OCLOSYSYNov 5, 2017

Optimized State Space Grids for Abstractions

arXiv:1711.0163728 citationsh-index: 19
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For researchers in abstraction-based control, this provides a principled way to tune abstraction parameters, though the impact is incremental as it builds on existing methods.

This paper addresses the computational bottleneck in abstraction-based controller synthesis by proposing a method to optimally choose the aspect ratio of hyper-interval covers, minimizing the predicted number of transitions to reduce computational effort. The approach is demonstrated on an example.

The practical impact of abstraction-based controller synthesis methods is currently limited by the immense computational effort for obtaining abstractions. In this note we focus on a recently proposed method to compute abstractions whose state space is a cover of the state space of the plant by congruent hyper-intervals. The problem of how to choose the size of the hyper-intervals so as to obtain computable and useful abstractions is unsolved. This note provides a twofold contribution towards a solution. Firstly, we present a functional to predict the computational effort for the abstraction to be computed. Secondly, we propose a method for choosing the aspect ratio of the hyper-intervals when their volume is fixed. More precisely, we propose to choose the aspect ratio so as to minimize a predicted number of transitions of the abstraction to be computed, in order to reduce the computational effort. To this end, we derive a functional to predict the number of transitions in dependence of the aspect ratio. The functional is to be minimized subject to suitable constraints. We characterize the unique solvability of the respective optimization problem and prove that it transforms, under appropriate assumptions, into an equivalent convex problem with strictly convex objective. The latter problem can then be globally solved using standard numerical methods. We demonstrate our approach on an example.

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