In recent years technological advancements in the design and fabrication
of integrated circuits have led to the development of cost effective,
low power, thumb-size devices that can be used for sensing/actuating,
communication and computing. This trend is enabling a surge of new
applications for which pervasive network architectures are being
developed. A key feature of these systems is that they are decentralized
and communication among different subsystems may be unreliable. From an
engineering viewpoint, to ensure correct operation, the theoretical
analysis requires a fundamental paradigm shift, as many of the typical
assumptions of systems and control theory cease to hold.
Distributed Control and Filtering for Industrial Systems provides an
introduction to the control and filtering algorithms devised for
distributed environments, with a particular emphasis on industrial
applications. Topics covered include control architectures for
interconnected systems, recent developments in distributed model
predictive control for interconnected networked systems, methods for
designing distributed linear quadratic controllers for various classes
of systems, designing distributed dynamic output-feedback controllers,
characterization of distributed consensus control methods, distributed
estimation techniques, distributed Kalman filtering methods,
experimental setups and simulation of pilot-scale industrial processes.