Evaluation of TRMM PR Sampling Error Over a Subtropical Basin Using Bootstrap Technique

Indu, J. ; Kumar, D. Nagesh (2014) Evaluation of TRMM PR Sampling Error Over a Subtropical Basin Using Bootstrap Technique IEEE Transactions on Geoscience and Remote Sensing, 52 (11). pp. 6870-6881. ISSN 0196-2892

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Official URL: http://doi.org/10.1109/TGRS.2014.2304466

Related URL: http://dx.doi.org/10.1109/TGRS.2014.2304466

Abstract

Quantitative use of satellite-derived rainfall products for various scientific applications often requires them to be accompanied with an error estimate. Rainfall estimates inferred from low earth orbiting satellites like the Tropical Rainfall Measuring Mission (TRMM) will be subjected to sampling errors of nonnegligible proportions owing to the narrow swath of satellite sensors coupled with a lack of continuous coverage due to infrequent satellite visits. The authors investigate sampling uncertainty of seasonal rainfall estimates from the active sensor of TRMM, namely, Precipitation Radar (PR), based on 11 years of PR 2A25 data product over the Indian subcontinent. In this paper, a statistical bootstrap technique is investigated to estimate the relative sampling errors using the PR data themselves. Results verify power law scaling characteristics of relative sampling errors with respect to space-time scale of measurement. Sampling uncertainty estimates for mean seasonal rainfall were found to exhibit seasonal variations. To give a practical example of the implications of the bootstrap technique, PR relative sampling errors over a subtropical river basin of Mahanadi, India, are examined. Results reveal that the bootstrap technique incurs relative sampling errors < 33% (for the 2° grid), <36% (for the 1° grid), < 45% (for the 0.5° grid), and < 57% (for the 0.25° grid). With respect to rainfall type, overall sampling uncertainty was found to be dominated by sampling uncertainty due to stratiform rainfall over the basin. The study compares resulting error estimates to those obtained from latin hypercube sampling. Based on this study, the authors conclude that the bootstrap approach can be successfully used for ascertaining relative sampling errors offered by TRMM-like satellites over gauged or ungauged basins lacking in situ validation data. This technique has wider implications for decision making before incorporating microwave orbital data products in basin-scale hydrologic modeling.

Item Type:Article
Source:Copyright of this article belongs to IEEE.
Keywords:Satellites; Rain; Uncertainty; Sensors; Extraterrestrial measurements; Measurement uncertainty; Spatial resolution
ID Code:125739
Deposited On:17 Oct 2022 06:31
Last Modified:14 Nov 2022 11:19

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