Correcting negatively biased refractivity below ducts in GNSS radio occultation: an optimal estimation approach towards improving planetary boundary layer (PBL) characterization Academic Article uri icon

abstract

  • Abstract. Global Navigation Satellite System (GNSS) radio occultation (RO) measurements are promising in sensing the vertical structure of the Earth's planetary boundary layer (PBL). However, large refractivity changes near the top of PBL can cause ducting and lead to anegative bias in the retrieved refractivity within the PBL (below 2km). To remove the bias, areconstruction method with assumption of linear structure inside the ducting layer models has been proposed by Xie etal. (2006). While the negative bias can be reduced drastically as demonstrated in the simulation, the lack of high-quality surface refractivity constraint makes its application to real RO data difficult. In this paper, we use the widely available precipitable water (PW) satellite observation as the external constraint for the bias correction. Anew framework is proposed to incorporate optimization into the RO reconstruction retrievals in the presence of ducting conditions. The new method uses optimal estimation to select the best refractivity solution whose PW and PBL height best match the externally retrieved PW and the known a priori states, respectively. The near-coincident PW retrievals from AMSR-E microwave radiometer instruments are used as an external observational constraint. This new reconstruction method is tested on both the simulated GNSS-RO profiles and the actual GNSS-RO data. Our results show that the proposed method can greatly reduce the negative refractivity bias when compared to the traditional Abel inversion.

published proceedings

  • Atmospheric Measurement Techniques

author list (cited authors)

  • Wang, K., de la Torre Jurez, M., Ao, C. O., & Xie, F.

citation count

  • 13

complete list of authors

  • Wang, Kuo-Nung||de la Torre Juárez, Manuel||Ao, Chi O||Xie, Feiqin

publication date

  • December 2017