2 research outputs found
Advances in multi-parametric mixed-integer programming and its applications
At many stages of process engineering we are confronted with data that have not yet revealed
their true values. Uncertainty in the underlying mathematical model of real processes
is common and poses an additional challenge on its solution. Multi-parametric programming
is a powerful tool to account for the presence of uncertainty in mathematical models. It
provides a complete map of the optimal solution of the perturbed problem in the parameter
space.
Mixed integer linear programming has widespread application in process engineering such
as process design, planning and scheduling, and the control of hybrid systems. A particular difficulty arises, significantly increasing the complexity and computational effort in retrieving
the optimal solution of the problem, when uncertainty is simultaneously present in the coefficients of the objective function and the constraints, yielding a general multi-parametric
(mp)-MILP problem.
In this thesis, we present novel solution strategies for this class of problems. A global
optimization procedure for mp-MILP problems, which adapts techniques from the deterministic
case to the multi-parametric framework, has been developed. One of the challenges
in multi-parametric global optimization is that parametric profiles, and not scalar values
as in the deterministic case, need to be compared. To overcome the computational burden
to derive a globally optimal solution, two-stage methods for the approximate solution of
mp-MILP problems are proposed. The first approach combines robust optimization and
multi-parametric programming; whereas in the second approach suitable relaxations of bilinear
terms are employed to linearize the constraints during the approximation stage. The
choice of approximation techniques used in the two-stage method has impact on the conservatism
of the solution estimate that is generated. Lastly, multi-parametric programming
based two-stage methods are applied in pro-active short-term scheduling of batch processes
when faced with varied sources of uncertainty, such of price, demand and operational level
uncertainty.Open Acces