M.Tech in Control Systems Engineering
Semester-wise syllabus for an M.Tech in Control Systems Engineering
Semester 1:
Core Foundations
Courses:
1. Advanced Control Theory
- State-space analysis, multivariable control, Lyapunov stability, and pole placement.
2. Digital Control Systems
- Z-transform, discrete-time systems, PID tuning, and real-time implementation (FPGA/microcontrollers).
3. Modern Control Techniques
- Optimal control (LQR, LQG), robust control (H∞, µ-synthesis), and adaptive control.
4. Modeling and Simulation of Dynamic Systems
- Bond graphs, nonlinear system modeling, and simulation tools (MATLAB/Simulink).
5. Research Methodology
- Technical writing, data analysis (Python/MATLAB), and experimental design.
Labs:
- Control Systems Simulation Lab (MATLAB/Simulink, LabVIEW)
- Embedded Systems Lab (Arduino, Raspberry Pi for real-time control)
Semester 2:
Specialization & Electives
Core Courses:
1. Nonlinear Control Systems
- Sliding mode control, feedback linearization, chaos control, and bifurcation analysis.
2. Optimal and Predictive Control
- Model Predictive Control (MPC), dynamic programming, and trajectory optimization.
Electives (Examples):
- Robotics and Autonomous Systems (kinematics, SLAM, path planning)
- Industrial Automation (PLC, SCADA, DCS)
- Adaptive and Intelligent Control (neural networks, fuzzy logic)
- Networked Control Systems (time-delay systems, IoT integration)
- Control of Power Electronics (motor drives, grid-tied inverters)
Labs:
- Robotics Lab (ROS, Gazebo for robot control simulations)
- PLC/SCADA Lab (Siemens TIA Portal, Allen-Bradley)
Semester 3:
Advanced Electives & Project Work
Electives (Examples):
- AI/ML in Control Systems (reinforcement learning, deep learning for control)
- Fault Detection and Diagnosis
- Biomedical Control Systems(prosthetics, physiological system modeling)
- Quantum Control Systems (basics of quantum feedback control)
- Advanced Mechatronics (sensor fusion, actuator control)
Project/Dissertation:
- Phase 1: Topic selection (e.g., drone stabilization, smart grid control, robotic surgery systems), literature review, and proposal submission.
- Seminars: Presentations on emerging trends like edge AI for control, cyber-physical systems, or ethical AI in automation.
Semester 4:
Thesis/Project Completion
Thesis/Project:
- Full-time focus on hardware/software implementation (e.g., autonomous vehicle control, industrial process optimization).
- Final documentation, viva voce defense, and potential industry collaboration.
Additional Components:
- Industrial Internship (optional, with automation firms like Siemens, ABB, or robotics startups).
- Workshops: Training in tools like Simulink Real-Time, dSPACE, or ROS 2.
Elective Tracks (Specializations):
1. Robotics and Autonomous Systems
- Autonomous navigation, swarm robotics, human-robot interaction.
2. Industrial Automation
- Industry 4.0, digital twins, smart manufacturing.
3. AI/ML in Control
- Neural network-based controllers, reinforcement learning for dynamic systems.
4. Automotive Control Systems
- ADAS, electric vehicle power train control, battery management systems.