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1.
SMOS卫星盐度数据在中国近岸海域的准确度评估   总被引:3,自引:3,他引:0  
盐度是描述海洋的关键变量,对海表面盐度进行观测可以推进对全球水循环的理解。本文的主要目的是在中国近海海域对SMOS卫星盐度数据进行准确度评估。主要方法是将SMOS卫星L2海洋盐度数据产品(V317)与实测ARGO数据和走航数据进行匹配,并采用统计学的方法对SMOS卫星数据准确度进行评估。结果表明:匹配数据的线性关系不显著,SMOS卫星盐度数据(V317)在南海和东海的均方根误差分别约为1.2和0.7,应用海表面粗糙度修正模型得到的3组海表盐度数据准确度都相对较低,尤其在近岸强风场区域,海表盐度卫星数据相对于实测数据偏高,这可能是由于海表粗糙度和陆地射频干扰(RFI)作用影响的结果;SMOS卫星数据在东海的均方根误差比南海高0.5左右,这可能是由于东海海域为相对开阔海域,受陆地RFI影响相对南海较小;在中国近岸海域,应用SSS1和SSS3模型得到的盐度数据准确度相对较高,可以对模型进行地球物理参数修正,进行局地化改进,预计可以提高近岸海域盐度反演的准确度。  相似文献   

2.
海表盐度(Sea Surface Salinity,SSS)是研究海洋对全球气候影响的重要参量,欧洲航天局(European Space Agency,ESA)设计研发的SMOS(Soil Moisture and Ocean Salinity)是专用于探测海水盐度的卫星之一。受射频干扰(Radio Frequency Interference, RFI)等因素的影响,SMOS卫星盐度产品的精度难以达到预期效果。为了提高SMOS卫星海表盐度产品精度,本文提出一种基于深度神经网络的海表盐度反演算法。以太平洋中部海域(150°E~180°,5°~30°N)为研究区域,利用Argo浮标实测盐度数据为参考真值,将SMOS卫星L1C、L2级产品与Argo盐度数据进行时空匹配。并根据海洋遥感和辐射传输理论,选取亮温(Brightness Temperature,TB)、海表温度(Sea Surface Temperature,SST)、降雨率(Rain Rate,RR)、波高(Significant Wave Height,SWH)、纬向风速(Zonal Wind Speed,ZWS)、经向风速(Meridional Wind Speed,MWS)和蒸发量(Evaporation,Eva)七个影响盐度的重要参数,利用K折交叉验证法,构建了深度神经网络(Deep Neural Network, DNN)模型,对SMOS卫星L2级数据进行反演。实验结果表明,利用本文算法计算得到的海表盐度数据平均绝对误差为0.159,均方根误差为0.195,均明显优于SMOS盐度产品精度,本文提出的算法能够提供更精准的海表盐度产品。  相似文献   

3.
海表面盐度是研究海洋对全球气候影响以及大洋环流的重要参量之一,而卫星遥感技术是获取海表面盐度数据的最有效方法.目前,L波段的SMOS和Aquarius/SAC-D遥感卫星正在用于探测海表面盐度,并根据卫星观测数据和物理机制反演出海表面盐度的产品.但在某些近陆地区域,由于淡水流入及陆地射频(RFI)等因素影响,卫星反演盐度的产品精度较低.文中利用“东方红2号”科学考察船的实测数据、SMOS卫星数据,首次针对中国南海海域提出了用贝叶斯网络模型计算海表面盐度,并用验证数据集(实测Argo盐度)对模型进行适应性评估.经过计算,模型误差和验证误差分别为0.47 psu和0.45 psu,而相应的SMOS Level 2产品的精度分别为1.90 psu和1.82 psu.此模型为海表面盐度的计算提供了一个新方法.  相似文献   

4.
海表面盐度SSS(Sea Surface Salinity)是研究大洋环流和海洋对气候影响的重要参量、是决定海水基本性质的重要因素之一。卫星微波遥感可以满足盐度研究过程中大范围、连续观测的需要。目前,由欧洲空间局设计开发的SMOS(Soil Moisture and Ocean Salinity)卫星于2009年发射成功,并且根据它的观测数据和物理机制反演出了海表面盐度的相关产品。但结果显示,在某些近海岸区域(如中国南海海域)受陆地RFI等诸多因素的影响,基于卫星遥感物理机制反演得到的盐度产品的精度较低。本文的主要目的是利用中国海洋大学"东方红2"科学考察船的走航数据、SMOS卫星数据,针对中国南海海域提出了用BP神经网络预测海表面盐度的方法,并用实测Argo浮标、WOA13的盐度数据对模型进行适应性评估。结果表明,模型产品相对于"东方红2"实测盐度数据的均方根误差(RMSE)是0.21,而SMOS的SSS1产品、SSS2产品和SSS3产品的精度分别为1.90、1.93和1.91。同时,在验证数据集中,模型预测数据相对于Argo浮标实测盐度数据的均方根误差(RMSE)是0.50,而SMOS的SSS1产品、SSS2产品和SSS3产品的精度分别为1.83、1.83和1.84。此模型具有良好的适应性和泛化能力,为海表面盐度的反演和预测提供了一个不依赖于物理机制的新方法。  相似文献   

5.
自欧洲土壤湿度和盐度卫星SMOS和美国宝瓶座盐度卫星Aquarius相继发射之后,多个数据中心发布了两颗卫星的海表盐度网格化产品,其中包括法国海洋研究院SMOS卫星数据小组发布SMOS Locean L3盐度产品、西班牙巴塞罗那专家中心发布SMOS BEC L4盐度产品和美国宇航局喷气动力实验室发布AquariusV3.0 CAP L3盐度产品。本文利用精确盐度现场观测资料从产品精度和模拟海洋现象能力两个方面对以上3种产品质量进行了评估。研究表明:(1) 在精度方面,与盐度现场资料相比,Aquarius CAP 产品质量最高,产品盐度偏差和均方根误差全年稳定且偏差较小,部分海域达到了设计精度;SMOS两种卫星产品在全球海域偏差较不稳定,个别月份出现异常偏差值;SMOS产品在低纬和开阔海域的数据质量相对较高,但在高纬海域仍存在较大误差,需要进一步提升;(2) 在刻画海洋现象方面,Aquarius产品在热带太平洋较好刻画了淡池东缘盐度锋,SMOS BEC产品的刻画能力次之,SMOS Locean产品在热带太平洋充满了小尺度噪音,描述物理现象方面表现偏差。  相似文献   

6.
为了建立高精度的海洋表面盐度预测模型,采用BP神经网络的方法,针对SMOS卫星level 1C级亮度温度数据和辅助数据建立了一种海表面盐度预测模型,以ARGO浮标观测值作为海表盐度实测值来检验新模型预测结果的准确度,同时利用验证集对模型的精度进行验证。结果表明:通过新模型预测的海表盐度(SSS0)比SMOS卫星的3个粗糙度模型盐度产品(SSS1,SSS2,SSS3)精度高;SSS0,SSS1,SSS2,SSS3与ARGO浮标实测盐度(SSS ARGO)的均方根误差分别为0.8473,2.0417,2.0288和2.0805,平均绝对误差分别为0.7553,1.4226,1.4216和1.4566,SSS0与SSS ARGO的均方根误差和绝对平均误差值都明显小于SSS1,SSS2和SSS3与SSS ARGO的;由此可见,建立的海表盐度预测模型精度较高。新模型为海表盐度的反演算法提供了新思路。  相似文献   

7.
SMOS卫星遥感海表盐度资料处理应用研究进展   总被引:3,自引:0,他引:3       下载免费PDF全文
土壤湿度和海洋盐度卫星首次提供了覆盖全球的高频率、高精度、业务化的海表盐度产品,但其处理和延伸应用仍处于初级阶段,后续校准校正工作还将持续数年,如何及时把握其发展轨迹成为一个重要的科学问题.本研究从SMOS计划、数据概况、盐度反演算法、格点产品制作、多源数据融合和产品应用等方面,介绍和评述了SMOS计划及其海表盐度产品应用研究进展,着重分析了反演算法中的各种误差来源,对在轨2 a的运行情况进行了回顾、对未来的发展重点进行了展望,旨在为开发和应用SMOS产品提供参考.  相似文献   

8.
海表盐度是研究海洋变化及其气候效应重要的物理量。本文将2018年SMAP卫星的月均、日均海表盐度产品分别与Argo月均网格化产品、实时散点盐度数据进行比较,评定其精度,并分析全球海表盐度分布特征。结果表明:SMAP卫星月均产品RMSE为0.17,BIAS为0.11,STD为0.17,R为0.98,t检验呈显著相关;SMAP卫星日均产品RMSE为0.28,BIAS为0.23,STD为0.26,R为0.81,相较月均产品,精度较低。SMAP卫星月均产品偏差在中纬度海域较小,在高纬度海域较大;SMAP卫星日均产品偏差在太平洋海域为-0.6~0.6,在地中海海域超过1.0。全球海表盐度在25.0~40.0之间,沿纬度方向呈带状分布,其中大西洋海表盐度普遍高于太平洋和印度洋。  相似文献   

9.
以西太平洋为研究区域,利用Argo浮标表层盐度观测值(5 m)对SMAP卫星获得的2016年海表面盐度反演质量进行了评估。首先将西太平洋2016-01—12期间的每日和每月SMAP卫星SSS数据与Argo实测SSS数据进行匹配,然后利用最小二乘线性回归法对其进行相关性分析,并对误差的分布特征进行了研究。结果表明:SMAP SSS与Argo SSS之间具有极显著的正相关关系;每日Argo浮标数据(WMO ID:2901520,WMO ID:2901548)和SMAP SSS的变化趋势基本一致,前者均方根误差(RMSE)、偏差(Bias)和相关系数(r)分别为0.43, 0.34和0.71,后者RMSE,Bias和r分别为0.41,0.26和0.69;研究区域内全年RMSE值处于0~0.35,在西太平洋南部海域偏差较大,这可能是由于该海域小岛众多,缺少Argo实测数据,导致其网格化的盐度存在较大误差。除夏季外,研究区域的大部分海域,RMSE都小于0.25。在海表盐度较低的海域,两者的对比结果误差较大,该现象在夏秋两季尤为显著。  相似文献   

10.
海表面盐度(Sea Surface Salinity, SSS)是研究大洋环流和海洋对全球气候影响的关键参数之一。目前借助卫星遥感技术获取全天候和连续的SSS是最有效的方法,但是SSS的反演精度在大部分海域达不到预期目标。众所周知,海表面亮温是反演SSS的关键因素之一,海面粗糙度导致了亮温增量的产生,亮温正演模型的误差会影响盐度反演的精度。本文首次提出了依据6个风带划分全球海域,利用Argo实测盐度数据、SMOS卫星数据和相关辅助数据,通过LASSO统计方法在各风带覆盖的海域构建了一个全新的二次曲线亮温增量模型,再通过贝叶斯迭代反演算法计算出了各个海域的SSS产品。与Argo实测SSS对比,新模型下6部分海域反演SSS的绝对平均误差分别为0.76、0.88、0.93、0.92、1.28和1.21,均显著优于修正前(SMOS L2 SSS)产品的误差(0.98、1.61、2.82、1.50、2.35和3.13)。  相似文献   

11.
In this study, sea surface salinity(SSS) Level 3(L3) daily product derived from soil moisture active passive(SMAP)during the year 2016, was validated and compared with SSS daily products derived from soil Moisture and ocean salinity(SMOS) and in-situ measurements. Generally, the root mean square error(RMSE) of the daily SSS products is larger along the coastal areas and at high latitudes and is smaller in the tropical regions and open oceans. Comparisons between the two types of daily satellite SSS product revealed that the RMSE was higher in the daily SMOS product than in the SMAP, whereas the bias of the daily SMOS was observed to be less than that of the SMAP when compared with Argo floats data. In addition, the latitude-dependent bias and RMSE of the SMAP SSS were found to be primarily influenced by the precipitation and the sea surface temperature(SST). Then, a regression analysis method which has adopted the precipitation and SST data was used to correct the larger bias of the daily SMAP product. It was confirmed that the corrected daily SMAP product could be used for assimilation in high-resolution forecast models, due to the fact that it was demonstrated to be unbiased and much closer to the in-situ measurements than the original uncorrected SMAP product.  相似文献   

12.
This paper proposes a new method to retrieve salinity profiles from the sea surface salinity(SSS) observed by the Soil Moisture and Ocean Salinity(SMOS) satellite. The main vertical patterns of the salinity profiles are firstly extracted from the salinity profiles measured by Argo using the empirical orthogonal function. To determine the time coefficients for each vertical pattern, two statistical models are developed. In the linear model, a transfer function is proposed to relate the SSS observed by SMOS(SMOS_SSS) with that measured by Argo, and then a linear relationship between the SMOS_SSS and the time coefficient is established. In the nonlinear model, the neural network is utilized to estimate the time coefficients from SMOS_SSS, months and positions of the salinity profiles. The two models are validated by comparing the salinity profiles retrieved from SMOS with those measured by Argo and the climatological salinities. The root-mean-square error(RMSE) of the linear and nonlinear model are 0.08–0.16 and 0.08–0.14 for the upper 400 m, which are 0.01–0.07 and 0.01–0.09 smaller than the RMSE of climatology. The error sources of the method are also discussed.  相似文献   

13.
For the application of soil moisture and ocean salinity(SMOS) remotely sensed sea surface salinity(SSS) products,SMOS SSS global maps and error characteristics have been investigated based on quality control information.The results show that the errors of SMOS SSS products are distributed zonally,i.e.,relatively small in the tropical oceans,but much greater in the southern oceans in the Southern Hemisphere(negative bias) and along the southern,northern and some other oceanic margins(positive or negative bias).The physical elements responsible for these errors include wind,temperature,and coastal terrain and so on.Errors in the southern oceans are due to the bias in an SSS retrieval algorithm caused by the coexisting high wind speed and low temperature; errors along the oceanic margins are due to the bias in a brightness temperature(TB) reconstruction caused by the high contrast between L-band emissivities from ice or land and from ocean; in addition,some other systematic errors are due to the bias in TB observation caused by a radio frequency interference and a radiometer receivers drift,etc.The findings will contribute to the scientific correction and appropriate application of the SMOS SSS products.  相似文献   

14.
Rainfall has two significant effects on the sea surface, including salinity decreasing and surface becoming rougher,which have further influence on L-band sea surface emissivity. Investigations using the Aquarius and TRMM 3B42 matchup dataset indicate that the retrieved sea surface salinity(SSS) is underestimated by the present Aquarius algorithm compared to numerical model outputs, especially in cases of a high rain rate. For example, the bias between satellite-observed SSS and numerical model SSS is approximately 2 when the rain rate is 25 mm/h. The bias can be eliminated by accounting for rain-induced roughness, which is usually modeled by rain-generated ring-wave spectrum. The rain spectrum will be input into the Small Slope Approximation(SSA) model for the simulation of sea surface emissivity influenced by rain. The comparison with theoretical model indicated that the empirical model of rain spectrumis more suitable to be used in the simulation. Further, the coefficients of the rain spectrum are modified by fitting the simulations with the observations of the 2–year Aquarius and TRMM matchup dataset. The calculations confirm that the sea surface emissivity increases with the wind speed and rain rate. The increase induced by the rain rate is rapid in the case of low rain rate and low wind speed. Finally, a modified model of sea surface emissivity including the rain spectrum is proposed and validated by using the matchup dataset in May 2014. Compared with observations, the bias of the rain-induced sea surface emissivity simulated by the modified modelis approximately 1e–4, and the RMSE is slightly larger than 1e–3. With using more matchup data, thebias between model retrieved sea surface salinities and observationsmay be further corrected,and the RMSE may be reduced to less than 1 in the cases of low rain rate and low wind speed.  相似文献   

15.
基于随机森林方法反演墨西哥湾海表盐度   总被引:1,自引:0,他引:1  
盐度是表征物理和生物地球化学过程的重要参数之一,光学遥感可满足较高分辨率的监测需要并避免射频干扰问题,为沿海水域的海表盐度研究提供可行的途径。本文基于MODIS-Aqua的412 nm、443 nm、488 nm、555 nm和667 nm波段的遥感反射率(Rrs412、Rrs443、Rrs488、Rrs555、Rrs667)、海表温度以及实测的海表盐度数据构建随机森林模型,基于模型结果分析墨西哥湾海表盐度时空异质性及海表盐度与影响因子(海表温度和遥感反射率)之间的相关关系。研究结果表明:(1)随机森林模型能较准确地反演墨西哥湾海表盐度,其均方根误差为0.335,决定系数为0.931;(2)湾区海表盐度空间分布呈近岸?河口低、离岸高,环状向内增值的态势,其变化受河流流量、风力以及环流的影响;(3)海表温度与海表盐度存在较强的相关性,海表温度对海表盐度的反演影响显著;(4)海表温度、遥感反射率与海表盐度的相关性呈现空间异质性。  相似文献   

16.
Based on 5 831 continuous in situ measurements of the partial pressure of carbon dioxide on the sea surface p(CO2),related parameters of the sea surface temperature(SST) and chlorophyll-a(Chl a) concentration in 2010 winter,spring and summer of the Huanghai Sea and the Bohai Sea,the inherent relations among them are investigated preliminarily.This study reveals that the seasonal variability of SST and Chl a concentration has a significant influence on p(CO2).The authors have proposed a new algorithm to estimate p(CO2) from SST and Chl a concentration measurements.Compared with the vessel data,the root mean square error(RMSE) of p(CO2) retrieved by using the new model is 13.45 μatm(1atm=101.325 kPa) and the relative error is less than 4%.Then,SST and Chl a concentration data observed by satellite are used to retrieve p(CO2) in the Huanghai Sea and the Bohai Sea;and a better accuracy can be obtained if the quality control for sea surface chlorophyll-a concentration observed by satellite is used.The RMSE of retrieved p(CO2) data with quality control and that without quality control are 15.82 μatm and 31.74 μatm,respectively.  相似文献   

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