Algorithm development of temperature and humidity profile retrievals for long-term HIRS observations

AMS Citation:
Shi, L., J. L. Matthews, S. -P. Ho, Q. Yang, and J. J. Bates, 2016: Algorithm development of temperature and humidity profile retrievals for long-term HIRS observations. Remote Sensing, 8, 280, doi:10.3390/rs8040280.
Date:2016-04-01
Resource Type:article
Title:Algorithm development of temperature and humidity profile retrievals for long-term HIRS observations
Abstract: A project for deriving temperature and humidity profiles from High-resolution Infrared Radiation Sounder (HIRS) observations is underway to build a long-term dataset for climate applications. The retrieval algorithm development of the project includes a neural network retrieval scheme, a two-tiered cloud screening method, and a calibration using radiosonde and Global Positioning System Radio Occultation (GPS RO) measurements. As atmospheric profiles over high surface elevations can differ significantly from those over low elevations, different neural networks are developed for three classifications of surface elevations. The significant impact from the increase of carbon dioxide in the last several decades on HIRS temperature sounding channel measurements is accounted for in the retrieval scheme. The cloud screening method added one more step from the HIRS-only approach by incorporating the Advanced Very High Resolution Radiometer (AVHRR) observations to assess the likelihood of cloudiness in HIRS pixels. Calibrating the retrievals with radiosonde and GPS RO reduces biases in retrieved temperature and humidity. Except for the lowest pressure level which exhibits larger variability, the mean biases are within ±0.3 °C for temperature and within ±0.2 g/kg for specific humidity at standard pressure levels, globally. Overall, the HIRS temperature and specific humidity retrievals closely align with radiosonde and GPS RO observations in providing measurements of the global atmosphere to support other relevant climate dataset development.
Peer Review:Refereed
Copyright Information:Copyright 2016 Authors. This work is distributed under the Creative Commons Attribution 3.0 License.
OpenSky citable URL: ark:/85065/d7pv6mz7
Publisher's Version: 10.3390/rs8040280
Author(s):
  • Lei Shi
  • Jessica Matthews
  • Shu-Peng Ho - NCAR/UCAR
  • Qiong Yang
  • John Bates
  • Random Profile

    PROJ SCIENTIST I

    Recent & Upcoming Visitors