Peak Height (MPH) algorithm, and three scenarios merging these two approaches. Satellite data were retrieved from the MEdium Resolution Imaging Spectrometer (MERIS) and the Ocean and Land Colour Instrument (OLCI), while field observations were obtained from 181 lakes matched with U.S. Water Quality Portal chl-a data. The best performance based on mean absolute multiplicative error (MAE) was demonstrated by the merged algorithm referred to as C-M (MAE = 1.8, bias = 0.97, n = 836). In the C-M algorithm, the MPH chl-a value was retained if it was > 10 µg L; if the MPH value was ≤ 10 µg L, the C2RCC value was selected, as long as that value was < 15 µg L. Time-series and lake-wide gradients compared against independent assessments from Lake Champlain and long-term ecological research stations in Wisconsin were used as complementary examples supporting water quality reporting requirements. Trophic state assessments for Wisconsin lakes provided examples in support of inland water quality monitoring applications. This study presents and assesses merged adaptations of chl-a algorithms previously reported independently. Additionally, it contributes to the transition of chl-a algorithm maturity by quantifying error statistics for a number of locations and times.
水质监测对于保护水的指定用途或有益用途至关重要,这些用途包括饮用水、水生生物、娱乐、灌溉和食品供应等,它们支持着经济、人类福祉和水生态系统健康。为了管理有限的水资源以支持这些指定用途,需要了解水质信息,以便管理者能够做出可持续的决策。叶绿素 a(chl-a,µg/L)浓度可以作为浮游植物生物量的替代指标,并且可以用作人为营养物质增加的应激指示物。卫星遥感可以通过水内算法来检索 chl-a,为水质评估提供原位测量的补充。在美国湖泊中验证 chl-a 算法可以提高与监测应用相关的算法成熟度。本研究比较了案例 2 区域海岸色(C2RCC)chl-a 反演算法、改进的最大峰值高度(MPH)算法以及融合这两种方法的三种方案的性能。从 MEdium Resolution Imaging Spectrometer(MERIS)和海洋和陆地色仪器(OLCI)中检索卫星数据,而实地观测则来自与美国水质门户 chl-a 数据相匹配的 181 个湖泊。基于平均绝对乘法误差(MAE)的最佳性能是由合并算法 C-M 展示的(MAE=1.8,偏差=0.97,n=836)。在 C-M 算法中,如果 MPH chl-a 值大于 10 µg/L,则保留 MPH chl-a 值;如果 MPH 值小于或等于 10 µg/L,则选择 C2RCC 值,只要该值小于 15 µg/L。与来自尚普兰湖和威斯康星州长期生态研究站的独立评估进行的时间序列和全湖梯度比较被用作支持水质报告要求的补充示例。威斯康星州湖泊的营养状态评估提供了支持内陆水质监测应用的示例。本研究介绍并评估了先前独立报告的 chl-a 算法的合并改编。此外,它通过量化多个地点和时间的误差统计数据,为 chl-a 算法的成熟度转变做出了贡献。