M.Tech in Industrial Automation
Semester-wise syllabus for an M.Tech in Industrial Automation
Semester 1:
Core Foundations
1. Industrial Control Systems
- PLC programming (Ladder Logic, Structured Text), PID control, and SCADA systems.
2. Sensors and Actuators
- Types (proximity, pressure, vision sensors), signal conditioning, and actuator mechanisms (pneumatic, hydraulic).
3. Industrial Communication Protocols
- Fieldbus (PROFIBUS, Modbus), Ethernet/IP, OPC-UA, and IoT protocols (MQTT, CoAP).
4. Advanced Process Control
- Model predictive control (MPC), adaptive control, and multivariable control systems.
5. Lab Work
- PLC programming (Siemens/Allen-Bradley), sensor-actuator integration, HMI design.
Semester 2:
Advanced Automation & Robotics
1. Industrial Robotics
- Robot kinematics/dynamics, programming (ABB/KUKA), collaborative robots (Cobots), and vision-guided systems.
2. Automation in Manufacturing
- CNC machines, conveyor systems, automated guided vehicles (AGVs), and lean manufacturing principles.
3. Process Instrumentation
- Flow, level, temperature, and pressure measurement systems, calibration, and smart transmitters.
4. Elective 1
- Options: AI in Automation, Digital Twins, Smart Grid Integration.
5. Lab Work
- Robotic welding/picking simulations (ROS), AGV programming, digital twin modeling (MATLAB/Simulink).
Semester 3:
Industry 4.0 & Emerging Technologies
1. Industrial IoT (IIoT) and Cyber-Physical Systems
- Edge computing, predictive maintenance, cloud integration (AWS IoT, Azure), and cybersecurity for OT/IT convergence.
2. Machine Learning for Automation
- Anomaly detection, predictive analytics, and AI-driven optimization in production lines.
3. Elective 2
- Options: Additive Manufacturing, Energy Management Systems, Autonomous Systems.
4. Elective 3
- Options: Human-Machine Interface (HMI) Design, Advanced Motion Control, Industrial Cybersecurity.
5. Research Project (Phase 1)
- Proposal (e.g., AI-based quality control, digital twin for a smart factory, or energy-efficient automation).
6. Lab Work
- IIoT sensor networks, AI-driven defect detection (Python/OpenCV), additive manufacturing (3D printing).
Semester 4:
Dissertation & Industry Integration
1. Dissertation/Thesis
- Focus areas: Smart factory implementation, robotic process automation (RPA), sustainable automation, or AI-optimized production.
2. Industry Internship (Optional)
- Collaborations with automotive (Tesla, Tata Motors), FMCG (Unilever), or automation giants (Siemens, Rockwell).
3. Emerging Trends Seminar
- Topics: Digital twins, swarm robotics, blockchain for supply chain automation, and green manufacturing.
4. Seminar & Viva Voce
- Presentation and defense of research, peer reviews, and industry expert feedback.
Electives (Across Semesters 2–3)
- Digital Twins: Virtual commissioning, real-time simulation, and predictive analytics.
- Smart Grid Integration: Energy-efficient automation, demand-side management, and microgrids.
- Additive Manufacturing: Industrial 3D printing, topology optimization, and rapid prototyping.
- Industrial Cybersecurity: OT security, intrusion detection, and secure PLC programming.
Tools & Technologies
- PLC/SCADA: Siemens TIA Portal, Rockwell Studio 5000, Ignition SCADA.
- Simulation: MATLAB/Simulink, Digital Twin software (ANSYS Twin Builder), RobotStudio.
- AI/ML: Python (TensorFlow, PyTorch), edge AI platforms (NVIDIA Jetson).
- IoT: Node-RED, AWS IoT Core, Raspberry Pi/Arduino for prototyping.
- CAD/CAM: AutoCAD, SolidWorks, Fusion 360.
Industry Applications
- Automotive: Robotic assembly lines, EV battery manufacturing.
- Pharmaceuticals: Automated packaging, sterile process automation.
- Oil & Gas: Pipeline monitoring, remote operation centers (ROCs).
- Food & Beverage: Automated bottling, quality inspection using vision systems.
- Aerospace: Precision machining, composite material handling.