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Applications of Mixed QE/Probabilistic Methods for Nonlinear Feedback
Design
C.T. Abdallah
1
*Department of Electrical and Computer Engineering
University of New Mexico
Albuquerque, NM 87131, USA
{chaouki}@eece.unm.edu
ABSTRACT
The use of quantifier elimination methods in control design has been recently
advocated and has proven to be a viable alternative in both linear and nonlinear
(but polynomial cases). Unfortunately, the computational costs of QE algorithms
has so far limited the spread of such approaches. As an example, while the static
output feedback problem (SOF) is known to be decidable using QE but its
computational complexity is thought to be NP.
In fact many control problems can be reduced to decidability problems or to
optimization questions which can then be reduced to the question
of finding a real vector satisfying a set of inequalities.
Our research deals mainly with control design problems where these
inequalities are multinomial functions of the unknown variables.
On the other hand, recent work on statistical learning theory has suggested that
by softening the goal of control design, we may be able to answer such
decidability problems for larger classes of systems. Such systems may include:
Polynomial nonlinear systems, Systems with sigmoidal functions, and
Pfaffian systems.
We will see that decidability questions may not be answered exactly given a reasonable
amount of resources, and recent research has focused on
``approximately" answering these questions ``most of the time", and having ``high
confidence'' in the correctness of the answers.
Our Plan of attack is then to study the following:
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Which control questions can be answered? or which problems are solvable?
This is the realm of QE Decision Theory, and will give a yes/no answer.
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Which control problems are solvable but difficult? which problems are solvable but at
a prohibitive cost? This is the realm of Complexity Theory, and will tell us which
decidable problems are not ``practically'' solvable.
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What do we do about ``approximately'' solving those problems which are costly to solve
exactly? This is the realm of Stochastic Algorithms (Monte Carlo), and its
relationship to QE constitutes the bulk of this research.
We report here on how to use the complementary approaches of QE and statistical
learning theory to solve fixed-structure control problems and we report on on-going
work for the control of
nonlinear Pfaffian systems (which include polynomials) along with some improved sample
bounds in the statistical learning theory.
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IMACS ACA'98 Electronic Proceedings