Title :
Estimating missing data of wind speeds using neural network
Author :
Siripitayananon, Punnee ; Chen, Hui-Chuan ; Jin, Kang-Ren
Author_Institution :
Alabama Univ., Tuscaloosa, AL, USA
Abstract :
In a lake system, wind data is important for hydrodynamics and sediment transport modeling. However, there exists missing data caused by instrumental failure due to birds, thunderstorms, or other unexpected events. Missing data will degrade the performance of modeling approach and accuracy of model results. In order to overcome this problem, we have developed a neural network model that attempts to "learn" and "discover" wind speed behavior from available data and to estimate the missing data. By applying statistics and z-scored distribution coupled with multi-variable time lag analysis, the synthetic wind speeds for missing data are obtained. The results of this approach are better than those of the traditional nearest neighbor approach. Wind data collected from Lake Okeechobee, the second largest freshwater lake within the United States, is used as a test database. The developed model demonstrates its abilities to reproduce accurate wind speed for the years 1996 and 1999
Keywords :
backpropagation; geophysics computing; hydrology; lakes; neural nets; time series; wind; Lake Okeechobee; United States; accuracy; freshwater lake; hydrodynamics; lake system; missing data; modeling approach; multivariable time lag analysis; neural network model; sediment transport modeling; statistics; synthetic wind speeds; z-scored distribution; Birds; Degradation; Hydrodynamics; Instruments; Lakes; Neural networks; Sediments; Statistical analysis; Statistical distributions; Wind speed;
Conference_Titel :
SoutheastCon, 2002. Proceedings IEEE
Conference_Location :
Columbia, SC
Print_ISBN :
0-7803-7252-2
DOI :
10.1109/.2002.995617