SYSYJul 10, 2018

Verification of Uncertain POMDPs Using Barrier Certificates

arXiv:1807.0382315 citationsh-index: 54
AI Analysis

It addresses the verification of autonomous agents under model uncertainty, but the approach is incremental and domain-specific.

This paper proposes a method for verifying safety and optimal performance in uncertain POMDPs using barrier certificates, demonstrated on a Mars rover example.

We consider a class of partially observable Markov decision processes (POMDPs) with uncertain transition and/or observation probabilities. The uncertainty takes the form of probability intervals. Such uncertain POMDPs can be used, for example, to model autonomous agents with sensors with limited accuracy, or agents undergoing a sudden component failure, or structural damage [1]. Given an uncertain POMDP representation of the autonomous agent, our goal is to propose a method for checking whether the system will satisfy an optimal performance, while not violating a safety requirement (e.g. fuel level, velocity, and etc.). To this end, we cast the POMDP problem into a switched system scenario. We then take advantage of this switched system characterization and propose a method based on barrier certificates for optimality and/or safety verification. We then show that the verification task can be carried out computationally by sum-of-squares programming. We illustrate the efficacy of our method by applying it to a Mars rover exploration example.

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