Talks and presentations

Synergy Unleashed: The Convergence of Control, Game Theory, and Reinforcement Learning in Cyber-Physical Systems

November 05, 2023

Invited Seminar, Dean's Conference Room (Eaton 1), Lawrence, KS

Nowadays, with the integration of information technology into plant automation (traditional control systems), cyber-physical systems (CPSs) technology has been widely applied to various infrastructures. The pursuit of resilient and robust controllers withstanding adversarial disturbances and interventions has stood as a formidable challenge for years.

On the Benefits of Leveraging Structural Information in Planning over the Learned Model

June 02, 2023

Presentation, 2023 American Control Conference (ACC), San Diego, CA

Model-based Reinforcement Learning (RL) integrates learning and planning and has received increasing attention in recent years. However, learning the model can incur a significant cost (in terms of sample complexity), due to the need to obtain a sufficient number of samples for each state-action pair. In this paper, we investigate the benefits of leveraging structural information about the system in terms of reducing sample complexity. Specifically, we consider the setting where the transition probability matrix is a known function of a number of structural parameters, whose values are initially unknown. We then consider the problem of estimating those parameters based on the interactions with the environment. We characterize the difference between the Q estimates and the optimal Q value as a function of the number of samples. Our analysis shows that there can be a significant saving in sample complexity by leveraging structural information about the model. We illustrate the findings by considering how to control a queuing system with heterogeneous servers.