Analisis Metode Branch and Bound dalam Masalah Kuadratic Integer Programming
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Date
2019Author
Purba, Yuegilion Pranayama
Advisor(s)
Mawengkang, Herman
Suwilo, Saib
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Show full item recordAbstract
This thesis will discuss about integer quadratic programming
with applications to problems arising in the areas of automatic control
and communication. One of the most widespread modern control
principles is the discrete-time method model predictive control
(mpc). The main advantage with mpc, compared to most other control
principles, is that constraints on control signals and states can
easily be handled. In each time step, mpc requires the solution of
a quadratic programming (qp) problem. To be able to use mpc for
large systems, and at high sampling rates, optimization routines tailored
for mpc are used. In recent years, the range of application of
mpc has been extended from constrained linear systems to so- called
hybrid systems. Hybrid systems are systems where continuous dynamics
interact with logic. When this extension is made, binary
variables are introduced in the problem. As a consequence, the qp
problem has to be replaced by a far more challenging mixed integer
quadratic programming (miqp) problem. Generally, for this type of
optimization problems, the computational complexity is exponential
in the number of binary optimization variables. Simulation results
show that both the qp solver and the miqp solver proposed have lower
computational complexity than corresponding generic solver.
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