M.Tech in Automotive Engineering
Semester-wise syllabus outline for an M.Tech in Automotive Engineering
Semester 1: Core Fundamentals
1. Vehicle Dynamics & Control
- Longitudinal/lateral dynamics, suspension systems, stability control, tire modeling (Pacejka’s model).
2. Automotive Powertrain Technology
- Internal combustion engines (ICE), hybrid/electric powertrains, transmission systems, emissions control.
3. Materials Science for Automotive Applications
- Lightweight materials (CFRP, aluminum alloys), crashworthiness, fatigue analysis.
4. Computer-Aided Vehicle Design
- CAD tools (CATIA, SolidWorks), finite element analysis (FEA) for chassis/body design.
5. Lab 1: Basic Automotive Systems
- Engine disassembly/assembly, drivetrain testing, CAD modeling projects.
Semester 2: Advanced Systems & Electives
1. Advanced Powertrains
- Turbocharging, fuel injection systems, battery management systems (BMS) for EVs, hydrogen fuel cells.
2. Automotive Electronics & Embedded Systems
- ECU programming, sensors/actuators, CAN bus, ADAS (Advanced Driver Assistance Systems).
3. Aerodynamics & NVH (Noise, Vibration, Harshness)
- CFD for vehicle aerodynamics, noise reduction techniques, vibration isolation.
4. Elective 1 (e.g., Hybrid & Electric Vehicles or Autonomous Vehicle Technology)
5. Lab 2: Simulation & Testing
- MATLAB/Simulink for control systems, ANSYS/GT-Power for engine simulation, crash testing simulations (LS-DYNA).
Semester 3: Specialization & Project Work
1. Elective 2 (e.g., AI in Automotive Systems or Advanced Manufacturing Processes)
2. Elective 3 (e.g., Vehicle Cybersecurity or Sustainable Automotive Design)
3. Automotive Manufacturing & Quality Control
- Lean manufacturing, Industry 4.0 (IoT, robotics), Six Sigma, ISO/TS 16949 standards.
4. Project Work Part 1
- Industry-collaborated projects (e.g., EV battery thermal management, autonomous navigation algorithms).
5. Professional Workshops
- Training on tools (CarSim, AVL Cruise), certification courses (Automotive SPICE, SAE standards).
Semester 4: Thesis/Dissertation
- Independent Research Thesis
- Focus areas:
- EV battery optimization,
- Autonomous vehicle perception systems (LiDAR, radar fusion),
- Alternative fuels (biofuels, hydrogen),
- Lightweight composite structures.
- Thesis submission and defense.
Elective Options (Semesters 2–3):
- Vehicle Telematics & Connectivity (V2X)
- Crashworthiness & Passive Safety Systems
- Automotive Thermal Management
- Robotics in Automotive Assembly
- Machine Learning for Predictive Maintenance
- Motorsport Engineering
Key Tools & Software:
- Design & Simulation: CATIA, ANSYS, MATLAB/Simulink, CarSim, AVL Fire, GT-Power.
- Programming: Python (for AI/ML), C/C++ (embedded systems), ROS (Robotic Operating System).
- EV/Autonomous Focus: Battery simulation (COMSOL), ADAS toolkits (NVIDIA DriveWorks), AUTOSAR.
Lab/Practical Focus:
1. Powertrain Testing: Dyno testing for ICE/EV performance, emissions analysis.
2. Autonomous Vehicle Prototyping: Sensor integration (LiDAR, cameras), path-planning algorithms.
3. Crash Simulation: Virtual crash testing (LS-DYNA), occupant safety analysis.
4. Manufacturing Workshops: 3D printing of automotive components, robotic welding.