English

Correct-by-synthesis reinforcement learning with temporal logic constraints

Logic in Computer Science 2015-03-09 v1 Computer Science and Game Theory Machine Learning Systems and Control

Abstract

We consider a problem on the synthesis of reactive controllers that optimize some a priori unknown performance criterion while interacting with an uncontrolled environment such that the system satisfies a given temporal logic specification. We decouple the problem into two subproblems. First, we extract a (maximally) permissive strategy for the system, which encodes multiple (possibly all) ways in which the system can react to the adversarial environment and satisfy the specifications. Then, we quantify the a priori unknown performance criterion as a (still unknown) reward function and compute an optimal strategy for the system within the operating envelope allowed by the permissive strategy by using the so-called maximin-Q learning algorithm. We establish both correctness (with respect to the temporal logic specifications) and optimality (with respect to the a priori unknown performance criterion) of this two-step technique for a fragment of temporal logic specifications. For specifications beyond this fragment, correctness can still be preserved, but the learned strategy may be sub-optimal. We present an algorithm to the overall problem, and demonstrate its use and computational requirements on a set of robot motion planning examples.

Keywords

Cite

@article{arxiv.1503.01793,
  title  = {Correct-by-synthesis reinforcement learning with temporal logic constraints},
  author = {Min Wen and Ruediger Ehlers and Ufuk Topcu},
  journal= {arXiv preprint arXiv:1503.01793},
  year   = {2015}
}

Comments

8 pages, 3 figures, 2 tables, submitted to IROS 2015

R2 v1 2026-06-22T08:45:39.271Z