首页|基于1.27μm O2(a1△g)波段的CO2卫星遥感仿真

基于1.27μm O2(a1△g)波段的CO2卫星遥感仿真

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星载遥感探测大气CO2时空分布对于研究全球碳循环和气候环境变化具有至关重要的意义.介绍了以O2分子的近红外大气带为目标源的CO2星载遥感方案.首先对碳卫星探测波段的光谱特性进行分析研究,论证了采用红外大气波段的相对优势,并提出了该波段强气辉辐射特性对反演结果的不良影响;然后计算得到了太阳散射光谱和气辉辐射光谱,并在此基础上比较了不同光谱采样间隔条件下有无考虑气辉对光谱拟合结果的影响;最后分析了光谱拟合误差及其相对标准偏差值随信噪比和光谱采样间隔的变化情况.研究结果表明:在不考虑气辉时,平均偏差为9%左右;在考虑气辉时,平均偏差降至0.1%以内.对于高光谱分辨率星载光谱仪,如果保障足够的信噪比,O2(a1△g)波段的气辉光谱特征与吸收光谱特征可以充分分离,能够有效提高星载CO2混合比的反演精度.
Simulation of CO2 Satellite Remote Sensing Based on 1.27 μm O2(a1△g)Band
Objective CO2 is a critical greenhouse gas,with fluctuations in its atmospheric concentration significantly influencing global climate.Effective monitoring of CO2 emissions and accurately mapping the distribution of CO2 sources and sinks are vital for managing atmospheric CO2 levels and mitigating global warming.Satellite remote sensing technology offers the ability to detect global CO2 distribution with high temporal and spatial resolutions.To improve the precision of CO2 mixing ratio determinations,it is essential to simultaneously measure atmospheric O2concentration,utilizing the uniform mixing of O2 molecules as a reference to calculate the CO2 to dry air mixing ratio.Current orbital CO2 remote sensing instruments primarily utilize the 0.76 μm O2-A band for detection.However,the O2(a1△g)band near 1.27 μm is a more suitable detection channel due to its proximity to the two CO2 absorption bands at 1.6 μm and 2.0 μm,reducing uncertainties related to atmospheric path spectral variations;moreover,its weaker absorption spectra compared to the O2-A band are less prone to saturation,yielding more accurate radiative transfer modeling and spectral fitting results.Despite the strong airglow radiation associated with the O2(a1△g)band,which has historically rendered it impractical for global greenhouse gas measurements,this study explores its influence on CO2 volume fraction inversion.We demonstrate that with high spectral resolution and adequate signal-to-noise ratio,the airglow spectral features of the O2(a1△g)band can be effectively distinguished from the absorption spectral features,significantly improving the accuracy of satellite-borne CO2 mixing ratio inversions.Methods The O2(a1△g)band serves as the target source for conducting CO2 satellite remote sensing detection,aimed at enhancing CO2 inversion accuracy.Our approach involves analyzing the characteristics of high-resolution solar radiation spectra across different bands to ascertain the advantages of the O2 absorption feature at 1.27 μm.These features reduce the uncertainty associated with wavelength-dependent atmospheric scattering and enhance radiative transfer model precision.We simulate solar scattering spectra and airglow radiation spectra using the atmospheric radiative transfer model,the HITRAN molecular database,and the photochemical reaction model,reflecting more accurately the conditions of satellite-based remote sensing observations.We integrate effective signal-to-noise ratios according to the spectral resolution of remote sensing instruments into the observational spectra.We then investigate the effects of airglow,signal-to-noise ratio,and spectral sampling interval on spectral fitting using an optimization algorithm under various signal-to-noise and spectral sampling scenarios.Results and Discussions The results show that with a high reference signal-to-noise ratio(RSNref=1000),ignoring airglow radiation in spectral fitting leads to an error of about 9%and a relative standard deviation of about 10%.Including airglow consideration reduces the fitting error to about 0.1%and the relative standard deviation to about 0.2%,with the deviation primarily influenced by instrumental random errors(Fig.6).In addition,accounting for airglow radiation results in a minimal relative standard deviation in spectral fitting results and low dependency on the spectral sampling interval when high inversion accuracy is maintained under high signal-to-noise ratio conditions.Conversely,under low signal-to-noise ratio conditions,the relative standard deviation significantly increases,showing fluctuations and a rapid rise with increasing spectral sampling interval(Fig.7).Conclusions Despite the strong airglow emissions of the O2(a1△g)band,a high-resolution(λ/△λ=25000)satellite-borne spectrometer with a high signal-to-noise ratio can effectively differentiate its spectral features from those of O2 absorption.The unique advantages of the 1.27 μm O2(a1△g)band in carbon satellite applications indicate its significant scientific and engineering value in enhancing CO2 satellite-borne detection.This band is poised to be a pivotal improvement for the next generation of carbon satellites,aiming for more precise and efficient monitoring of global atmospheric CO2 concentrations.

satellite remote sensingCO2 gas detectionO2(a1△g)bandhigh spectral resolutionairglow spectral characteristicscattering and absorption

何微微、王道琦、罗海燕、王治华、李发泉、武魁军

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烟台大学物理与电子信息学院,山东 烟台 264005

中国科学院安徽光学精密机械研究所,安徽 合肥 230031

中国科学院精密测量科学与技术创新研究院,湖北 武汉 430071

星载遥感 CO2探测 O2(a1△g)波段 高光谱分辨率 气辉光谱特征 散射吸收

2024

光学学报
中国光学学会 中国科学院上海光学精密机械研究所

光学学报

CSTPCD北大核心
影响因子:1.931
ISSN:0253-2239
年,卷(期):2024.44(24)