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Hyperspectral data modeling for water quality studies in Michigan's inland lakes.

机译:用于密歇根州内陆湖泊水质研究的高光谱数据建模。

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Hyperspectral remote sensing imagery has been used to estimate spatial and temporal variation of water quality, such as chlorophyll a, transparency, and suspended solids, primarily for marine and coastal waters. Although physicochemical properties of marine and inland waters differ, hyperspectral data and modeling may provide an alternative tool for inland lake assessment. However, little has been done to identify the most suitable spectral bands for water quality estimation and there is a lack of quantitative relationship between water quality and hyperspectral data. The primary objectives of this study are to identify optimal spectral bands most sensitive to water quality indicators and to develop improved hyperspectral water quality indicators of inland lakes. The secondary objective is to determine the most effective filters for noise removal in hyperspectral data.; To address these objectives, a field campaign was conducted on 42 inland lakes in Michigan in 2004. Radiometric spectra, Secchi disk depth, dissolved oxygen, temperature, and light extinction profile data were collected. Water samples were analyzed for chlorophyll a, suspended solid, total nitrogen, total phosphorus, non-purgable organic carbon, and phytoplankton species composition. Spectral radiances were measured with a hand-held spectrometer (LabSpecRTM Pro) and with an airborne Imaging Spectrometer for Applications (AISA) sensor, to correlate the water quality and hyperspectral data.; Principal Component Analysis was used to identify the narrow-wavebands, and derivative analysis used to determine the region-wavebands. Statistical spectral water quality indicators were developed to correlate with Secchi depth, chlorophyll a, total suspended solid, non-purgable organic carbon, diatom biomass, green algal biomass, and bluegreen algal biomass. These relations were validated to suggest that high accuracies were achieved for Secchi depth (R2 0.76--0.84), chlorophyll a (R2 0.70--0.76), and bluegreen algae (R2 0.56--0.72). The quantitative relationship between remotely sensed variables and water quality indicators can be used to extrapolate point-based water quality measurements to large spatial extents for an improved water quality assessment. Additionally, the Savitsky Golay filter was found the best to remove spectral noises. The innovation of this study is that it developed a quantitative relationship between hyperspectral data and water quality variables of inland lakes in Michigan.
机译:高光谱遥感图像已被用于估计主要针对海洋和沿海水域的水质的时空变化,例如叶绿素a,透明度和悬浮固体。尽管海洋和内陆水域的理化特性不同,但高光谱数据和建模可能会为内陆湖泊评估提供替代工具。然而,为确定水质估计最适合的光谱带所做的工作很少,并且水质与高光谱数据之间缺乏定量关系。这项研究的主要目标是确定对水质指标最敏感的最佳光谱带,并开发出内陆湖泊改进的高光谱水质指标。次要目标是确定用于去除高光谱数据中噪声的最有效滤波器。为了实现这些目标,2004年在密歇根州的42个内陆湖上进行了野战。收集了辐射光谱,Secchi盘深度,溶解氧,温度和消光剖面数据。分析了水样中的叶绿素a,悬浮固体,总氮,总磷,不可净化的有机碳和浮游植物的组成。使用手持式光谱仪(LabSpecRTM Pro)和机载成像光谱仪(AISA)传感器测量光谱辐射度,以关联水质和高光谱数据。主成分分析用于识别窄波段,导数分析用于确定区域波段。开发了统计光谱水质指标,以与Secchi深度,叶绿素a,总悬浮固体,不可净化的有机碳,硅藻生物量,绿藻生物量和蓝绿藻生物量相关。这些关系已得到验证,表明在Secchi深度(R2 0.76--0.84),叶绿素a(R2 0.70--0.76)和蓝藻(R2 0.56--0.72)方面实现了较高的准确度。遥感变量与水质指标之间的定量关系可用于将基于点的水质测量值外推到较大的空间范围,以改善水质评估。此外,Savitsky Golay滤波器被发现是消除频谱噪声的最佳选择。这项研究的创新之处在于,它建立了密歇根州内陆湖泊高光谱数据与水质变量之间的定量关系。

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