M.Tech in Instrumentation and Control Engineering
Semester-wise syllabus for an M.Tech in Instrumentation and Control Engineering
Semester 1: Core Foundations
Courses:
1. Advanced Control Systems
- State-space modeling, PID tuning, robust control, and adaptive control systems.
2. Sensors and Signal Conditioning
- Transducers (pressure, temperature, flow), signal amplification, noise reduction, and ADC/DAC interfacing.
3. Industrial Instrumentation
- Process control loops, PLCs, SCADA systems, and calibration techniques.
4. Digital Signal Processing (DSP)
- Filter design, FFT, real-time DSP applications, and MATLAB implementation.
5. Research Methodology
- Technical writing, statistical analysis (Python/MATLAB), and ethics in automation.
Labs:
- Instrumentation Lab (sensor calibration, LabVIEW/Arduino-based projects)
- Control Systems Simulation Lab (MATLAB/Simulink)
Semester 2: Advanced Topics & Electives
Core Courses:
1. Process Control and Optimization
- Advanced PID strategies, model predictive control (MPC), and real-time optimization.
2. Embedded Systems for Instrumentation
- Microcontroller/ARM-based systems, RTOS, and IoT integration (MQTT, LoRaWAN).
Electives (Examples):
- Industrial Automation (PLC programming, HMI design)
- Robotics and Motion Control (servo systems, stepper motors)
- Biomedical Instrumentation (ECG, EEG, imaging systems)
- Smart Sensors and IoT (wireless sensor networks, edge computing)
- AI/ML in Control Systems (neural networks for predictive maintenance)
Labs:
- PLC/SCADA Lab (Siemens TIA Portal, Allen-Bradley)
- Embedded Systems Lab (Raspberry Pi, STM32 projects)
Semester 3: Specialization & Project Work
Electives (Examples):
- Advanced Robotics (ROS, robotic vision systems)
- Industrial IoT (IIoT) (OPC UA, digital twins, cloud integration)
- Non-Destructive Testing (NDT) (ultrasonic, X-ray, thermography)
- Energy Management Systems (smart grids, renewable energy monitoring)
- Fault Detection and Diagnosis (AI-driven anomaly detection)
Project/Dissertation:
- Phase 1: Topic selection (e.g., AI-based process optimization, automated quality control system), literature review, and proposal.
- Seminars: Presentations on trends like Industry 4.0, digital twins, or ethical AI in automation.
Semester 4: Thesis/Project Completion
Thesis/Project:
- Full-time focus on hardware/software development (e.g., building a smart sensor network, AI-driven control system).
- Final documentation, viva voce defense, and potential collaboration with industries (e.g., oil & gas, manufacturing, healthcare).
Additional Components:
- Industrial Internship (optional, with firms like Siemens, Honeywell, ABB, or automation startups).
- Workshops: Training in AI/ML tools (TensorFlow Lite for edge devices), industrial protocols (Modbus, Profibus), or cybersecurity for ICS*.
Elective Tracks (Specializations):
1. Industrial Automation
- PLC/SCADA, DCS, and Industry 4.0 integration.
2. Smart Instrumentation
- IoT-enabled sensors, edge analytics, and wireless communication.
3. Control Systems Engineering
- MPC, adaptive control, and AI-driven optimization.
4. Biomedical and Healthcare Systems
- Medical device instrumentation, wearable sensors.