Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4526208 | Advances in Water Resources | 2011 | 10 Pages |
Simplified, vertically-averaged soil moisture models have been widely used to describe and study eco-hydrological processes in water-limited ecosystems. The principal aim of these models is to understand how the main physical and biological processes linking soil, vegetation, and climate impact on the statistical properties of soil moisture. A key component of these models is the stochastic nature of daily rainfall, which is mathematically described as a compound Poisson process with daily rainfall amounts drawn from an exponential distribution. Since measurements show that the exponential distribution is often not the best candidate to fit daily rainfall, we compare the soil moisture probability density functions obtained from a soil water balance model with daily rainfall depths assumed to be distributed as exponential, mixed-exponential, and gamma. This model with different daily rainfall distributions is applied to a catchment in New South Wales, Australia, in order to show that the estimation of the seasonal statistics of soil moisture might be improved when using the distribution that better fits daily rainfall data. This study also shows that the choice of the daily rainfall distributions might considerably affect the estimation of vegetation water-stress, leakage and runoff occurrence, and the whole water balance.
► We study the role of rainfall depth distributions on a stochastic soil–water model. ► The mixed-exponential distribution permits the derivation of exact results. ► The model is applied to the Murrumbidgee catchment in southeastern Australia. ► The mixed-exponential pdf better fits daily rainfall depth in arid ecosystems. ► The mixed-exponential pdf produces better results for the soil moisture statistics.