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Probabilistic Planning for Continuous Dynamic Systems under Bounded Risk

Author(s)
Williams, Brian Charles; Ono, Masahiro; Blackmore, Lars
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Abstract
This paper presents a model-based planner called the Probabilistic Sulu Planner or the p-Sulu Planner, which controls stochastic systems in a goal directed manner within user-specified risk bounds. The objective of the p-Sulu Planner is to allow users to command continuous, stochastic systems, such as unmanned aerial and space vehicles, in a manner that is both intuitive and safe. To this end, we first develop a new plan representation called a chance-constrained qualitative state plan (CCQSP), through which users can specify the desired evolution of the plant state as well as the acceptable level of risk. An example of a CCQSP statement is ``go to A through B within 30 minutes, with less than 0.001% probability of failure." We then develop the p-Sulu Planner, which can tractably solve a CCQSP planning problem. In order to enable CCQSP planning, we develop the following two capabilities in this paper: 1) risk-sensitive planning with risk bounds, and 2) goal-directed planning in a continuous domain with temporal constraints. The first capability is to ensures that the probability of failure is bounded. The second capability is essential for the planner to solve problems with a continuous state space such as vehicle path planning. We demonstrate the capabilities of the p-Sulu Planner by simulations on two real-world scenarios: the path planning and scheduling of a personal aerial vehicle as well as the space rendezvous of an autonomous cargo spacecraft.
Date issued
2013-03
URI
http://hdl.handle.net/1721.1/80728
Department
Massachusetts Institute of Technology. Department of Aeronautics and Astronautics
Journal
Journal of Artificial Intelligence Research
Publisher
Association for the Advancement of Artificial Intelligence
Citation
Ono, Masahiro, Brian C. Williams, Lars Blackmore. "Probabilistic Planning for Continuous Dynamic Systems under Bounded Risk." Journal of Artificial Intelligence 46 (2013): 511-577. © 2013 AI Access Foundation
Version: Final published version
ISSN
1943-5037
1076-9757

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