Robust Metric Hybrid Planning in Stochastic Nonlinear Domains Using Mathematical Optimization

Authors

  • Buser Say Monash University

DOI:

https://doi.org/10.1609/icaps.v33i1.27216

Keywords:

Uncertainty and stochasticity in planning and scheduling, Planning with time and resources, Planning and scheduling with mixed continuous and discrete states/actions/decisions, Planning and scheduling with continuous state and action spaces

Abstract

The deployment of automated planning in safety critical systems has resulted in the need for the development of robust automated planners that can (i) accurately model complex systems under uncertainty, and (ii) provide formal guarantees on the model they act on. In this paper, we introduce a robust automated planner that can represent such stochastic systems with metric specifications and constrained continuous-time nonlinear dynamics over mixed (i.e., real and discrete valued) concurrent action spaces. The planner uses inverse transform sampling to model uncertainty, and has the capability of performing bi-objective optimization to first enforce the constraints of the problem as best as possible, and second optimize the metric of interest. Theoretically, we show that the planner terminates in finite time and provides formal guarantees on its solution. Experimentally, we demonstrate the capability of the planner to robustly control four complex physical systems under uncertainty.

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Published

2023-07-01

How to Cite

Say, B. (2023). Robust Metric Hybrid Planning in Stochastic Nonlinear Domains Using Mathematical Optimization. Proceedings of the International Conference on Automated Planning and Scheduling, 33(1), 375-383. https://doi.org/10.1609/icaps.v33i1.27216