Optimal Probabilistic Motion Planning with Potential Infeasible LTL Constraints
Mingyu Cai, Shaoping Xiao, Zhijun Li, and Zhen Kan

TL;DR
This paper introduces a novel framework for optimal probabilistic motion planning that handles potentially infeasible high-level LTL constraints by revising plans and balancing task satisfaction, violation, and cost.
Contribution
It develops a relaxed product MDP approach for planning under infeasible LTL constraints, bridging probabilistic planning revision and optimal control synthesis.
Findings
Effective handling of infeasible LTL specifications in probabilistic planning.
Joint optimization of task satisfaction probability, violation, and cost.
Experimental validation demonstrating framework's effectiveness.
Abstract
This paper studies optimal motion planning subject to motion and environment uncertainties. By modeling the system as a probabilistic labeled Markov decision process (PL-MDP), the control objective is to synthesize a finite-memory policy, under which the agent satisfies complex high-level tasks expressed as linear temporal logic (LTL) with desired satisfaction probability. In particular, the cost optimization of the trajectory that satisfies infinite horizon tasks is considered, and the trade-off between reducing the expected mean cost and maximizing the probability of task satisfaction is analyzed. Instead of using traditional Rabin automata, the LTL formulas are converted to limit-deterministic B\"uchi automata (LDBA) with a reachability acceptance condition and a compact graph structure. The novelty of this work lies in considering the cases where LTL specifications can be…
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Taxonomy
TopicsFormal Methods in Verification · Robotic Path Planning Algorithms · AI-based Problem Solving and Planning
