Collegese

Welcome to Collegese! Sign in →

Collegese

    Search colleges and courses

    Search and navigate to colleges and courses

    Start your journey

    Ready to find your dream college?

    Join thousands of students making smarter education decisions.

    Watch How It WorksGet Started

    Discover

    Browse & filter colleges

    Compare

    Side-by-side analysis

    Explore

    Detailed course info

    Collegese

    India's education marketplace helping students discover the right colleges, compare courses, and build careers they deserve.

    © 2026 Collegese. All rights reserved. A product of Nxthub Consulting Pvt. Ltd.

    Apply

    Scholarships & exams

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

    Duration

    4 Years

    Control Systems

    School of Instrumentation, Devi Ahilya Vishwavidyalaya
    Duration
    4 Years
    Control Systems UG OFFLINE

    Duration

    4 Years

    Control Systems

    School of Instrumentation, Devi Ahilya Vishwavidyalaya
    Duration
    Apply

    Fees

    ₹7,50,000

    Placement

    92.0%

    Avg Package

    ₹6,50,000

    Highest Package

    ₹18,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Control Systems
    UG
    OFFLINE

    Fees

    ₹7,50,000

    Placement

    92.0%

    Avg Package

    ₹6,50,000

    Highest Package

    ₹18,00,000

    Seats

    120

    Students

    240

    ApplyCollege

    Seats

    120

    Students

    240

    Curriculum

    Comprehensive Course Breakdown Across All 8 Semesters

    SemesterCourse CodeCourse TitleCredit Structure (L-T-P-C)Pre-requisites
    IMTH101Calculus I3-1-0-4None
    IMTH102Linear Algebra3-1-0-4None
    IPHY101Physics I3-1-0-4None
    ICHM101Chemistry I3-1-0-4None
    IESC101Engineering Graphics2-0-2-3None
    ICSE101Introduction to Programming3-0-2-4None
    IIMTH201Calculus II3-1-0-4MTH101
    IIMTH202Differential Equations3-1-0-4MTH101
    IIPHY201Physics II3-1-0-4PHY101
    IIECE201Circuit Analysis3-1-0-4PHY101
    IIESC201Basic Electronics3-1-0-4ECE201
    IICSE201Data Structures & Algorithms3-0-2-4CSE101
    IIIMTH301Probability and Statistics3-1-0-4MTH201
    IIIECE301Signals and Systems3-1-0-4ECE201
    IIIECE302Electromagnetic Fields3-1-0-4PHY201
    IIIESC301Control Systems I3-1-0-4ECE201, CSE201
    IIICSE301Operating Systems3-1-0-4CSE201
    IVMTH401Numerical Methods3-1-0-4MTH201
    IVECE401Control Systems II3-1-0-4ESC301
    IVECE402Feedback Control Design3-1-0-4ECE401
    IVESC401Microprocessors & Microcontrollers3-1-0-4ESC201
    IVCSE401Computer Networks3-1-0-4CSE201
    VECE501Advanced Control Theory3-1-0-4ECE401
    VECE502Nonlinear Control Systems3-1-0-4ECE501
    VESC501State Space Methods3-1-0-4ESC301
    VCSE501Machine Learning3-1-0-4CSE201, MTH301
    VESC502Optimization Techniques3-1-0-4MTH201
    VIECE601Adaptive Control Systems3-1-0-4ECE501
    VIECE602Cyber Physical Systems3-1-0-4ESC401
    VIESC601Process Control3-1-0-4ECE401
    VICSE601Embedded Systems3-1-0-4CSE401, ESC401
    VIESC602System Identification3-1-0-4ECE501
    VIIECE701Robotics & Automation3-1-0-4ECE601, ESC601
    VIIECE702Biomedical Instrumentation3-1-0-4ECE301, ESC301
    VIIESC701Smart Grid Technologies3-1-0-4ESC601
    VIICSE701Reinforcement Learning3-1-0-4CSE501, MTH301
    VIIIECE801Final Year Project6-0-0-6All previous semesters
    VIIIESC801Capstone Thesis3-0-0-3ECE801

    Advanced Departmental Elective Courses

    Reinforcement Learning for Control Systems: This course explores how reinforcement learning algorithms can be integrated with traditional control methods to solve complex dynamic optimization problems. Students will learn about Q-learning, policy gradients, and actor-critic methods in the context of control system design. Real-world applications include autonomous vehicles, robotics, and process control.

    Advanced Cyber-Physical Systems: Focuses on the integration of computational algorithms with physical systems, emphasizing safety, security, and reliability aspects. Topics include distributed control, sensor fusion, real-time operating systems, and industrial IoT architectures.

    Biomedical Signal Processing & Control: Applies signal processing techniques to analyze physiological signals such as ECG, EEG, and EMG. Students will design control systems for medical devices including pacemakers, prosthetics, and diagnostic equipment.

    Smart Grid Integration and Energy Management: Covers the control of power distribution networks, renewable energy integration, demand response programs, and microgrid operations. Emphasis is placed on stability analysis, load forecasting, and grid optimization using advanced control strategies.

    Industrial Robotics & Automation: Introduces industrial robotics with focus on motion planning, trajectory control, safety protocols, and integration with existing manufacturing systems. Practical sessions include programming ABB, KUKA, and Fanuc robots.

    State Space Control Methods: Builds upon classical control theory to explore advanced state-space techniques for modeling and controlling multi-input multi-output systems. Includes controllability, observability, Kalman filtering, and observer design.

    Robust Control Systems: Examines techniques for designing controllers that remain stable and performant under uncertainty and disturbances. Concepts include H-infinity control, μ-synthesis, and parameter-dependent controllers.

    Optimization in Control Applications: Covers mathematical optimization methods specifically tailored for control system design, including convex optimization, nonlinear programming, and heuristic algorithms for large-scale systems.

    Digital Signal Processing for Control Systems: Combines digital signal processing theory with practical implementation in feedback control. Topics include discrete-time filtering, spectral analysis, digital PID controllers, and FPGA-based implementations.

    Quantitative Finance Engineering: Applies control theory to financial modeling, including derivative pricing, portfolio optimization, risk management, and algorithmic trading strategies using stochastic control methods.

    Project-Based Learning Philosophy

    The department emphasizes project-based learning as a core pedagogical strategy. Students begin with small group projects in the second year, progressing to increasingly complex individual or team-based capstone initiatives in the final year. Mini-projects are assigned every semester, allowing students to apply theoretical knowledge in practical settings.

    Projects are selected from industry partnerships, research grants, and faculty-led initiatives. Each project undergoes rigorous evaluation using predefined criteria including innovation, technical merit, documentation quality, and presentation skills. Students receive mentorship from faculty members throughout the project lifecycle.

    The final-year thesis/capstone project is a culmination of all learned concepts, requiring students to propose, implement, and evaluate a significant control system solution. Projects often result in publications, patents, or commercial applications, with many students presenting their work at national conferences.