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1.
鄱阳湖叶绿素a浓度遥感定量模型研究   总被引:1,自引:0,他引:1  
江辉 《测绘科学》2012,37(6):49-52
叶绿素a浓度是反映湖泊水体营养状况的重要指标,本研究通过分析水体叶绿素a浓度与高光谱反射特征的相互关系,采用一阶微分值和峰值比值法分别建立了叶绿素a的高光谱定量反演模型,在此基础上与同步MODIS数据敏感波段建立卫星定量反演模型。结果表明:叶绿素a荧光峰出现在波段690nm-700nm,波段696nm一阶微分值相关系数最大;波段700nm与波段680nm的比值与其对数相关性较好,MODIS数据波段2和波段1比值的指数模型为最佳的回归模型。  相似文献   

2.
杨硕  王世新  周艺  阎福礼 《遥感学报》2009,13(S1):305-309
目前, 针对太湖水体的叶绿素波段敏感性的分析, 大多集中在实测的高光谱反射率数据或者图像提取反射率与叶绿素浓度的统计分析结果上, 缺乏基于水体光学特性的研究, 并且两者之间的一致性也一直缺少论证。研究中采用2004 年4 月和2007 年8 月的两期数据, 首先从水质参数的生物光学特性入手, 基于生物光学模型, 利用叶绿素和其他水质参数的吸收和后向散射系数, 模拟计算其他水质参数不变, 叶绿素浓度处于不同水平时的水面反射率, 分析实测反射率对叶绿素浓度变化的响应; 利用MODIS 的波段响应函数把实测光谱模拟成宽波段的MODIS 反射率, 以此作为桥梁进而对实测的高光谱反射率和MODIS 图像提取反射率与叶绿素浓度的相关程度的一致性进行分析, 为利用MODIS 图像进行水质参数反演时的反演因子选择提供了依据。  相似文献   

3.
周正  万茜婷 《测绘通报》2014,(10):82-85
以武汉东湖为研究区域,利用MODIS数据和地面准同步叶绿素a浓度实测数据,建立适合东湖水体的叶绿素a浓度遥感定量估算模型,从而分析MODIS数据应用于内陆湖泊水体叶绿素a浓度反演的可行性。  相似文献   

4.
基于实测光谱估测密云水库水体叶绿素a浓度   总被引:2,自引:0,他引:2  
水中叶绿素a浓度是衡量水体初级生产力和富营养化程度的最基本的指标。利用野外便携式地物光谱仪对密云水库水体进行反射光谱测量并同步采集水样。通过分析叶绿素a浓度与光谱反射特征的相关关系,建立了叶绿素a反演模型。结果表明,利用单波段光谱反射率、光谱比值指数或微分光谱比值能够可靠反演叶绿素a浓度;但微分光谱与叶绿素a浓度相关性更高,更适用于密云水库水体叶绿素a浓度的高光谱反演。  相似文献   

5.
基于高光谱遥感反射比的太湖水体叶绿素a含量估算模型   总被引:19,自引:1,他引:19  
旨在寻找叶绿素a的高光谱遥感敏感波段并建立其定量估算模型。通过对太湖水体的连续监测,获得了从2004年6月到8月3个月的太湖水体高光谱数据和水质化学分析数据。利用实测的高光谱数据分析计算太湖水体的离水辐亮度和遥感反射比;然后,通过相关分析寻找反演叶绿素a浓度的高光谱敏感波段,进而建立反演太湖水体叶绿素a浓度的高光谱遥感定量估算模型,并用相关数据对模型进行精度分析。研究发现,水体的遥感反射比光谱在719nm和725nm存在两个峰,其中719nm处的峰更明显且稳定。通过模型的对比分析,发现用这两个峰值处的遥感反射比参与建模可以提高叶绿素a的估算精度;并且认为由反射比比值变量R719/R670所建立的线性模型对叶绿素a浓度的估算精度最理想。  相似文献   

6.
肖青  闻建光  柳钦火  周艺 《遥感学报》2006,10(4):559-567
遥感监测水体叶绿素含量是水质遥感研究的难点之一。本文通过研究不同叶绿素含量水体反射率的光谱特征,确定了提取叶绿素a含量的最佳特征波段,建立了太湖水体叶绿素a的混合光谱模型。研究发现,混合光谱模型提取的水体叶绿素a百分比浓度与同步采样分析的叶绿素a浓度之间有较好的线性相关性。并基于TM和HEPERION图像利用此模型生成了叶绿索a浓度分布图。研究结果表明,混合光谱分解模型可以作为遥感监测水体叶绿素a含量的定量模型。  相似文献   

7.
利用MODIS影像数据,对水华现象出现的重要物质——巢湖水体叶绿素a信息进行反演。在对数据进行预处理后,采集影像相应位置的像元灰度值,与现实中在对应位置观测的湖水叶绿素a浓度进行相关性拟合分析,得到叶绿素a浓度与像元灰度值的相关性方程与相关系数。在建立相关性模型时采用了单波段和波段比值法,得到的最高相关系数为R2=0.881 8,表明利用这种方法反演巢湖水体叶绿素a浓度空间分布具有一定的可靠性。选择相关系数性较高的2个拟合方程反向演算MODIS影像,最后成功得到巢湖湖面当日叶绿素a浓度分布状况图,为巢湖防治水华发生提供了比较准确可靠的信息。  相似文献   

8.
应用MODIS数据反演河北省海域叶绿素a浓度   总被引:6,自引:0,他引:6  
为了建立更加合理、准确的叶绿素a遥感反演模型,利用地物光谱仪测定了河北省海域水面的光谱反射率,分析了光谱反射率与实测叶绿素a浓度之间的关系.在此基础上,通过MODIS数据各波段及波段组合的反射率与实测叶绿素a浓度的相关分析,确定第1波段(B1)为最佳反演波段,建立了应用B1反演叶绿素a浓度的遥感模型,并对模型精度进行验证.结果表明:该模型相关系数为0.66,反演结果均方根误差为0.48 mg/m3,模型精度优于SeaDAS的OC3标准经验算法;该模型反演河北省海域表层水体的叶绿素a浓度有较好的效果.  相似文献   

9.
水体叶绿素a浓度遥感反演方法研究进展   总被引:2,自引:0,他引:2  
针对水体叶绿素a浓度反演问题,从反演所需的遥感数据源、主要研究区、主要研究单位以及反演模型4个方面,系统介绍了叶绿素a浓度遥感反演的发展现状,分析了现有水体叶绿素a遥感反演方法的优缺点,提出了目前存在的问题,并对水体叶绿素a浓度反演研究进行了展望。  相似文献   

10.
基于HJ-1A/B CCD数据的东湖叶绿素a浓度反演可行性研究   总被引:4,自引:0,他引:4  
以武汉东湖为研究区域,利用HJ-1A/B CCD数据和地而准同步叶绿索a浓度实测数据,建市适合东湖水体的叶绿素a浓度遥感定量估算模型,从而分析HJ-1A/B CCD数据应用于内陆湖泊水体叶绿素a浓度反演的可行性.  相似文献   

11.
Accurate assessment of phytoplankton chlorophyll-a (Chla) concentration in turbid waters by means of remote sensing was challenging due to the optical complexity of turbid waters. Recently, a conceptual model containing reflectance in three spectral bands in the red and near-infrared range of the spectrum was suggested for retrieving Chla concentrations in turbid productive waters. The objective of this paper was to evaluate the performance of this three-band model to estimate Chla concentration in the Pearl River Estuary (PRE), China. Reflectance spectra of surface water and water samples were collected concurrently. The samples contained variable Chla (4.80-92.60 mg/m3) and total suspended solids (0.4-55.2 mg/L dry wt). Colored dissolved organic matter (CDOM) absorption at 400 nm was 0.40-1.41 m−1; turbidity ranged from 4 to 25 NTU (Nephelometric Turbidity Units). The three-band model was spectrally calibrated by iterative and least-square linear regression methods to select the optimal spectral bands for the most accurate Chla estimation. Strong linear relationships (R2=0.81, RMSE=1.4 mg/m3, N=32) were established between measured Chla and the levels obtained from the calibrated three-band model [R−1(684)-R−1(690)]×R(718), where R(λ) was the reflectance at wavelength λ. The calibrated three-band model was independently validated (R2=0.9521, RMSE=6.44 mg/m3, N=16) and applied to retrieve Chla concentrations from the calibrated EO-1 Hyperion reflectance data in the PRE on December 21, 2006. The EO-1 Hyperion-derived Chla concentrations were further validated using synchronous in situ data collected on the same day (R2=0.64, RMSE=2 mg/m3, N=9). The spatial tendency of Chla distribution mapping by Hyperion showed gradually increased concentrations of Chla farther from the river mouths (although decreasing from east to west), which were disturbed by the combination of river outlets and tidal current in Lingding Bay of the PRE. This observation conformed to previous observations and studies, and could reasonably be explained by geographical changes. Also, results indicated that the slope of the three-band regression line decreased as the Chla concentration increased, resulting in the first sensitive band of the three-band model to move towards short wavelengths. These findings validated the rationale behind the conceptual model and demonstrated the robustness of this algorithm for Chla retrieval from in situ data and the Hyperion satellite sensor in turbid estuarine waters of the PRE, China.  相似文献   

12.
Based on in situ water sampling and field spectral measurements in Dianshan Lake, a semi-analytical three-band algorithm was used to estimate Chlorophylla (Chla) content in case II waters. The three bands selected to estimate Chla for high concentrations included 653, 691 and 748 nm. An equation, based on the difference in reciprocal reflectance between 653 and 691 nm, multiplied by reflectance at 748 nm as [Rrs−1(653) − Rrs−1 (691)] Rrs(748), explained 85.57% of variance in Chla concentration with a root mean square error (RMSE) of <6.56 mg/m3. In order to test the utility of this model with satellite data, HJ-1A Hyperspectral Imager (HSI) data were analyzed using comparable wavelengths selected from the in situ data [B67−1(656) − B80−1(716)] B87(753). This model accounted for 84.3% of Chla variation, estimating Chla concentrations with an RMSE of <4.23 mg/m3. The results illustrate that, based on the determined wavelengths, the spectrum-based model can achieve a high estimation accuracy and can be applied to hyperspectral satellite imagery especially for higher Chla concentration waters.  相似文献   

13.
夏季太湖叶绿素a浓度的高光谱数据监测模型   总被引:1,自引:0,他引:1  
本文依据2004年7月的实测数据构建了太湖夏季叶绿素a浓度的实测光谱数据估计模型,并使用2004年8月的数据对模型进行了验证。调查样点覆盖了太湖内的典型水域,水样数据由无锡太湖环境监测站采集。样点的光谱数据用ASDFieldSpec野外光谱仪获取,每个样点测量10次,测量结果被转换为遥感反射率。对不同的波段组合进行比较分析后,从可解释性出发,最终选择了归一化指数表达式作为最佳波段组合,所建立的模型为:Chla(μg/L)=EXP(2.478 +16.378*N66),其中,N66为(R696 -R661) /(R696 +R661)。模型的R^2为0.9051,显著性p〈0.0001。与其他模型相比,本文的模型比较稳健,用于估计8月的叶绿素a浓度具有较小的绝对误差。本文的工作同时表明,在太湖的夏季相邻月份,可以使用实测光谱数据模型进行水体叶绿素a浓度的估计。  相似文献   

14.
Accurate estimation of chlorophyll-a concentration in turbid coastal waters by means of remote sensing is challenging due to the optical complexity of these waters. We have developed a four-band quasi-analytical algorithm for assessment of chlorophyll-a concentration in coastal waters. The objectives of this study are to validate the applicability of three-band semi-analytical algorithm, quasi-analytical algorithm, and four-band quasi-analytical algorithm in estimating chlorophyll-a concentration in turbid coastal waters for MODIS sensor. These three algorithms are calibrated and evaluated against coastal evaluation datasets provided by SeaWiFS Bio-optical Archive and Storage System. The algorithm validation results indicate that the four-band quasi-analytical algorithm produces a superior performance to both three-band semi-analytical algorithm and quasi-analytical algorithm. By comparison, using four-band quasi-analytical algorithm produces 21.61 % uncertainty in estimating chlorophyll-a concentration from turbid coastal waters, lower than 77.90 % for three-band semi-analytical algorithm and 74.31 % for quasi-analytical algorithm, respectively. The significantly reduced uncertainty in chlorophyll-a concentration assessment is due to effectively removal of pigment-package effects and particle overlapping effects on the chlorophyll-a absorption estimation using a optical classification method. These findings imply that, provided that an atmospheric correction scheme for visible and near-infrared bands is available, the database of MODIS imagery could be used for quantitative monitoring of chlorophyll-a concentration in turbid coastal waters by four-band quasi-analytical algorithm.  相似文献   

15.
The accurate assessment of total suspended sediment (TSM) concentration in coastal waters by means of remote sensing is quite challenging, due to the optical complexity and significant variability of these waters. In this study, three-band semi-analytical TSM retrieval (TSTM) model with HJ-1A/CCD spectral bands was developed for the retrieval of TSM concentration from turbid coastal waters. This model was calibrated and validated by means of one calibration dataset and three independent validation datasets obtained from three different turbid waters. It was found that the TSTM model may be used to retrieve accurate TSM concentration data from highly turbid waters without the spectral slope of the model requiring further optimization. Finally, the TSM concentration data were quantified from the HJ-1A/CCD images after atmospheric correction using the dark-object subtraction technique. Upon comparing the model-derived and field-measured TSM concentration data, it was observed that the TSTM model produced <29% uncertainty in deriving TSM concentration from the HJ-1A/CCD data. These findings imply that the TSTM model may be used for the quantitative monitoring of TSM concentration in coastal waters, provided that the atmospheric correction scheme for the HJ-1A/CCD imagery is available.  相似文献   

16.
李云梅  赵焕  毕顺  吕恒 《遥感学报》2022,26(1):19-31
二类水体主要包括内陆及近岸水体,受浮游植物、悬浮颗粒、有色可溶性有机物等多种因素影响,光学特性复杂多变,难以建立统一的水环境参数遥感定量估算模型.针对水体的光学特征,进行水体光学分类,进而反演水环境参数的方法,不仅能够提高参数估算精度,而且便于模型在同类水体中推广应用.水体光学分类方法主要包括基于固有光学特征的光学分类...  相似文献   

17.
资源一号02D高光谱影像内陆水体叶绿素a浓度反演   总被引:1,自引:0,他引:1  
2019-09-12成功发射的资源一号02D卫星(ZY-102D)搭载了新一代可见短波红外高光谱相机AHSI(Advanced Hyperspectral Imager),其丰富的细分波段和较高的空间分辨率在内陆湖库水质监测方面具有较大潜力,但数据可用性有待分析和验证.本研究以中国华东和华北平原的典型富营养湖库(太湖、...  相似文献   

18.
Phytoplankton size classes (hereafter, PSCs) were derived from satellite ocean color data using a present phytoplankton abundance-based optical algorithm in the northern Bering and southern Chukchi Seas to characterize the spatial and seasonal variations of the different PSC and investigate the contributions of small phytoplankton to the total phytoplankton biomass. The comparison results showed that the phytoplankton abundance-based method approach could reasonably classify the three PSCs (pico-, nano-, and micro phytoplankton). The satellite maps of the dominant PSCs were derived using long-term satellite ocean color data. The general spatial distribution showed that the large (micro-) phytoplankton were dominant in the coastal waters and the west side of the Bering strait, while the small size (nano- or pico-) phytoplankton were dominant in the open ocean waters. Nano- and microphytoplankton were dominant in May and October in most of the study area, while pico-phytoplankton were dominant in the summer months in the open ocean waters. The annual variation in small phytoplankton dominance had a strong positive relationship with the annual mean sea surface temperature (SST), which is consistent with the increasing dominance of small phytoplankton biomass as water temperature increases. Microphytoplankton have an apparent increasing trend in the southeastern Chukchi Sea but slightly decreasing trends in Chirikov and St. Lawrence Island Polynya (SLIP). In contrast, there were increasing trends in picophytoplankton in Chirikov and SLIP, which seems to be related to increasing annual SST. It is crucial to monitor changes in dominant groups of phytoplankton community in the Bering and Chukchi Seas as important biological hotspots responding to the recent changes in environmental conditions.  相似文献   

19.
20.
在同步历史实测数据较为缺乏的条件下,基于波谱特征的比值法可以有效进行水体叶绿素a(Chla)和悬浮颗粒物(Tss)浓度的反演。利用不同时期的Landsat遥感卫星影像对九龙江下游河段的叶绿素a和悬浮颗粒物浓度进行了年际变化分析及季节变化分析发现:较高的叶绿素a浓度主要出现在北溪浦南段(北8北9)以及石龟头至北11段,叶绿素a在枯水期呈现浓度增大的趋势;高悬浮颗粒物浓度较易出现在龙津溪入口(北9郭坑公路桥)河段,高悬浮颗粒物浓度季节主要发生在丰水季节。  相似文献   

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