多卫星传感器南海叶绿素a浓度遥感数据融合
Merging chlorophyll-a data from multiple ocean color sensors in South China Sea
- 2015年19卷第4期 页码:680-689
纸质出版日期: 2015
DOI: 10.11834/jrs.20153357
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纸质出版日期: 2015 ,
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[1]李新星,张亭禄,田林,王晓菲,刘金刚.多卫星传感器南海叶绿素a浓度遥感数据融合[J].遥感学报,2015,19(04):680-689.
LI Xinxing, ZHANG Tinglu, TIAN Lin, et al. Merging chlorophyll-a data from multiple ocean color sensors in South China Sea[J]. Journal of Remote Sensing, 2015,19(4):680-689.
利用平均法、生物光学模型法和最优插值法3种数据融合方法对卫星传感器MODIS-Aqua、MOIDS-Terra及MERIS获取的南海叶绿素a浓度的数据进行了融合
通过比较融合产品的质量
对3融合方法进行了评价。(1)利用现场测量的南海遥感反射率和叶绿素a浓度数据建立了南海叶绿素a浓度的反演模型
并应用于MODIS-Aqua、MOIDS-Terra及MERIS Level 2反射率数据
获取南海叶绿素a浓度。(2)将平均法、生物光学模型法、最优插值法分别应用于上述3颗卫星的叶绿素a数据进行数据融合
并用现场测量的同步叶绿素数据对融合后的产品进行了印证。(3)利用3种融合方法分别对南海2011年MODIS-Aqua、MODIS-Terra和MERIS等3个传感器的叶绿素a数据进行了月融合
分析了融合的南海叶绿素a浓度的时空分布特征。结果表明
融合数据大幅度提高了空间覆盖率
且具有较高可信度。平均法、生物光学法和优化插等3种融合方法性能有较大的不同
生物光学法具有高的运行速度
但有时空间覆盖率仍不能满足要求;优化插值法具有高的空间覆盖率
但其运行速度较慢。因此
在具体应用中
应根据需求选择合适的融合方法。
The accurate analysis of temporal and spatial variation characteristics is significant for understanding the marine ecological system. Owing to the comprehensive effects of physical environment and biogeochemical effects in the South China Sea
chlorophyll distribution is characterized by a complicated
multi-temporal
and spatial scale. The South China Sea is often covered by clouds; especially in summer and autumn
cloud coverage is up to 80%. This characteristic causes the low coverage of optical sensor data in the South China Sea. Single optical sensor data cannot meet the demand of the study on the temporal and spatial characteristics of chlorophyll. The present study evaluates the performance of different merging methods with the chlorophyll data products of MODIS-aqua
MODIS-terra
and MERIS in the South China Sea. Long-term
continuous
and high-quality chlorophyll-a data are also provided for the study on the changes in ecological environment and biogeochemical cycle.Three methods of ocean color data merging were used on the data products of MODIS-aqua
MODIS-terra
and MERIS to obtain the chlorophyll distribution in the South China Sea. The performance of the three merging methods was evaluated with in situ match-up data. An empirical inversion algorithm of the chlorophyll concentration was developed with the in situ measurements in the South China Sea. The algorithm was applied to retrieve the chlorophyll concentration from MODIS-aqua
MODIS-terra
and MERIS data. The three merging methods of averaging
bio-optical model
and optimal interpolation were used on the chlorophyll data from the three ocean color sensors in the South China Sea. The merging results were assessed with the in situ measurements and the previously known knowledge.Merging products from the three merging methods have good consistency with the in situ match-up data. The accuracies of the merging products from the three methods are obviously different. Coverage of the merging data is significantly improved for all the three methods. Coverage of the data from averaging method and bio-optical model is similar
and the average of optimal interpolation is up to 100%. The running time of the three methods present a significant difference; the running times of averaging method and bio-optical model are similar
and are both approximately 40 times faster than optimal interpolation. Distributions of monthly chlorophyll products merged with MODIS-aqua
MODIS-terra
and MERIS from the three merging methods are in good agreement with previous studies.Coverage of the merged data is greatly increased
and the merged data have high reliability. The three merging methods have different performances. Bio-optical model has high running speed
while optimal interpolation has high coverage but low running speed. Averaging method and bio-optical model can keep considerable detailed information. In practice
the selection of merging method should depend on actual applications.
数据融合方法MODISMERIS南海叶绿素a浓度
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