Networked Control Systems | EPFL ME 427 | Giancarlo Ferrari Trecate

Giancarlo Ferrari Trecate

Explore the fundamentals of networked control systems, including network protocols, time-delay compensation, and stability analysis. Taught by an expert in the field.

University CoursesControl SystemsRobotics

Introduction

This course provides an introduction to networked control systems, which are systems where the control loops are closed through a communication network. The course covers topics such as network protocols, time-delay compensation, and stability analysis of networked control systems.

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Highlights

  • Covers fundamental concepts of networked control systems
  • Includes hands-on examples and case studies
  • Taught by an expert in the field, Giancarlo Ferrari Trecate

Recommendation

This course is recommended for students and professionals interested in control systems, automation, and the integration of communication networks and control. It provides a solid foundation for understanding the challenges and opportunities in the design and implementation of networked control systems.

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