Sensitivity Analysis of Support Vector Machine Predictions of Passive Microwave Brightness Temperatures over Snow-Covered Terrain in High Mountain Asia
by
 
Ahmad, Jawairia Ashfaq, author.

Title
Sensitivity Analysis of Support Vector Machine Predictions of Passive Microwave Brightness Temperatures over Snow-Covered Terrain in High Mountain Asia

Author
Ahmad, Jawairia Ashfaq, author.

ISBN
9780438145870

Personal Author
Ahmad, Jawairia Ashfaq, author.

Physical Description
1 electronic resource (111 pages)

General Note
Source: Masters Abstracts International, Volume: 57-06M(E).
 
Advisors: Barton A. Forman Committee members: Kaye L. Brubaker; Richard H. McCuen.

Abstract
Spatial and temporal variation of snow in High Mountain Asia is very critical as it determines contribution of snowmelt to the freshwater supply of over 136 million people. Support vector machine (SVM) prediction of passive microwave brightness temperature spectral difference (DeltaTb) as a function of NASA Land Information System (LIS) modeled geophysical states is investigated through a sensitivity analysis. AMSRE DeltaTb measurements over snow-covered areas in the Indus basin are used for training the SVMs. Sensitivity analysis results conform with the known first-order physics. LIS input states that are directly linked to physical temperature demonstrate relatively higher sensitivity. Accuracy of LIS modeled states is further assessed through a comparative analysis between LIS derived and Advanced Scatterometer based Freeze/Melt/Thaw categorical datasets. Highest agreement of 22%, between the two datasets, is observed for freeze state. Analyses results provide insight into LIS's land surface modeling ability over the Indus Basin.

Local Note
School code: 0117

Subject Term
Civil engineering.
 
Engineering.

Added Corporate Author
University of Maryland, College Park. Civil Engineering.

Electronic Access
http://gateway.proquest.com/openurl?url_ver=Z39.88-2004&rft_val_fmt=info:ofi/fmt:kev:mtx:dissertation&res_dat=xri:pqm&rft_dat=xri:pqdiss:10792891


Shelf NumberItem BarcodeShelf LocationShelf LocationHolding Information
XX(690932.1)690932-1001Proquest E-Thesis CollectionProquest E-Thesis Collection