Title of article :
Probabilistic estimation of irrigation requirement under climate uncertainty using dichotomous and marked renewal processes
Author/Authors :
Hosein Alizadeh S. Jamshid MousaviCorresponding author contact information، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
This study addresses estimation of net irrigation requirement over a growing season under climate uncertainty. An ecohydrological model, building upon the stochastic differential equation of soil moisture dynamics, is employed as a basis to derive new analytical expressions for estimating seasonal net irrigation requirement probabilistically. Two distinct irrigation technologies are considered. For micro irrigation technology, probability density function of seasonal net irrigation depth (SNID) is derived assessing transient behavior of a stochastic process which is time integral of dichotomous Markov process. Probability mass function of SNID which is a discrete random variable for traditional irrigation technology is also presented using a marked renewal process with quasi-exponentially-distributed time intervals. Comparing the results obtained from the presented models with those resulted from a Monte Carlo approach verified the significance of the probabilistic expressions derived and assumptions made.
Keywords :
Irrigation requirement , Climate uncertainty , Stochastic soil moisture , Dichotomous process , Marked renewal process
Journal title :
Advances in Water Resources
Journal title :
Advances in Water Resources