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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Electrical Engineering

    Durga Soren University Deoghar
    Duration
    4 Years
    Electrical Engineering UG OFFLINE

    Duration

    4 Years

    Electrical Engineering

    Durga Soren University Deoghar
    Duration
    Apply

    Fees

    ₹1,50,000

    Placement

    92.0%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹9,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Electrical Engineering
    UG
    OFFLINE

    Fees

    ₹1,50,000

    Placement

    92.0%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹9,00,000

    Seats

    80

    Students

    200

    ApplyCollege

    Seats

    80

    Students

    200

    Curriculum

    Comprehensive Course Catalog

    The following table presents the complete course catalog for the Electrical Engineering program across all eight semesters. It includes course codes, full titles, credit structure (L-T-P-C), and pre-requisites.

    SemesterCourse CodeCourse TitleCredit Structure (L-T-P-C)Pre-requisites
    1MATH101Calculus I3-1-0-4-
    1MATH102Linear Algebra and Differential Equations3-1-0-4-
    1PHYS101Physics I3-1-0-4-
    1PHYS102Physics Lab I0-0-3-1-
    1CSE101Introduction to Computer Programming2-1-0-3-
    1CSE102Programming Lab0-0-3-1-
    1ENG101English for Engineers2-0-0-2-
    1MECH101Introduction to Mechanical Engineering2-0-0-2-
    2MATH201Calculus II3-1-0-4MATH101
    2MATH202Probability and Statistics3-1-0-4MATH101
    2PHYS201Physics II3-1-0-4PHYS101
    2PHYS202Physics Lab II0-0-3-1PHYS102
    2CSE201Data Structures and Algorithms3-1-0-4CSE101
    2CSE202Algorithm Lab0-0-3-1CSE102
    2ECE101Basic Electrical Engineering3-1-0-4-
    2ECE102Electrical Lab I0-0-3-1-
    3MATH301Vector Calculus and Complex Variables3-1-0-4MATH201
    3ECE201Circuit Analysis3-1-0-4ECE101
    3ECE202Circuit Lab0-0-3-1ECE102
    3ECE203Electromagnetic Fields3-1-0-4MATH202, PHYS201
    3ECE204EMF Lab0-0-3-1ECE203
    3ECE205Signals and Systems3-1-0-4MATH201, ECE201
    3ECE206Signals Lab0-0-3-1ECE205
    3ECE207Digital Logic Design3-1-0-4ECE101
    3ECE208Digital Lab0-0-3-1ECE207
    4ECE301Electrical Machines I3-1-0-4ECE201
    4ECE302Machines Lab I0-0-3-1ECE301
    4ECE303Power Electronics3-1-0-4ECE201
    4ECE304Power Electronics Lab0-0-3-1ECE303
    4ECE305Control Systems3-1-0-4ECE205
    4ECE306Control Systems Lab0-0-3-1ECE305
    4ECE307Microprocessor Architecture3-1-0-4CSE201
    4ECE308Microprocessor Lab0-0-3-1ECE307
    5ECE401Power Systems I3-1-0-4ECE301
    5ECE402Power Systems Lab I0-0-3-1ECE401
    5ECE403Digital Signal Processing3-1-0-4ECE205
    5ECE404DSP Lab0-0-3-1ECE403
    5ECE405Communication Systems3-1-0-4ECE205
    5ECE406Communication Lab0-0-3-1ECE405
    5ECE407Electronics Devices and Circuits3-1-0-4ECE201
    5ECE408EDC Lab0-0-3-1ECE407
    6ECE501Power Systems II3-1-0-4ECE401
    6ECE502Power Systems Lab II0-0-3-1ECE501
    6ECE503Advanced Control Systems3-1-0-4ECE305
    6ECE504Control Systems Advanced Lab0-0-3-1ECE503
    6ECE505VLSI Design3-1-0-4ECE407
    6ECE506VLSI Lab0-0-3-1ECE505
    6ECE507Embedded Systems3-1-0-4ECE307, CSE201
    6ECE508Embedded Systems Lab0-0-3-1ECE507
    7ECE601Renewable Energy Systems3-1-0-4ECE401, ECE303
    7ECE602Renewable Energy Lab0-0-3-1ECE601
    7ECE603AI and Machine Learning3-1-0-4ECE205, MATH202
    7ECE604ML Lab0-0-3-1ECE603
    7ECE605Energy Storage Technologies3-1-0-4ECE401, ECE303
    7ECE606Energy Storage Lab0-0-3-1ECE605
    7ECE607Smart Grid Technologies3-1-0-4ECE401
    7ECE608Smart Grid Lab0-0-3-1ECE607
    8ECE701Final Year Project I2-0-0-2All previous courses
    8ECE702Final Year Project II4-0-0-4ECE701
    8ECE703Internship0-0-0-2All previous courses
    8ECE704Project Presentation0-0-0-1ECE702

    Detailed Elective Course Descriptions

    The department offers a wide range of advanced elective courses designed to deepen students' understanding and prepare them for specialized careers or further research. Here are detailed descriptions of key advanced departmental electives:

    Electronics Devices and Circuits (ECE407)

    This course explores the fundamental principles of semiconductor devices, including diodes, transistors, and integrated circuits. Students study device physics, fabrication processes, and circuit design techniques using modern simulation tools. The curriculum covers both theoretical analysis and practical implementation through laboratory experiments.

    Learning Objectives:

    • Understand the operation principles of various semiconductor devices
    • Analyze and simulate electronic circuits using industry-standard software
    • Design and fabricate simple integrated circuits
    • Apply knowledge to real-world applications in electronics design

    Digital Signal Processing (ECE403)

    This course provides comprehensive coverage of digital signal processing techniques, including time-domain and frequency-domain analysis, filter design, and implementation. Students gain proficiency in MATLAB-based tools and learn how to apply DSP concepts to audio, image, and biomedical signal processing.

    Learning Objectives:

    • Develop understanding of discrete-time signals and systems
    • Design digital filters using various methods (FIR, IIR)
    • Implement signal processing algorithms on hardware platforms
    • Analyze real-world signals in both time and frequency domains

    Communication Systems (ECE405)

    This course covers the principles of analog and digital communication systems, including modulation techniques, noise analysis, and system performance evaluation. Students explore modern communication technologies such as OFDM, spread spectrum, and wireless networks.

    Learning Objectives:

    • Understand transmission media and signal propagation
    • Design communication protocols and systems
    • Analyze performance under various noise conditions
    • Implement basic communication schemes using simulation tools

    VLSI Design (ECE505)

    This course introduces students to the design and implementation of very large scale integrated circuits. Topics include CMOS technology, logic synthesis, circuit optimization, and testing methods. The curriculum emphasizes practical design experience through laboratory sessions.

    Learning Objectives:

    • Understand VLSI architecture and design flow
    • Design combinational and sequential circuits at gate level
    • Implement custom IC designs using CAD tools
    • Optimize circuits for performance, area, and power consumption

    Embedded Systems (ECE507)

    This course focuses on designing and implementing embedded systems using microcontrollers and real-time operating systems. Students learn about hardware-software co-design, memory management, interrupt handling, and system integration.

    Learning Objectives:

    • Design embedded software for various hardware platforms
    • Develop real-time applications using RTOS concepts
    • Integrate sensors and actuators in embedded systems
    • Implement communication protocols in embedded environments

    AI and Machine Learning (ECE603)

    This course provides an introduction to machine learning algorithms and their application in electrical engineering domains. Students study supervised and unsupervised learning techniques, neural networks, deep learning architectures, and reinforcement learning.

    Learning Objectives:

    • Understand fundamental ML concepts and algorithms
    • Apply ML techniques to solve engineering problems
    • Design and train neural network models using TensorFlow/PyTorch
    • Evaluate model performance and optimize results

    Power Electronics (ECE303)

    This course covers the principles of power electronics, including converters, inverters, rectifiers, and motor drives. Students gain hands-on experience in designing power electronic circuits and analyzing their behavior under different operating conditions.

    Learning Objectives:

    • Understand power conversion principles and applications
    • Design and analyze power electronic circuits
    • Implement control strategies for power systems
    • Evaluate efficiency and reliability of power electronic devices

    Control Systems (ECE305)

    This course provides a comprehensive treatment of classical and modern control theory, including system modeling, stability analysis, controller design, and state-space methods. Students apply these concepts to mechanical and electrical systems.

    Learning Objectives:

    • Model dynamic systems using differential equations
    • Analyze system response and stability
    • Design controllers for desired performance specifications
    • Implement control systems in simulation environments

    Renewable Energy Systems (ECE601)

    This course addresses the integration of renewable energy sources into power grids. Students study photovoltaic systems, wind turbines, and other clean energy technologies, along with their control and monitoring strategies.

    Learning Objectives:

    • Understand renewable energy generation mechanisms
    • Analyze grid integration challenges and solutions
    • Design renewable energy systems for specific applications
    • Evaluate environmental impact of energy systems

    Smart Grid Technologies (ECE607)

    This course explores smart grid concepts, including demand response, energy storage, and grid automation. Students examine how modern technologies improve efficiency, reliability, and sustainability in power distribution.

    Learning Objectives:

    • Understand smart grid architecture and components
    • Analyze integration of distributed resources
    • Design intelligent control systems for power grids
    • Evaluate impact of smart technologies on energy markets

    Project-Based Learning Philosophy

    The department places significant emphasis on project-based learning as a cornerstone of its educational approach. This philosophy recognizes that hands-on experience is essential for developing practical skills and fostering innovation among students.

    The mandatory mini-projects are designed to reinforce theoretical concepts learned in core courses while encouraging creativity and problem-solving. These projects typically span one semester and involve teams of 3-5 students working under faculty supervision. Each project is evaluated based on technical execution, innovation, presentation quality, and team collaboration.

    The final-year thesis/capstone project represents the culmination of a student's academic journey. Students are expected to tackle complex real-world problems in their chosen specialization area, often collaborating with industry partners or faculty research groups. The project involves extensive literature review, experimental design, data analysis, and documentation.

    Project selection is facilitated through a structured process where students present their interests and capabilities to faculty mentors. Faculty members provide guidance on project feasibility, scope, and resource requirements. The department maintains an online portal for project proposals, progress tracking, and milestone reporting.

    Evaluation criteria include:

    • Technical rigor and soundness of methodology
    • Innovation and originality of approach
    • Effective communication and documentation
    • Teamwork and project management skills
    • Adherence to deadlines and quality standards