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CMU-CS-03-139
Computer Science Department
School of Computer Science, Carnegie Mellon University
CMU-CS-03-139
Efficient BDD-Based Planning for Non-Deterministic,
Fault-Tolerant, and Adversarial Domains
Rune Møller Jensen
June 2003
Ph.D. Thesis
CMU-CS-03-139.ps
CMU-CS-03-139.pdf
Keywords: Automated planning, heuristic search, binary decision
diagrams, artificial intelligence, symbolic model checking, controller
synthesis
Automated planning considers selecting and sequencing actions in order
to change the state of a discrete system from some initial state
to some goal state. This problem is fundamental in a wide range of
industrial and academic fields including robotics, automation, embedded
systems, and operational re-search. Planning with non-deterministic
actions can be used to model dynamic environments and alternative
action behavior. One of the currently best known approaches is to
employ reduced ordered Binary Decision Diagrams (BDDs) to represent
and generate plans using techniques developed in symbolic model
checking. However, the approach is challenged by a frequent blow-up
of the BDDs representing the search frontier and a limited number of
solution classes. This thesis addresses both of these problems. With
respect to the first, it contributes a general framework called
state-set branching that seamlessly combines classical
heuristic search and BDD-based search. Our experimental results
show that the performance of state-set branching often dominates
both blind BDD-based search and ordinary heuristic search.
In addition, it consistently outperforms any previous approach,
we are aware of, to guide a BDD-based search. We show that
state-set branching naturally generalizes to non-deterministic
planning and introduce heuristically guided versions of the
current BDD-based non-deterministic planning algorithms.
With respect to the second problem, the thesis introduces two frameworks
called fault tolerant planning and adversarial planning.
Fault tolerant planning addresses domains where non-determinism is
caused by rare errors. The current solution classes handle this
situation poorly by taking all fault combinations into account or
produce too weak solutions. The thesis contributes a new class of
solutions called fault tolerant plans that are robust to a limited
number of faults. In addition, it introduces specialized BDD-based
algorithms for synthesizing fault tolerant plans.
Adversarial planning considers situations where non-determinism is
caused by uncontrollable, but known, environment actions. The
current solution classes of BDD-based non-deterministic planning
assume a "friendly" environment and may never reach a goal state
if the environment is hostile and informed. The thesis contributes
efficient BDD-based algorithms for synthesizing winning strategies
for such problems.
221 pages
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