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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Electrical Engineering

    Mahatama Gandhi University Ri Bhoi
    Duration
    4 Years
    Electrical Engineering UG OFFLINE

    Duration

    4 Years

    Electrical Engineering

    Mahatama Gandhi University Ri Bhoi
    Duration
    Apply

    Fees

    ₹2,50,000

    Placement

    92.0%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹8,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Electrical Engineering
    UG
    OFFLINE

    Fees

    ₹2,50,000

    Placement

    92.0%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹8,00,000

    Seats

    100

    Students

    300

    ApplyCollege

    Seats

    100

    Students

    300

    Curriculum

    Comprehensive Course Structure

    The Electrical Engineering curriculum at Mahatama Gandhi University Ri Bhoi is meticulously designed to provide a comprehensive understanding of core principles while allowing flexibility for specialization. The program spans eight semesters, with each semester consisting of core courses, departmental electives, science electives, and laboratory components.

    Semester Course Code Course Title Credit Structure (L-T-P-C) Pre-requisites
    1st Semester PH101 Physics for Electrical Engineering 3-1-0-4 None
    CH101 Chemistry for Engineering Students 3-1-0-4 None
    MA101 Mathematics I 3-1-0-4 None
    EC101 Introduction to Electrical Engineering 2-0-0-2 None
    ES101 Engineering Graphics and Design 2-1-0-3 None
    ME101 Introduction to Mechanics of Materials 3-1-0-4 None
    CP101 Computer Programming 2-1-0-3 None
    PE101 Physical Education & Sports 0-0-1-1 None
    2nd Semester PH102 Physics II: Waves and Optics 3-1-0-4 PH101
    CH102 Chemistry II: Organic Chemistry 3-1-0-4 CH101
    MA102 Mathematics II: Calculus and Differential Equations 3-1-0-4 MA101
    EC102 Basic Circuit Analysis 3-1-0-4 EC101
    EC103 Electronic Devices and Circuits 3-1-0-4 EC102
    EC104 Digital Logic Design 2-1-0-3 EC102
    CP102 Data Structures and Algorithms 3-1-0-4 CP101
    PE102 Physical Education & Sports 0-0-1-1 PE101
    3rd Semester MA201 Mathematics III: Linear Algebra and Complex Variables 3-1-0-4 MA102
    EC201 Electromagnetic Fields and Waves 3-1-0-4 PH102
    EC202 Network Analysis and Synthesis 3-1-0-4 EC102
    EC203 Analog Electronics 3-1-0-4 EC103
    EC204 Digital Systems and Microprocessors 3-1-0-4 EC104
    EC205 Signals and Systems 3-1-0-4 MA102
    EC206 Probability and Random Processes 3-1-0-4 MA102
    PE201 Physical Education & Sports 0-0-1-1 PE102
    4th Semester MA202 Mathematics IV: Numerical Methods 3-1-0-4 MA201
    EC301 Electrical Machines I 3-1-0-4 EC202
    EC302 Power Electronics 3-1-0-4 EC203
    EC303 Control Systems I 3-1-0-4 EC205
    EC304 Communication Systems 3-1-0-4 EC205
    EC305 Microcontroller Applications 2-1-0-3 EC204
    EC306 Measurement and Instrumentation 3-1-0-4 EC202
    PE202 Physical Education & Sports 0-0-1-1 PE201
    5th Semester EC401 Electrical Machines II 3-1-0-4 EC301
    EC402 Power Systems Analysis 3-1-0-4 EC301
    EC403 Control Systems II 3-1-0-4 EC303
    EC404 Digital Signal Processing 3-1-0-4 EC205
    EC405 Computer Networks 3-1-0-4 EC304
    EC406 Embedded Systems Design 3-1-0-4 EC204
    EC407 Renewable Energy Sources 3-1-0-4 EC302
    PE301 Physical Education & Sports 0-0-1-1 PE202
    6th Semester EC501 Power System Protection 3-1-0-4 EC402
    EC502 Smart Grid Technologies 3-1-0-4 EC402
    EC503 Advanced Control Systems 3-1-0-4 EC403
    EC504 Pattern Recognition and Machine Learning 3-1-0-4 EC206
    EC505 Optimization Techniques 3-1-0-4 MA202
    EC506 Wireless Communication Systems 3-1-0-4 EC404
    EC507 Advanced Embedded Systems 3-1-0-4 EC406
    PE302 Physical Education & Sports 0-0-1-1 PE301
    7th Semester EC601 Industrial Training 0-0-2-2 None
    EC602 Project Work I 3-0-0-3 EC401, EC402, EC403, EC404
    EC603 Specialized Elective I 3-1-0-4 EC501 or EC502 or EC503 or EC504
    EC604 Specialized Elective II 3-1-0-4 EC501 or EC502 or EC503 or EC504
    EC605 Specialized Elective III 3-1-0-4 EC501 or EC502 or EC503 or EC504
    EC606 Specialized Elective IV 3-1-0-4 EC501 or EC502 or EC503 or EC504
    EC607 Elective Lab 0-0-3-2 EC603 or EC604 or EC605 or EC606
    PE401 Physical Education & Sports 0-0-1-1 PE302
    8th Semester EC701 Final Year Project/Thesis 6-0-0-6 EC602, EC603, EC604, EC605, EC606
    EC702 Advanced Elective I 3-1-0-4 EC602 or EC603 or EC604 or EC605 or EC606
    EC703 Advanced Elective II 3-1-0-4 EC602 or EC603 or EC604 or EC605 or EC606
    EC704 Advanced Elective III 3-1-0-4 EC602 or EC603 or EC604 or EC605 or EC606
    EC705 Advanced Elective IV 3-1-0-4 EC602 or EC603 or EC604 or EC605 or EC606
    EC706 Research Methodology 2-0-0-2 None
    EC707 Capstone Presentation 0-0-3-2 EC701
    PE402 Physical Education & Sports 0-0-1-1 PE401

    Advanced Departmental Electives

    Departmental electives are designed to give students a deeper understanding of specialized areas within Electrical Engineering. These courses are offered in the later semesters and allow students to tailor their education based on career interests and research aspirations.

    • Pattern Recognition and Machine Learning: This course introduces students to machine learning algorithms, neural networks, and pattern recognition techniques. Students learn how to apply these tools to solve complex problems in signal processing, image analysis, and data classification. The course includes practical sessions using Python and TensorFlow libraries.
    • Optimization Techniques: Focused on mathematical optimization methods, this course covers linear programming, nonlinear programming, integer programming, and dynamic programming. Students learn how to formulate and solve optimization problems in engineering contexts, particularly in power systems and manufacturing processes.
    • Wireless Communication Systems: This course explores the principles of wireless communication including modulation schemes, multiple access techniques, and network protocols. Students gain hands-on experience with simulation tools like MATLAB and Simulink to model and analyze wireless systems.
    • Advanced Embedded Systems: Building upon earlier embedded systems courses, this class covers advanced topics such as real-time operating systems, microcontroller architectures, FPGA programming, and IoT integration. Students develop projects involving sensor networks and smart device applications.
    • Smart Grid Technologies: As the energy sector evolves towards decentralization and digitization, this course focuses on smart grid concepts including demand response, energy storage, and grid automation. It includes case studies from global implementations and practical simulations of smart grid systems.
    • Power System Protection: This elective covers protective relaying, fault analysis, and system stability in power systems. Students learn about various protection schemes for transformers, transmission lines, and generators, and how to design and implement these systems effectively.
    • Advanced Control Systems: Extending the fundamentals of control theory, this course delves into robust control, adaptive control, and nonlinear control systems. It includes practical applications in robotics, aerospace engineering, and industrial automation.
    • Digital Signal Processing: This course provides an in-depth exploration of digital signal processing techniques including filtering, transforms, and spectral analysis. Students work with real-world signals and learn to design DSP algorithms for audio processing, biomedical applications, and telecommunications.
    • Computer Networks: Covering both wired and wireless communication networks, this course explores protocols, architectures, and security issues in modern networking environments. Students gain practical experience through network simulation tools like NS-3 and Wireshark.
    • Renewable Energy Sources: This course examines solar photovoltaic systems, wind turbines, hydroelectric power generation, and other sustainable energy technologies. Students learn about grid integration, energy storage solutions, and policy frameworks supporting renewable energy adoption.

    Project-Based Learning Philosophy

    The department places a strong emphasis on project-based learning as a core component of the educational experience. This approach integrates theoretical knowledge with practical application, encouraging students to think critically, innovate, and collaborate effectively.

    Mini-projects are assigned starting from the third semester, allowing students to apply concepts learned in class to real-world scenarios. These projects typically last 6-8 weeks and involve small teams working under faculty supervision. The projects are evaluated based on technical merit, creativity, presentation skills, and teamwork.

    The final-year thesis or capstone project represents the culmination of the student's learning journey. Students select a research topic aligned with their specialization and work closely with a faculty advisor throughout the process. The project must demonstrate originality, depth of understanding, and practical relevance.

    Project selection involves a formal proposal submission process where students present their ideas to a committee of faculty members. The committee evaluates proposals based on feasibility, novelty, alignment with departmental strengths, and resource availability.

    Faculty mentors are assigned based on expertise matching and project requirements. Regular progress meetings ensure that projects stay on track and receive timely feedback. Students are encouraged to present their work at conferences and publish papers in reputable journals.