Skip to main content
Log in

Rain rate measurements over global oceans from IRS-P4 MSMR

  • Published:
Journal of Earth System Science Aims and scope Submit manuscript

Abstract

In this paper rain estimation capability of MSMR is explored. MSMR brightness temperature data of six channels corresponding to three frequencies of 10, 18 and 21 GHz are colocated with the TRMM Microwave Imager (TMI) derived rain rates to find a new empirical algorithm for rain rate by multiple regression. Multiple correlation analysis involving various combinations of channels in linear and non-linear forms and rain rate from TMI is carried out, and thus the best possible algorithm for rain rate measurement was identified which involved V and H polarized brightness temperature measurements at 10 and 18 GHz channels. This algorithm explained about 82 per cent correlation (r) with rain rate, and 1.61 mm h-1 of error of estimation.

Further, this algorithm is used for generating global average rain rate map for two contrasting months of August (2000) and January (2001) of northern and southern hemispheric summers, respectively. MSMR derived monthly averaged rain rates are compared with similar estimates from TRMM Precipitation Radar (PR), and it was found that MSMR derived rain rates match well, quantitatively and qualitatively, with that from PR.

This is a preview of subscription content, log in via an institution to check access.

Access this article

Price excludes VAT (USA)
Tax calculation will be finalised during checkout.

Instant access to the full article PDF.

Similar content being viewed by others

References

  • Ali M M 2000 Validation of Multifrequency Scanning Microwave Radiometer geophysical parameter data products;Proc. of Pacific Ocean Remote Sensing Conference -2000, 5-8 December 2000, NIO, Goa, India, pp. 182–191

    Google Scholar 

  • Bauer P, Ameyank P and Kummerow C D, Smith E A 2001 Over ocean rainfall retrieval from multi sensor data of Tropical Rainfall Measuring Mission (TRMM): Part II-Algorithm implementation;J. Atmos. Ocean Tech. 18, Nov. 1838–1855

    Article  Google Scholar 

  • Bauer P and Schluessel P 1993 Rainfall, total water, ice water, and water vapor over sea from polarized microwave simulations and special sensor microwave/imager data;J. Geophys. Res. 98 pp. 20,737

    Google Scholar 

  • Ferraro R R and Marks G F 1995 The development of SSM/I rain-rate retrieval algorithms using ground-based radar measurements;J. Atmos. Oceanici Technol. 12 pp. 755

    Article  Google Scholar 

  • Gairola R M, Mallet C, Viltard N and Moreau E 2001 Rain-fall from TRMM-TMI; 2ndISRO-CNES Science Workshop on MEGHA-TROPIQUES, 1–5 July, 2001, Paris, France.

  • Gairola R M, Varma A K, Gohil B S and Agarwal V K 2000 Assessment of TRMM-TMI, DMSP-SSM/I and IRS-P4-MSMR observations over the Indian oceanic region,Proc. of Pacific Ocean Remote Sensing Conference -2000, 5-8 December 2000, NIO, Goa, India, pp. 217–220

    Google Scholar 

  • Gohil B S, Mathur A K and Varma A K 2000 Geophysical parameter retrieval over global oceans from IRS-P4/MSMR;Proc. of Pacific Ocean Remote Sensing Conference-2000, 5-8 December 2000, NIO, Goa, India pp 207–211

    Google Scholar 

  • Hollinger J P 1991 DMSP special sensor microwave imager calibration and validation;Naval Research Laboratory, (Washington D.C.) 20375-5000

  • Kummerow C, Olson W S and Gigleo L 1996 A simplified scheme for obtaining precipitation and vertical hydrometer profiles from passive microwave sensors;IEEE Trans. Geosci. Remote Sens. 34 pp. 1213–1232

    Article  Google Scholar 

  • Paris J F 1971 Transfer of thermal microwaves in the atmosphere; vol 1, published by Department of Meteorology, Texas A & M University, Texas 77843, pp 212

    Google Scholar 

  • Smith E A, Lamm J E, Adler R, Alishouse K, Aonashi E, Barrett E, Bauer P, Berg W, Chang A, Ferraro R, Ferriday J, Goodman S, Grody N, Kidd C, Kniveton D, Kummerow C, Liu G, Marzano F, Mugnai A, Olson W, Petty G, Shibata A, Spancer R, Wentz F, Wilheit T and Zipser E 1998 Results of WetNet PIP-2 project;Journal of Atmospheric Sciences,55 (9), pp. 1483–1536

    Article  Google Scholar 

  • Tsintikidis D, Haferman L, Anagnostou E N, Krazewski W F and Smith T F 1997 A neural network approach to estimating rainfall from spaceborne microwave data;IEEE Trans. Geosci. Remote Sens.,35 5, pp. 1079–1093

    Article  Google Scholar 

  • Varma A K, Gairola R M, Mathur A K, Gohil B S and Agarwal V K 2002 Intercomparison of IRS-P4-MSMR derived geophysical products with DMSP-SSM/I and TRMM-TMI finished products;Proceedings of Indian Academy of Sciences (Earth and Planetary Sciences) (this issue)

  • Varma A K, Gairola R M, Kishtawal C M, Pandey P C, and Singh K P 1999b Rain rate estimation from nadir looking TOPEX/Poseidon Microwave Radiometer (TMR) for correction of Radar Altimetric measurements;IEEE Transactions on Geosciences and Remote Sensing,37 (5), pp. 2556–2568

    Article  Google Scholar 

  • Varma A K, Gairola R M and Gohil B S Comparison of IRS-P4 MSMR and DMSP-SSM/I Geophysical products 1999aInternal Report No.: ISRO/SAC/RESA/MOG/OSD/MSMR/TN/DEC 99-03, pp 47.

  • Wilheit T T, Chang A T C and Chiu L S 1991 Retrieval of monthly rainfall indices from microwave radiometric measurements using probability distribution functions;J. Atmos. and Oceanic. Tech. 8, pp. 118–136

    Article  Google Scholar 

Download references

Author information

Authors and Affiliations

Authors

Rights and permissions

Reprints and permissions

About this article

Cite this article

Varma, A.K., Gairola, R.M., Pokhrel, S. et al. Rain rate measurements over global oceans from IRS-P4 MSMR. J Earth Syst Sci 111, 257–266 (2002). https://doi.org/10.1007/BF02701972

Download citation

  • Issue Date:

  • DOI: https://doi.org/10.1007/BF02701972

Keywords

Navigation