Data-based control of Logical Networks
By: Giorgia Disarò, Maria Elena Valcher
Potential Business Impact:
Helps computers control systems using only examples.
In recent years, data-driven approaches have become increasingly pervasive across all areas of control engineering. However, the applications of data-based techniques to Boolean Control Networks (BCNs) are still very limited. In this paper we aim to fill this gap, by exploring the possibility of solving three fundamental control problems, i.e., state feedback stabilization, safe control and output regulation, for a BCN, leveraging only a limited amount of data generated by the network, without knowing or identifying its model.
Similar Papers
Data-Driven Stabilization of Unknown Linear-Threshold Network Dynamics
Systems and Control
Helps control brain signals to keep them steady.
From Formal Methods to Data-Driven Safety Certificates of Unknown Large-Scale Networks
Systems and Control
Keeps big, complex systems safe using data.
Physics-informed data-driven control without persistence of excitation
Systems and Control
Uses hidden clues to control machines safely.