Impact of rain-induced sea surface roughness variations on salinity retrieval from the Aquarius/SAC-D satellite
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Impact of rain-induced sea surface roughness variations on salinity retrieval from the Aquarius/SAC-D satellite MA Wentao1, 2, YANG Xiaofeng2*, YU Yang2, LIU Guihong2, LI Ziwei2, JING Cheng2 1 College of Physical and Environmental Oceanography, Ocean University of China, Qingdao 266100, China 2 State Key Laboratory of Remote Sensing Science, Institute of Remote Sensing and Digital Earth, Chinese Academy of
Sciences, Beijing 100101, China Received 8 October 2014; accepted 2 February 2015 ©The Chinese Society of Oceanography and Springer-Verlag Berlin Heidelberg 2015
Abstract
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. Key words: Aquarius, salinity remote sensing, rain, L-band, emissivity Citation: Ma Wentao, Yang Xiaofeng, Yu Yang, Liu Guihong, Li Ziwei, Jing Cheng. 2015. Impact of rain-induced sea surface roughness variations on salinity retrieval from the Aquarius/SAC-D satellite. Acta Oceanologica Sinica, 34(7): 89–96, doi: 10.1007/s13131-015-0660-5
1 Introduction Sea surface salinity (SSS) data are critical for evaluating the global evaporation minus precipitation (E–P), which is a key parameter of the global water cycle and ocean circulation studies (Terray et al., 2012). The most effective method to obtain global and
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