Accounting for seasonality in a soil moisture change detection algorithm for ASAR Wide Swath time series

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Abstract

A change detection algorithm is applied on a three year time series of ASAR Wide Swath images in VV polarization over Calabria, Italy, in order to derive information on temporal soil moisture dynamics. The algorithm, adapted from an algorithm originally developed for ERS scatterometer, was validated using a simple hydrological model incorporating meteorological and pedological data. Strong positive correlations between modelled soil moisture and ASAR soil moisture were observed over arable land, while the correlation became much weaker over more vegetated areas. In a second phase, an attempt was made to incorporate seasonality in the different model parameters. It was observed that seasonally changing surface properties mainly affected the multitemporal incidence angle normalization. When applying a seasonal angular normalization, correlation coefficients between modelled soil moisture and retrieved soil moisture increased overall. Attempts to account for seasonality in the other model parameters did not result in an improved performance. © 2012 Author(s). CC Attribution 3.0 License.

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APA

Van Doninck, J., Peters, J., Lievens, H., De Baets, B., & Verhoest, N. E. C. (2012). Accounting for seasonality in a soil moisture change detection algorithm for ASAR Wide Swath time series. Hydrology and Earth System Sciences, 16(3), 773–786. https://doi.org/10.5194/hess-16-773-2012

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