Pointwise-in-Time Explanation for Linear Temporal Logic Rules

06/24/2023
by   Noel Brindise, et al.
0

This work introduces a framework to assess the relevance of individual linear temporal logic (LTL) constraints at specific times in a given path plan, a task we refer to as "pointwise-in-time" explanation. We develop this framework, featuring a status assessment algorithm, for agents which execute finite plans in a discrete-time, discrete-space setting expressible via a Kripke structure. Given a plan on this structure and a set of LTL rules which are known to constrain the agent, the algorithm responds to two types of user queries to produce explanation. For the selected query time, explanations identify which rules are active, which have just been satisfied, and which are inactive, where the framework status criteria are formally and intuitively defined. Explanations may also include the status of individual rule arguments to provide further insight. In this paper, we systematically present this novel framework and provide an example of its implementation.

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