DocumentCode :
144295
Title :
Rainfall estimation from spaceborne and ground based radars using neural networks
Author :
Chandrasekar, V. ; Ramanujam, K. Srinivasa ; Haonan Chen ; Le, Minda ; Alqudah, Amin
Author_Institution :
Colorado State Univ., Fort Collins, CO, USA
fYear :
2014
fDate :
13-18 July 2014
Firstpage :
4966
Lastpage :
4969
Abstract :
Neural network (NN) is a nonparametric method to represent the relation between radar measurements and rainfall rate. The relation is derived directly from a dataset consisting of radar measurements and rain gauge measurements. Tropical Rainfall measuring Mission (TRMM) Precipitation Radar (PR) is known to be the first observation platform for mapping precipitation over the tropics. TRMM measured rainfall makes a significant contribution to the study of precipitation distribution over the globe in the tropics. Ground validation (GV) is a critical component in the TRMM system. However, the ground sensing systems have quite different characteristics from TRMM in terms of resolution, scale, sampling, viewing aspect, and uncertainties in the sensing environments. In this paper a novel hybrid NN model is presented to train ground radars for rainfall estimation using rain gauge data and subsequently the trained ground radar rainfall estimation to train TRMM/PR observation based neural networks. This hybrid NN model provides a mechanism to link between gauges on the ground, the ground radar observations and the TRMM/PR observations. The dual-polarization radar measurements from a ground WSR-88DP site in Dallas-Fort Worth region and local rain gauge data will be used for the demonstration purpose. The performance of the rainfall product derived for TRMM PR is then compared against TRMM standard rainfall products. In addition, a direct gauge comparison study is done to examine the improvement brought in by this hybrid neural networks approach.
Keywords :
data analysis; hydrological techniques; neural nets; rain; remote sensing by radar; spaceborne radar; Dallas-Fort Worth region; TRMM Precipitation Radar; TRMM data resolution; TRMM data sampling; TRMM data scale; TRMM data uncertainties; TRMM data viewing aspect; TRMM measured rainfall; TRMM-PR training; Tropical Rainfall measuring Mission; USA; dual polarization radar measurements; global precipitation distribution; ground based radars; ground radar rainfall estimation; ground radar training; ground sensing systems; ground validation; hybrid neural network model; neural networks; nonparametric method; precipitation mapping; rain gauge data; rain gauge measurements; rainfall rate; sensing environment; spaceborne radars; Estimation; Neural networks; Radar measurements; Rain; Reflectivity; Spaceborne radar;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Geoscience and Remote Sensing Symposium (IGARSS), 2014 IEEE International
Conference_Location :
Quebec City, QC
Type :
conf
DOI :
10.1109/IGARSS.2014.6947610
Filename :
6947610
Link To Document :
بازگشت