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Estimating the water quality condition of river and lake water in the Midwestern United States from its spectral characteristics.

机译:从其光谱特征估算美国中西部河流和湖泊水的水质状况。

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摘要

This study focuses on developing/calibrating remote sensing algorithms for water quality retrieval in Midwestern rivers and lakes. In the first part of this study, the spectral measurements collected using a hand-held spectrometer as well as water quality observations for the Wabash River and its tributary the Tippecanoe River in Indiana were used to develop empirical models for the retrieval of chlorophyll (chl) and total suspended solids (TSS). A method for removing sky and sun glint from field spectra for turbid inland waters was developed and tested. Empirical models were then developed using a subset of the field measurements with the rest for model validation. Spectral characteristics indicative of waters dominated by different inherent optical properties (IOPs) were identified and used as the basis of selecting bands for empirical model development. The second part of this study focuses on the calibration of an existing bio-geo-optical model for studying the spatial variability of chl, non-algal particles (NAP), and colored dissolved organic matter (CDOM) in episodic St. Joseph River plumes in southern Lake Michigan. One set of EO-1 Hyperion imagery and one set of boat-based spectrometer measurements were successfully acquired to capture episodic plume events. Coincident water quality measurements were also collected during these plume events. A database of inherent optical properties (IOPs) measurements and spectral signatures was generated and used to calibrate a bio-geo-optical model. Finally, a comprehensive spectral-biogeochemical database was developed for the Wabash River and its tributaries in Indiana by conducting field sampling of the rivers using a boat platform over different hydrologic conditions during summer 2014. In addition to the various spectral measurements taken by a handheld field spectrometer, this database includes corresponding in situ measurements of water quality parameters (chl, NAP, and CDOM), nutrients (TN, TP, dissolved organic carbon (DOC)), water-column IOPs, water depths, substrate types and bottom reflectance spectra. The temporal variability of water quality parameters and nutrients in the rivers was analyzed and studied. A look-up table (LUT) based spectrum matching methodology was applied to the collected observations in the database to simplify the retrieval of water quality parameters and make the data accessible to a wider range of end users.;It was found that the ratio of the reflectance peak at the red edge (704 nm) with the local minimum caused by chlorophyll absorption at 677 nm was a strong predictor of chl concentrations (coefficient of determination ( R2) = 0.95). The reflectance peak at 704 nm was also a good predictor for TSS estimation (R2 = 0.75). In addition, we also found that reflectance within the NIR wavelengths (700--890 nm) all showed strong correlation (0.85--0.91) with TSS concentrations and generated robust models.;Field measured concentrations of NAP and CDOM at 67% of the sampled sites in the St Joseph River plume fall within one standard deviation of the retrieved means using the spectrometer measurements and the calibrated bio-geo-optical model. The percentage of sites within one standard deviation (88%) is higher for the estimation of chl concentrations. Despite the dynamic nature of the observed plume and the time lag during field sampling, 77% of sampled sites were found to have field measured chl and NAP concentrations falling within one standard deviation of the Hyperion derived values. The spatial maps of water quality parameters generated from the Hyperion image provided a synoptic view of water quality conditions. Analysis highlights that concentrations of NAP, chl, and CDOM were more than three times higher in conjunction with river outflow and inside the river plumes than in ambient water. It is concluded that the storm-initiated plume is a significant source of sediments, carbon and chl to Lake Michigan.;The temporal variability of water quality parameters and nutrients in the Wabash River was closely associated with hydrologic conditions, while no significant correlations existed between these parameters and streamflow for the Tippecanoe River, probably due to the two upstream reservoirs. The poor relationship between CDOM and DOC indicates that most DOC in the rivers was from human sources such as wastewater. It was also found that the source of water (surface runoff or combined sewer overflows (CSO)) to a river, water temperature, and nutrients are important factors controlling instream concentrations of phytoplankton. The LUT retrieved chl and NAP concentrations were in good agreement with field measurements with slopes close to 1.0. The average estimation errors for NAP and chl were within 4.1% and 37.7%, respectively, of independently obtained lab measurements. The CDOM levels were not well estimated and the LUT retrievals for CDOM showed large variability, probably due to the small data range collected in this study and the insensitivity of remote sensing reflectance, Rrs, to CDOM change. (Abstract shortened by ProQuest.).
机译:这项研究的重点是开发/校准中西部河流和湖泊中水质检索的遥感算法。在本研究的第一部分中,使用手持式光谱仪收集的光谱测量结果以及印第安纳州瓦巴什河及其支流蒂佩卡努河的水质观测数据,用于开发经验模型来提取叶绿素(chl)和总悬浮固体(TSS)。开发并测试了一种从浑浊的内陆水域的光谱中去除天空和阳光闪烁的方法。然后,使用现场测量的子集开发经验模型,其余用于模型验证。确定了指示由不同固有光学特性(IOP)占主导地位的水的光谱特征,并将其用作为经验模型开发选择波段的基础。本研究的第二部分着重于对现有的生物地球光学模型进行标定,以研究散发性圣约瑟夫河羽流中的chl,非藻类颗粒(NAP)和有色溶解有机物(CDOM)的空间变异性在密歇根湖南部。成功获取了一组EO-1 Hyperion影像和一组基于船载的光谱仪测量值,以捕获情景羽状事件。在这些羽流事件中还收集了一致的水质测量结果。生成了固有光学特性(IOP)测量和光谱特征的数据库,并将其用于校准生物地球光学模型。最后,通过在2014年夏季使用船艇平台在不同的水文条件下对河流进行野外采样,为瓦巴什河及其支流在印第安纳州建立了一个全面的光谱生物地球化学数据库。光谱仪,该数据库包括水质参数(chl,NAP和CDOM),养分(TN,TP,溶解有机碳(DOC)),水柱IOP,水深,基质类型和底部反射光谱的相应原位测量。分析和研究了河流中水质参数和养分的时间变化。将基于查找表(LUT)的光谱匹配方法应用于数据库中收集到的观测值,以简化水质参数的检索并使数据可供更广泛的最终用户使用;叶绿素吸收在677 nm处引起的在红色边缘(704 nm)处具有最小最小值的反射峰是chl浓度的强预测指标(测定系数(R2)= 0.95)。 704 nm处的反射峰也是TSS估计的良好预测指标(R2 = 0.75)。此外,我们还发现NIR波长(700--890 nm)内的反射率均与TSS浓度呈强相关性(0.85--0.91),并生成了稳健的模型;实地测得NAP和CDOM浓度为67%使用分光计测量和校准的生物地球光学模型,圣约瑟夫河羽流中的采样点落在所取平均值的一个标准偏差之内。用于估计chl浓度的一个标准偏差内的位点百分比(88%)较高。尽管在现场采样过程中观察到的羽流具有动态特性和时滞,但发现77%的采样站点的现场测得的chl和NAP浓度均在Hyperion衍生值的一个标准偏差内。从Hyperion图像生成的水质参数的空间图提供了水质状况的概要视图。分析结果表明,与河水一起流出和河羽内部,NAP,chl和CDOM的浓度比环境水中高三倍以上。结论是,暴风爆发的羽流是密歇根湖的重要沉积物,碳和氯的源头。瓦巴什河水质参数和养分的时间变化与水文条件密切相关,而两者之间无显着相关性。 Tippecanoe河的这些参数和流量,可能是由于上游有两个水库。 CDOM和DOC之间的关系很差,表明河流中的大多数DOC来自人类资源,例如废水。人们还发现,河流的水源(地表径流或下水道溢流(CSO)),水温和养分是控制浮游植物入流浓度的重要因素。 LUT检索到的chl和NAP浓度与斜率接近1.0的现场测量结果非常吻合。 NAP和chl的平均估计误差分别在独立获得的实验室测量值的4.1%和37.7%之内。 CDOM的水平没有得到很好的估计,CDOM的LUT检索显示出很大的可变性,这可能是由于本研究收集的数据范围较小,以及遥感反射率Rrs对CDOM变化不敏感。 (摘要由ProQuest缩短。)。

著录项

  • 作者

    Tan, Jing.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Agricultural engineering.;Water resources management.;Remote sensing.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 178 p.
  • 总页数 178
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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