Abstract:
The development of integrated water resources management (IWRM) in the context
of climate change and variability has created the need for an extension of mathematical
analyses of hydrological system dynamics. The stationarity assumption of hydrological
time series, which has been widely used in the past, cannot be further advocated. The
classical uncertainty modelling techniques based on probability theory cannot capture
the multiple facets of present hydrological uncertainties. The objective of this study
is to better capture the dynamics of the rainfall - runoff process. To this end, this
research develops a rainfall runoff modelling approach that aims to capture the multiple
sources and types of uncertainty in a single framework. The main assumption is that
hydrological systems are non - linear dynamical systems which can be described by
stochastic differential equations (SDE). The dynamics of the system is based on the
Least Action Principle (LAP) as derived from Noether’s theorem. The inflow process
is considered as a sum of deterministic and random components. The deterministic
modelling of the river discharge in the Ouémé river basin (Benin, West Africa), using the
hydrological model based on the least action principle (HyMoLAP), revealed that this
model is suitable to simulate the daily dynamics of the river discharge. The stochastic
formulation of HyMoLAP in terms of SDE allowed to better take into account the
dynamics of the process and to explicitly show the proportion of the total variance
of the discharge that is attributable to each source of uncertainties in the rainfall -
runoff modelling. Then, the basic properties for the random component of rainfall are
considered and the triple relationship between the structure of the inflowing rainfall, the
corresponding SDE which describes the river basin and the associated Fokker - Planck
Abstract v
equations (FPE) is analysed. The time - dependent probability distribution for the
resulting discharge is obtained in the form of fundamental and approximate solutions of
the FPE. A comparison is made between the time - dependent probability distributions
and the empirical distribution of the outflow. The generalized FPE associated with the
Langevin SDE describing the river basin is derived in terms of the transition probability
distribution and characteristic function of the noise generating process. This equation
provides a useful tool for studying the impact of various specific types of noises on the
rainfall - runoff process.
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Description:
A Thesis submitted to the West African Science Service Centre on Climate Change and Adapted Land Use and the Universite Abomey Calavi, Cotonou, Benin, in partial fulfilment of the requirements for the degree of Doctor of Philosophy in Climate Change and Water Resources