M.Tech in Manufacturing Engineering
Semester-wise syllabus for an M.Tech in Manufacturing Engineering.
Semester 1: Core Foundations
1. Advanced Manufacturing Processes
- Traditional and non-traditional machining (EDM, ECM, laser cutting), additive manufacturing (3D printing), and hybrid processes.
2. CAD/CAM and Automation
- Computer-aided design/manufacturing (SolidWorks, AutoCAD), CNC programming, and robotic automation (PLC, SCADA).
3. Materials Science and Engineering
- Advanced materials (composites, ceramics), material selection, and heat treatment processes.
4. Operations Research and Optimization
- Linear programming, queuing theory, simulation tools (Arena, MATLAB), and lean manufacturing principles.
5. Lab 1: Manufacturing Processes & CAD/CAM
- Hands-on CNC machining, 3D printing, and CAM software (Mastercam, NX).
Semester 2: Specialized Manufacturing Systems
1. Smart Manufacturing & Industry 4.0
- IoT in manufacturing, digital twins, cyber-physical systems, and data-driven production.
2. Quality Control and Metrology
- Statistical process control (SPC), Six Sigma, GD&T, and advanced measurement tools (CMM, 3D scanning).
3. Supply Chain and Production Management
- Inventory control, JIT, ERP systems (SAP), and logistics optimization.
4. Elective 1
- Example: Additive Manufacturing or Sustainable Manufacturing.
5. Lab 2: Automation & Quality Systems
- PLC programming (Siemens TIA Portal), robotic welding/assembly, and SPC software (Minitab).
6. Seminar/Project Work
- Case studies on lean implementation or design of a smart factory layout.
Semester 3: Advanced Topics & Research
1. Advanced Machining and Tool Design
- High-speed machining, micro-machining, and cutting tool optimization.
2. Finite Element Analysis (FEA) and Simulation
- Stress analysis, thermal modeling, and software (ANSYS, Abaqus).
3. Elective 2
- Example: Composite Materials Manufacturing or AI in Manufacturing.
4. Elective 3
- Example: Robotics in Manufacturing or Energy-Efficient Systems.
5. Dissertation Phase 1
- Literature review, proposal development (e.g., optimizing a production line using AI).
6. Lab 3: Advanced Simulations
- FEA projects, digital twin development, and IoT sensor integration.
Semester 4: Dissertation and Industry Integration
1. Dissertation Phase 2
- Full-time research, prototyping, and thesis submission.
- Example projects:
- Designing a sustainable manufacturing process for recycled materials.
- Developing an AI-based predictive maintenance system for CNC machines.
2. Industry Internship (Optional)
- Collaboration with manufacturing firms (e.g., automotive, aerospace) for real-world problem-solving.
Elective Options
- Additive Manufacturing: DMLS, SLS, and post-processing techniques.
- Sustainable Manufacturing: Lifecycle assessment (LCA), green machining, and circular economy.
- Micro/Nano Manufacturing: MEMS, lithography, and precision engineering.
- Industrial Robotics: Collaborative robots (cobots), path planning, and vision systems.
- Digital Manufacturing: AR/VR in prototyping, blockchain for supply chains.
Key Tools & Technologies
- Design/Analysis: ANSYS, SolidWorks, AutoCAD, MATLAB.
- Automation: PLCs (Siemens, Allen-Bradley), ROS (Robot Operating System).
- Additive Manufacturing: Ultimaker Cura, Stratasys software.
- Data Analytics: Python, Tableau, SQL for predictive maintenance.