M.Tech in Mechatronics
Semester-wise syllabus for an M.Tech in Mechatronics
Semester 1:
Core Foundations
1. Advanced Mechanics and Dynamics
- Kinematics, dynamics of machinery, vibration analysis, and multibody systems.
2. Sensors, Actuators, and Instrumentation
- Principles of sensors (optical, piezoelectric), actuators (servo, pneumatic), and signal conditioning.
3. Control Systems Engineering
- State-space modeling, PID control, frequency response, and stability analysis.
4. Embedded Systems and Microcontrollers
- Architecture of ARM/AVR microcontrollers, real-time interfacing with sensors/actuators.
5. Lab Work
- Sensor calibration, PID tuning experiments, microcontroller programming (Arduino/Raspberry Pi).
Semester 2:
Specialization & Integration
1. Robotics and Automation
- Robot kinematics/dynamics, trajectory planning, industrial automation (PLC programming).
2. Digital Signal Processing (DSP)
- Filter design, FFT, DSP applications in mechatronic systems (e.g., noise reduction).
3. Artificial Intelligence in Mechatronics
- Machine learning basics, neural networks for predictive control, and computer vision.
4. Elective 1
- Options: IoT for Smart Systems, Advanced CAD/CAM, Biomechatronics.
5. Lab Work
- Robotic arm programming (ROS), PLC-based automation projects, AI-driven control simulations (MATLAB/Python).
Semester 3:
Advanced Topics & Project Work
1. Advanced Robotics
- Collaborative robots (Cobots), swarm robotics, and human-robot interaction.
2. Mechatronic System Design
- Model-based design (Simulink), system integration, and reliability analysis.
3. Elective 2
- Options: Autonomous Vehicles, Smart Manufacturing, Renewable Energy Systems.
4. Elective 3
- Options: Biomedical Devices, Drone Technology, Cyber-Physical Systems.
5. Research Project (Phase 1)
- Proposal development, literature review, and prototyping (3D printing/CNC machining).
6. Lab Work
- Autonomous vehicle simulations (Gazebo), wearable biomechatronic devices, Industry 4.0 case studies.
Semester 4:
Dissertation & Industry Collaboration
1. Dissertation/Thesis
- Focus areas: AI-driven automation, smart manufacturing systems, medical robotics, or sustainable energy solutions.
2. Industry Internship (Optional)
- Collaboration with automotive, aerospace, or healthcare industries on real-world projects.
3. Seminar & Viva Voce
- Presentation and defense of research, with feedback from academic/industry experts.
Electives (Across Semesters 2–3)
- IoT for Smart Systems: Edge computing, wireless sensor networks, cloud integration.
- Biomechatronics: Prosthetics, exoskeletons, and bio-signal processing.
- Autonomous Vehicles: SLAM algorithms, sensor fusion (LiDAR, radar), path planning.
- Smart Manufacturing: Digital twins, predictive maintenance, collaborative robotics.
Tools & Technologies
- Software: MATLAB/Simulink, ROS, SolidWorks, LabVIEW, Python (TensorFlow/OpenCV).
- Hardware: PLCs (Siemens/Allen-Bradley), drones, 3D printers, CNC machines.
- Simulation: ANSYS, COMSOL, Gazebo, and Simscape.
Industry Applications
- Automotive: Autonomous driving systems, electric vehicle powertrains.
- Healthcare: Surgical robots, diagnostic devices.
- Manufacturing: Smart factories, robotic assembly lines.
- Aerospace: UAVs, satellite mechanisms.