Title of article :
Minimax real-time heuristic search Original Research Article
Author/Authors :
Sven Koenig، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Pages :
33
From page :
165
To page :
197
Abstract :
Real-time heuristic search methods interleave planning and plan executions and plan only in the part of the domain around the current state of the agents. So far, real-time heuristic search methods have mostly been applied to deterministic planning tasks. In this article, we argue that real-time heuristic search methods can efficiently solve nondeterministic planning tasks. We introduce Min-Max Learning Real-Time A∗ (Min-Max LRTA∗), a real-time heuristic search method that generalizes Korfʹs LRTA∗ to nondeterministic domains, and apply it to robot-navigation tasks in mazes, where the robots know the maze but do not know their initial position and orientation (pose). These planning tasks can be modeled as planning tasks in nondeterministic domains whose states are sets of poses. We show that Min-Max LRTA∗ solves the robot-navigation tasks fast, converges quickly, and requires only a small amount of memory.
Keywords :
Interleaving planning and plan executions , Real-time heuristic search , Minimax search , localization , Robot navigation
Journal title :
Artificial Intelligence
Serial Year :
2001
Journal title :
Artificial Intelligence
Record number :
1207008
Link To Document :
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