Litcius/Paper detail

Resetting in stochastic optimal control

Benjamin De Bruyne, Francesco Mori

2023Physical Review Research33 citationsDOIOpen Access PDF

Abstract

``When in a difficult situation, it is sometimes better to give up and start all over again.'' While this empirical truth has been regularly observed in a wide range of circumstances, quantifying the effectiveness of such a heuristic strategy remains an open challenge. In this paper, we combine the notions of optimal control and stochastic resetting to address this problem. The emerging analytical framework allows one not only to measure the performance of a given restarting policy, but also to obtain the optimal strategy for a wide class of dynamical systems. We apply our technique to a system with a final reward and show that the reward value must be larger than a critical threshold for resetting to be effective. Our approach, analogous to the celebrated Hamilton-Jacobi-Bellman paradigm, provides the basis for the investigation of realistic restarting strategies across disciplines. As an application, we show that the framework can be applied to an epidemic model to predict the optimal lockdown policy.

Topics & Concepts

Computer scienceHeuristicOptimal controlRange (aeronautics)Mathematical optimizationBellman equationStochastic controlMeasure (data warehouse)Control (management)Class (philosophy)Artificial intelligenceMathematicsEngineeringDatabaseAerospace engineeringDiffusion and Search DynamicsCOVID-19 epidemiological studiesHIV Research and Treatment