Curriculum
The Electronics Engineering curriculum at LAKSHMI NARAIN COLLEGE OF TECHNOLOGY AND SCIENCE RIT is meticulously structured to provide a comprehensive education spanning foundational sciences, core engineering principles, and specialized electives. The program spans eight semesters, with each semester carefully designed to build upon the previous one, ensuring a logical progression of knowledge and skill development.
SEMESTER | COURSE CODE | COURSE TITLE | CREDIT STRUCTURE (L-T-P-C) | PRE-REQUISITES |
---|---|---|---|---|
1 | MAT101 | Engineering Mathematics I | 3-1-0-4 | None |
1 | PHY101 | Physics for Electronics | 3-1-0-4 | None |
1 | CHM101 | Chemistry for Electronics | 3-1-0-4 | None |
1 | BEE101 | Basic Electrical Engineering | 3-1-0-4 | None |
1 | CSE101 | Introduction to Programming | 3-1-0-4 | None |
1 | ENG101 | English for Technical Communication | 2-0-0-2 | None |
1 | ELE101 | Introduction to Electronics Engineering | 3-1-0-4 | None |
2 | MAT201 | Engineering Mathematics II | 3-1-0-4 | MAT101 |
2 | PHY201 | Electromagnetic Fields and Waves | 3-1-0-4 | PHY101 |
2 | CHM201 | Materials Science and Engineering | 3-1-0-4 | CHM101 |
2 | BEE201 | Network Analysis and Synthesis | 3-1-0-4 | BEE101 |
2 | CSE201 | Data Structures and Algorithms | 3-1-0-4 | CSE101 |
2 | ELE201 | Electronic Devices and Circuits | 3-1-0-4 | BEE101 |
3 | MAT301 | Engineering Mathematics III | 3-1-0-4 | MAT201 |
3 | ELE301 | Analog Electronics I | 3-1-0-4 | ELE201 |
3 | ELE302 | Digital Electronics I | 3-1-0-4 | ELE201 |
3 | ELE303 | Signal and Systems | 3-1-0-4 | MAT201 |
3 | ELE304 | Control Systems | 3-1-0-4 | MAT201 |
3 | ELE305 | Microprocessor and Microcontroller | 3-1-0-4 | CSE201 |
3 | ELE306 | Communication Systems | 3-1-0-4 | ELE303 |
4 | ELE401 | Analog Electronics II | 3-1-0-4 | ELE301 |
4 | ELE402 | Digital Electronics II | 3-1-0-4 | ELE302 |
4 | ELE403 | Electromagnetic Field Theory | 3-1-0-4 | PHY201 |
4 | ELE404 | VLSI Design | 3-1-0-4 | ELE302 |
4 | ELE405 | Embedded Systems | 3-1-0-4 | ELE305 |
4 | ELE406 | Probability and Statistics for Engineers | 3-1-0-4 | MAT201 |
5 | ELE501 | Digital Signal Processing | 3-1-0-4 | ELE303 |
5 | ELE502 | Wireless Communication Systems | 3-1-0-4 | ELE306 |
5 | ELE503 | Power Electronics | 3-1-0-4 | BEE201 |
5 | ELE504 | Antenna and Microwave Engineering | 3-1-0-4 | ELE303 |
5 | ELE505 | Optical Communication Systems | 3-1-0-4 | ELE306 |
5 | ELE506 | Electronics Lab II | 0-0-3-1 | ELE201 |
6 | ELE601 | Robotics and Automation | 3-1-0-4 | ELE404 |
6 | ELE602 | Image Processing | 3-1-0-4 | ELE501 |
6 | ELE603 | Advanced Control Systems | 3-1-0-4 | ELE304 |
6 | ELE604 | Renewable Energy Systems | 3-1-0-4 | ELE503 |
6 | ELE605 | Biomedical Electronics | 3-1-0-4 | ELE301 |
6 | ELE606 | Electronics Lab III | 0-0-3-1 | ELE506 |
7 | ELE701 | Artificial Intelligence and Machine Learning | 3-1-0-4 | ELE501 |
7 | ELE702 | Nanotechnology | 3-1-0-4 | ELE301 |
7 | ELE703 | Smart Grid Technologies | 3-1-0-4 | ELE503 |
7 | ELE704 | Quantum Computing Fundamentals | 3-1-0-4 | ELE303 |
7 | ELE705 | Advanced VLSI Design | 3-1-0-4 | ELE404 |
7 | ELE706 | Electronics Lab IV | 0-0-3-1 | ELE606 |
8 | ELE801 | Capstone Project | 0-0-6-8 | All previous semesters |
8 | ELE802 | Internship | 0-0-0-4 | All previous semesters |
8 | ELE803 | Electronics Lab V | 0-0-3-1 | ELE706 |
Advanced departmental elective courses form a crucial part of the program's specialization offerings. These courses are designed to expose students to current trends and cutting-edge research in various sub-disciplines of electronics engineering.
Artificial Intelligence and Machine Learning: This course introduces students to fundamental concepts in AI and ML, including supervised and unsupervised learning, neural networks, deep learning architectures, reinforcement learning, and natural language processing. Students gain hands-on experience using frameworks like TensorFlow and PyTorch while working on real-world datasets.
Internet of Things (IoT) and Embedded Systems: This course explores the architecture and implementation of IoT systems, focusing on sensors, actuators, wireless communication protocols, embedded programming, and cloud integration. Students develop projects involving smart home automation, environmental monitoring, and industrial IoT applications.
Power Electronics and Drives: This course covers power conversion techniques, semiconductor devices, inverter topologies, motor drives, and renewable energy integration. Emphasis is placed on designing efficient power electronic systems for applications in electric vehicles, solar inverters, and industrial automation.
Advanced Signal Processing: Students learn advanced signal processing techniques including wavelet transforms, adaptive filtering, spectral estimation, and array signal processing. The course includes practical applications in audio and speech processing, biomedical signal analysis, and radar systems.
Optical Communication Systems: This course delves into the principles of optical fiber communication, modulation schemes, wavelength division multiplexing, and photonic integrated circuits. Students engage in laboratory experiments involving fiber optic transmission, laser diodes, and optical receivers.
Robotics and Automation: Focused on robot kinematics, control theory, sensor fusion, and AI integration, this course combines theoretical concepts with practical implementation using ROS (Robot Operating System) and robotic platforms. Students build autonomous robots capable of navigation, object recognition, and task execution.
VLSI Design and Testing: This course provides an in-depth understanding of VLSI design flow, logic synthesis, layout design, testing methodologies, and yield optimization. Students utilize CAD tools like Cadence and Synopsys to design integrated circuits and perform simulation-based verification.
Biomedical Electronics: This course explores the interface between electronics and biological systems, covering topics such as biosensors, medical imaging systems, bioinstrumentation, and healthcare data analytics. Students work on projects involving wearable health monitors and diagnostic devices.
Renewable Energy Technologies: Students study various renewable energy sources including solar, wind, hydroelectric, and geothermal power generation. The course emphasizes system design, energy storage solutions, grid integration challenges, and sustainability metrics in clean energy applications.
Quantum Computing Fundamentals: This introductory course provides a foundation in quantum mechanics and quantum algorithms, covering qubit manipulation, quantum gates, error correction, and quantum simulation. Students explore current developments in quantum computing hardware and software platforms.
Nanotechnology for Electronics: This course examines the application of nanoscale materials and devices in electronics, including carbon nanotubes, graphene, quantum dots, and molecular electronics. Students investigate fabrication techniques, characterization methods, and potential applications in next-generation electronic components.
Smart Grid Technologies: Focused on modern power grid systems, this course covers smart metering, demand response, energy management systems, and grid stability. Students analyze real-world cases involving smart grid deployment and understand regulatory frameworks for distributed energy resources.
Advanced Control Systems: This course extends knowledge of control theory to advanced topics such as robust control, optimal control, nonlinear control, and model predictive control. Applications include aerospace systems, automotive control, and industrial automation.
Image Processing and Computer Vision: Students learn fundamental concepts in image processing, including filtering, edge detection, feature extraction, and machine learning for vision tasks. Practical applications include object recognition, medical imaging, and autonomous vehicle perception systems.
Wireless Communication Networks: This course explores modern wireless technologies including 4G LTE, 5G NR, Wi-Fi, Bluetooth, and satellite communications. Students study network architecture, protocols, performance analysis, and emerging trends in wireless networks.
The department's philosophy on project-based learning is rooted in the belief that practical experience is essential for developing competent engineers. Throughout their academic journey, students engage in mini-projects that span multiple semesters, culminating in a final-year thesis or capstone project.
Mini-projects begin in the third semester and continue through the sixth semester, allowing students to apply theoretical concepts to real-world problems. Each project is supervised by faculty members from relevant specializations, ensuring academic rigor and industry relevance. Projects are evaluated based on technical depth, innovation, presentation quality, and teamwork.
The final-year capstone project or thesis represents a significant milestone in the program. Students select projects aligned with their interests and career aspirations, often involving collaboration with industry partners or research institutions. Faculty mentors guide students through the research process, from literature review to experimental design, data analysis, and report writing. The project is typically completed over two semesters, with periodic progress reviews and final presentations.