CoDIT 2023
-
Session VS-01: Fault Detection and Diagnosis
Done
-
Session S-08: Control Applications (Part 1)
Done
-
Session S-20: Transport Optimization
Done
-
Session S-24: Special Session - Robotics for logistics and transportation systems
Done
-
Session S-25: Control of Nonlinear Systems
Done
-
KEYNOTE 4
Done
-
Session VS-07: Intelligent Systems
Done
-
Session VS-12: Software Engineering
Done
-
Session S-49: Control Applications (Part 2)
Done
-
Session S-32: Scheduling Problems
Done
“Modeling, Analysis, and Design of Influence in Multi-Agent Systems”
Prof. Bruno Sinopoli
Washington University, USA
Chair: Prof. James H. Lambert, University of Virginia, USA Room :Sla del Chiostro
Abstract
Systems of intelligent agents interacting according to their own policies may yield behavior that is contrary to the social good of the community. To achieve regulatory control objectives that change the group’s equilibrium behavior, an intelligent central planner (CP) must understand the learning mechanisms at the individual level, characterize how global intervention disrupts these learned action processes, and choose control policies that induce the desired change. This framework describes phenomena such as social media, financial networks, and cyber-physical systems like power grids. In this talk I model this influence structure as a Markov decision process (MDP) with the CP as the controller. I characterize the CP’s capabilities for a given scenario by analyzing the reachability of control objectives and finding policies that attain reachable objectives. I discuss how to implement cluster-based control policies, from how to efficiently compute near-optimal clustered policies to using properties of submodular optimization to assign agents to clusters. Next, I consider the problem of model-free policy design that is robust to agent dropout. First, game theoretic techniques measure the potential impact of each agent on the CP’s value function, and the desired robustness criterion is embedded into the MDP. The post-dropout MDP can be evaluated with high probability via policy importance sampling, and safe policy search routines find desirable robust policies while maintaining a baseline value. Future work is motivated that would enable more sophisticated control techniques to handle systems at scale and with greater complexity.
Biography of Prof. Bruno Sinopoli
Bruno Sinopoli is the Das Family
Distinguished Professor at Washington University in St. Louis, where he is also
the founding director of the center for Trustworthy AI in Cyber-Physical
Systems and chair of the Electrical and Systems Engineering Department. He
received the Dr. Eng. degree from the University of Padova in 1998 and his M.S.
and Ph.D. in Electrical Engineering from the University of California at
Berkeley, in 2003 and 2005 respectively. After a postdoctoral position at
Stanford University, Dr. Sinopoli was member of the faculty at Carnegie Mellon
University from 2007 to 2019, where he was a professor in the Department of
Electrical and Computer Engineering with courtesy appointments in Mechanical
Engineering and in the Robotics Institute and co-director of the Smart
Infrastructure Institute. His research interests include modeling, analysis and
design of Resilient Cyber-Physical Systems with applications to Smart
Interdependent Infrastructures Systems, such as Energy and Transportation,
Internet of Things and control of computing systems. More recently, he has been
working on understanding connections between Machine and human learning and
influence mechanisms in multi agent systems.