Recovery of primal solutions from dual subgradient methods for mixed binary linear programming; a branch-and-bound approach
Abstract
The main objective of this thesis is to implement and evaluate a Lagrangian
heuristic and a branch-and-bound algorithm for solving a class of mathematical
optimization problems called mixed binary linear programs. The
tests are performed on two different types of mixed binary linear programs:
the set covering problem and the (uncapacitated as well as capacitated) facility
location problem.
The purpose is to investigate a concept rather than trying to achieve
good runtime performance. The concept involves ergodic iterates, which
are convex combinations of all Lagrangian subproblem solutions found so
far. The ergodic iterates are constructed from the Lagrangian subproblem
solutions with different convexity weight rules.
In the Lagrangian heuristic, Lagrangian relaxation is utilized to obtain
lower bounds on the optimal objective value and the ergodic iterates are
used to create feasible solutions, and whence, to obtain upper bounds on
the optimal objective value. The branch-and-bound algorithm uses the Lagrangian
heuristic in each node and the ergodic iterates for branching decisions.
The investigated concept of this thesis is ergodic iterates constructed by
different convexity weight rules, where the different rules are to weigh the
Lagrangian subproblem solutions as follows: put all the weight on the last
one (the traditional Lagrangian heuristic), use equal weights on all, and put
a successively higher weight on the later ones.
The result obtained shows that a convexity weight rule that puts more
weight on later Lagrangian subproblem solutions, without putting all the
weight on the last one, is preferable.
Degree
Student essay
Collections
View/ Open
Date
2015-10-06Author
Aldenvik, Pauline
Schierscher, Mirjam
Keywords
Branch-and-bound method
subgradient method
Lagrangian dual
recovery of primal solutions
ergodic sequence
mixed binary linear programming
set covering
facility location
Language
eng