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    Scholarships & exams

    support@collegese.com
    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Electronics Engineering

    Lakshmi Narayan College of Technology, Bhopal - Indore Campus
    Duration
    4 Years
    Electronics Engineering UG OFFLINE

    Duration

    4 Years

    Electronics Engineering

    Lakshmi Narayan College of Technology, Bhopal - Indore Campus
    Duration
    Apply

    Fees

    ₹2,50,000

    Placement

    92.0%

    Avg Package

    ₹5,20,000

    Highest Package

    ₹8,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Electronics Engineering
    UG
    OFFLINE

    Fees

    ₹2,50,000

    Placement

    92.0%

    Avg Package

    ₹5,20,000

    Highest Package

    ₹8,00,000

    Seats

    120

    Students

    300

    ApplyCollege

    Seats

    120

    Students

    300

    Curriculum

    Comprehensive Course Structure

    The Electronics Engineering program at LNCT BHOPAL INDORE CAMPUS follows a structured 8-semester curriculum designed to provide students with a solid foundation in core engineering principles, followed by specialization and advanced project work. Each semester consists of core subjects, departmental electives, science electives, and laboratory sessions.

    SemesterCourse CodeCourse TitleCredit Structure (L-T-P-C)Pre-requisites
    1EG101Engineering Mathematics I3-1-0-4None
    1EG102Physics for Electronics3-1-0-4None
    1EG103Chemistry for Engineers3-1-0-4None
    1EG104Computer Programming2-0-2-3None
    1EG105Basic Electronics3-1-0-4None
    1EG106Engineering Graphics2-0-2-3None
    2EG201Engineering Mathematics II3-1-0-4EG101
    2EG202Electromagnetic Fields3-1-0-4EG102
    2EG203Digital Logic Design3-1-0-4EG105
    2EG204Analog Electronics3-1-0-4EG105
    2EG205Programming in C++2-0-2-3EG104
    2EG206Communication Systems3-1-0-4EG202
    3EG301Signals and Systems3-1-0-4EG201
    3EG302Microprocessors3-1-0-4EG205
    3EG303Control Systems3-1-0-4EG301
    3EG304VLSI Design3-1-0-4EG204
    3EG305Power Electronics3-1-0-4EG204
    3EG306Electronics Workshop0-0-4-2EG205
    4EG401Embedded Systems3-1-0-4EG302
    4EG402Communication Networks3-1-0-4EG206
    4EG403Antenna and Wave Propagation3-1-0-4EG202
    4EG404RF and Microwave Engineering3-1-0-4EG403
    4EG405Optoelectronics3-1-0-4EG202
    4EG406Digital Signal Processing3-1-0-4EG301
    5EG501Machine Learning3-1-0-4EG301
    5EG502Pattern Recognition3-1-0-4EG501
    5EG503Image Processing3-1-0-4EG406
    5EG504Wireless Sensor Networks3-1-0-4EG402
    5EG505Robotics3-1-0-4EG303
    5EG506Advanced Embedded Systems3-1-0-4EG401
    6EG601Neural Networks3-1-0-4EG501
    6EG602Deep Learning3-1-0-4EG601
    6EG603IoT Applications3-1-0-4EG504
    6EG604Smart Grid Technologies3-1-0-4EG305
    6EG605Advanced VLSI Design3-1-0-4EG304
    6EG606Project Management2-0-2-3None
    7EG701Research Methodology2-0-2-3None
    7EG702Capstone Project I0-0-6-4EG501
    7EG703Advanced Topics in Electronics3-1-0-4EG501
    8EG801Capstone Project II0-0-6-4EG702
    8EG802Internship0-0-0-4None

    Detailed Course Descriptions

    Advanced Departmental Electives include:

    • Neural Networks: This course explores the fundamentals of artificial neural networks, including feedforward networks, recurrent networks, and convolutional architectures. Students learn to implement neural network models using Python and TensorFlow.
    • Deep Learning: Building upon neural networks, this course delves into deep learning techniques such as backpropagation, regularization, optimization algorithms, and transfer learning. Practical assignments involve building image classification systems and natural language processing applications.
    • IoT Applications: Students study the architecture of IoT systems, including sensors, actuators, wireless communication protocols, and cloud integration. Projects include developing smart home automation systems and environmental monitoring solutions.
    • Smart Grid Technologies: This course covers renewable energy integration, power management, grid stability, and demand response systems. Real-world case studies help students understand the complexities of modern power distribution networks.
    • Advanced VLSI Design: Focuses on advanced design techniques for integrated circuits, including layout design, testing, and verification methods. Students gain hands-on experience with CAD tools like Cadence and Synopsys.
    • Project Management: Introduces project planning, resource allocation, risk assessment, and team coordination in engineering contexts. Case studies from successful tech startups illustrate best practices in managing complex projects.
    • Research Methodology: Prepares students for academic research by teaching hypothesis formulation, experimental design, data analysis, and scientific writing. Emphasis is placed on ethical considerations in engineering research.
    • Capstone Project I: Students begin developing their final-year project under faculty supervision, focusing on problem identification, literature review, and initial design concepts.
    • Capstone Project II: The final phase involves full implementation, testing, documentation, and presentation of the capstone project. Students present their work to industry experts and academic panels.
    • Advanced Topics in Electronics: Covers emerging trends such as quantum computing, neuromorphic engineering, and sustainable electronics. Guest lectures from leading researchers provide insights into future directions.

    Project-Based Learning Philosophy

    The department strongly believes in experiential learning through project-based education. Students engage in both mini-projects during their second and third years and a comprehensive capstone project in the final year.

    Mini-projects are assigned based on student interests and faculty expertise, encouraging exploration of niche areas within electronics engineering. These projects typically last 6-8 weeks and involve working with real datasets or physical prototypes.

    The final-year thesis/capstone project is a major undertaking spanning the entire semester. Students select topics in consultation with faculty mentors, who guide them through the process of designing, developing, testing, and documenting their solutions. The evaluation criteria include technical depth, innovation, presentation quality, and peer feedback.

    Students are encouraged to propose project ideas that align with current industry needs or emerging technologies, fostering a culture of innovation and entrepreneurship. The department facilitates connections with startups and industry partners, providing opportunities for students to contribute to real-world challenges.