Συντάχθηκε 18-01-2017 14:46
από Styliani Raka
Email συντάκτη: sraka<στο>tuc.gr
Ενημερώθηκε:
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Κύρια: ΕΤΕΠ ΜΗΧΟΠ.
Άλλες ιδιότητες: απόφοιτος προπτυχιακός ΜΗΧΟΠ, απόφοιτος ΜΔΕ/Διδ. ΜΗΧΟΠ
ΠΟΛΥΤΕΧΝΕΙΟ ΚΡΗΤΗΣ
Σχολή Μηχανικών Ορυκτών Πόρων - ΠΜΣ Μηχανική Πετρελαίου
Εξεταζόμενη μεταπτυχιακή φοιτήτρια: Φανδρίδη Χριστίνη
Θέμα Μεταπτυχιακής Εργασίας: «Optimisation of petroleum production subject to industrial constraints using alternative objective functions and adjoint gradient-based methods»
Τριμελής Εξεταστική Επιτροπή:
Καθ. Χριστόπουλος Διονύσιος (επιβλέπων)
Δρ. Κουρούνης Δρόσος
Δρ. Γαγάνης Βασίλειος
Περίληψη
The optimization of oil production is a tedious and computationally intensive process
that requires the solution of time dependent nonlinear set of partial differential
equations describing the flow of hydrocarbons in anisotropic porous media.
Optimization of production is usually performed using either gradient free
techniques like genetic algorithms, particle swarm algorithms, or gradient-based
techniques where the gradients are computed through the solution of the adjoint
problem. A gradient-based optimization method, in which the gradient is computed
using an adjoint formulation, is often the method of choice since in contrast
to numerical perturbation techniques that require as many objective function
evaluations as the number of control parameters, the gradient using adjoint-based
techniques is obtained only at a small fraction of the time spent for the evaluation
of the objective function. It is well known that for non-convex optimisation problems,
gradient-based techniques are likely to get trapped in poor local optima. A
common practise is to lunch several independent optimisation runs from different
initial guesses or to combine ideas from gradient-free algorithms with gradientbased
to benefit from the merits of both. An adequate sampling of the search space
would require an intractable number of simulations and it is thus impossible.
The aim of this work is to exploit an observation in homogeneous reservoirs,
where the global optimum, when optimising cumulative oil recovery, is usually
achieved from practically any initial guess. This observation suggest to optimize
cumulative oil by adopting a “geology continuation” method. In this novel approach
the porosity and permeability fields, gradually switch from some average
homogeneous values chosen heuristically for the particular benchmark, to the inhomogeneous geological properties characterizing the reservoir. The optimal controls
from each step become the initial controls to the next step.
In addition instead of maximizing the cumulative oil we suggest to minimize modified
versions of the residual oil function which are likely to be more convex and thus less likely to lead in poor local optima.
Τόπος: Μ3 - Κτίριο ΜΗΧΟΠ, Μ3.003
Έναρξη: 25/01/2017 12:00
Λήξη: 25/01/2017 13:00