We present algorithms for partially observable planning that iteratively compute belief states with an increasing distance to the goal states. The algorithms handle nondeterministic operators, but restrict to problem instances with a finite upper bound on execution length, that is plans without loops. We discuss an implementation of the algorithms which uses bi-nary decision diagrams for representing belief states. It turns out that generation of new belief states from existing ones, corresponding to the use of conditional branches in the plans, can very naturally be represented as standard operations on binary decision diagrams. We also give a preliminary experi-mental evaluation of the algorithms
International audienceWe propose an integration of a fragment or propositional dynamic logic with an...
“Look up all of the books for a course, and order each of them. ” This seemingly simple task cannot ...
The computational properties of many classes of conditional and contingent planning are well known. ...
Planning with partial observability can be formulated as a non-deterministic search problem in belie...
Planning with partial observability can be formulated as a non-deterministic search problem in belie...
We show that for conditional planning with partial observ-ability the problem of testing existence o...
Rarely planning domains are fully observable. For this reason, the ability to deal with partial obse...
AbstractRarely planning domains are fully observable. For this reason, the ability to deal with part...
Planning in nondeterministic domains with temporally extended goals under partial observability is o...
This paper describes POND, a planner developed to solve problems characterized by partial observabil...
Planning with sensing actions under partial observability is a computationally challenging problem t...
Planning with sensing actions under partial observability is a computationally challenging problem t...
Planning in nondeterministic domains with temporally extended goals under partial observability is ...
Planning in nondeterministic domains with temporally ex-tended goals under partial observability is ...
We present a general framework for studying heuristics for planning in the belief space. Earlier wo...
International audienceWe propose an integration of a fragment or propositional dynamic logic with an...
“Look up all of the books for a course, and order each of them. ” This seemingly simple task cannot ...
The computational properties of many classes of conditional and contingent planning are well known. ...
Planning with partial observability can be formulated as a non-deterministic search problem in belie...
Planning with partial observability can be formulated as a non-deterministic search problem in belie...
We show that for conditional planning with partial observ-ability the problem of testing existence o...
Rarely planning domains are fully observable. For this reason, the ability to deal with partial obse...
AbstractRarely planning domains are fully observable. For this reason, the ability to deal with part...
Planning in nondeterministic domains with temporally extended goals under partial observability is o...
This paper describes POND, a planner developed to solve problems characterized by partial observabil...
Planning with sensing actions under partial observability is a computationally challenging problem t...
Planning with sensing actions under partial observability is a computationally challenging problem t...
Planning in nondeterministic domains with temporally extended goals under partial observability is ...
Planning in nondeterministic domains with temporally ex-tended goals under partial observability is ...
We present a general framework for studying heuristics for planning in the belief space. Earlier wo...
International audienceWe propose an integration of a fragment or propositional dynamic logic with an...
“Look up all of the books for a course, and order each of them. ” This seemingly simple task cannot ...
The computational properties of many classes of conditional and contingent planning are well known. ...