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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Industrial Maintenance

    Government Polytechnic Kanalichhina
    Duration
    4 Years
    Industrial Maintenance UG OFFLINE

    Duration

    4 Years

    Industrial Maintenance

    Government Polytechnic Kanalichhina
    Duration
    Apply

    Fees

    ₹1,20,000

    Placement

    92.0%

    Avg Package

    ₹7,00,000

    Highest Package

    ₹15,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Industrial Maintenance
    UG
    OFFLINE

    Fees

    ₹1,20,000

    Placement

    92.0%

    Avg Package

    ₹7,00,000

    Highest Package

    ₹15,00,000

    Seats

    60

    Students

    240

    ApplyCollege

    Seats

    60

    Students

    240

    Curriculum

    Comprehensive Course Structure

    SemesterCourse CodeFull TitleCredit (L-T-P-C)Prerequisites
    IMATH101Engineering Mathematics I3-1-0-4None
    IPHY101Physics for Engineers3-1-0-4None
    IECE101Basic Electrical and Electronics3-1-0-4None
    IMECH101Engineering Graphics & Workshop Practice2-2-0-3None
    ICSE101Computer Applications in Engineering2-1-0-3None
    IINTRO101Introduction to Industrial Maintenance2-0-0-2None
    IIMATH201Engineering Mathematics II3-1-0-4MATH101
    IIPHY201Applied Physics3-1-0-4PHY101
    IIMATH202Statistics for Engineers3-1-0-4MATH101
    IIMECH201Strength of Materials3-1-0-4MATH101, PHY101
    IIECE201Electrical Circuits and Machines3-1-0-4ECE101
    IIIMATH301Engineering Mathematics III3-1-0-4MATH201
    IIIMECH301Thermodynamics3-1-0-4MECH201
    IIIMECH302Fluid Mechanics3-1-0-4MECH201
    IIIMATH302Probability and Queueing Theory3-1-0-4MATH201
    IIIECE301Electronics Devices and Circuits3-1-0-4ECE101
    IVMATH401Engineering Mathematics IV3-1-0-4MATH301
    IVMECH401Machine Design3-1-0-4MECH301, MECH302
    IVMECH402Industrial Automation3-1-0-4MECH301, ECE201
    IVECE401Signals and Systems3-1-0-4ECE201
    VMECH501Maintenance Engineering3-1-0-4MECH401
    VMECH502Industrial Safety and Risk Assessment3-1-0-4MECH401
    VECE501Control Systems3-1-0-4ECE201
    VCSE501Data Structures and Algorithms3-1-0-4CSE101
    VIMECH601Predictive Maintenance Techniques3-1-0-4MECH501
    VIMECH602Reliability Engineering3-1-0-4MECH501
    VIECE601Microprocessors and Microcontrollers3-1-0-4ECE201
    VICSE601Database Management Systems3-1-0-4CSE501
    VIIMECH701Advanced Machine Design3-1-0-4MECH401
    VIIMECH702Process Control Systems3-1-0-4MECH601
    VIIECE701Industrial Communication Networks3-1-0-4ECE501
    VIIIMECH801Maintenance Management3-1-0-4MECH602
    VIIIMECH802Quality Assurance and Reliability Engineering3-1-0-4MECH701
    VIIICSE801Artificial Intelligence in Industrial Systems3-1-0-4CSE501
    VIIIECE801Embedded Systems Design3-1-0-4ECE601

    Advanced Departmental Elective Courses

    These advanced courses are designed to provide students with specialized knowledge and practical skills in key areas of industrial maintenance. Each course is structured to combine theoretical understanding with hands-on application, ensuring that students are well-prepared for real-world challenges.

    1. Predictive Maintenance Techniques: This course explores the integration of data analytics, machine learning algorithms, and sensor technologies to predict equipment failures before they occur. Students learn to implement predictive models using Python and MATLAB, analyze time-series data, and interpret diagnostic results from various industrial sensors. The course emphasizes practical applications through case studies involving real-world maintenance challenges.

    2. Reliability Engineering: Focused on the systematic approach to ensuring that equipment performs its intended function over a specified period under stated conditions, this course covers reliability modeling, fault tree analysis, and risk assessment methodologies. Students gain experience in using reliability software tools and applying statistical techniques to evaluate system performance.

    3. Industrial Safety and Risk Assessment: This comprehensive course addresses safety protocols, hazard identification, and risk mitigation strategies in industrial environments. Students learn to conduct safety audits, develop emergency response plans, and comply with regulatory standards such as OSHA guidelines. The course includes practical training in safety equipment usage and incident reporting.

    4. Advanced Machine Design: Building upon foundational machine design principles, this course delves into advanced topics such as finite element analysis, fatigue failure prediction, and optimization techniques. Students work on design projects involving complex mechanical systems, using CAD software and simulation tools to create efficient and reliable components.

    5. Process Control Systems: This course covers the design and implementation of control systems used in industrial processes. Topics include feedback control theory, PID controllers, and distributed control systems (DCS). Students gain hands-on experience through laboratory experiments involving real-time process control using SCADA software and programmable logic controllers (PLCs).

    6. Industrial Communication Networks: Designed to familiarize students with modern communication protocols used in industrial settings, this course covers Ethernet/IP, Modbus, Profibus, and other network standards. Students learn to configure communication networks, troubleshoot connectivity issues, and integrate various devices into a cohesive system.

    7. Maintenance Management: This course focuses on the strategic aspects of maintenance operations, including resource planning, scheduling optimization, and performance evaluation. Students learn to develop maintenance strategies that balance operational efficiency with cost-effectiveness while ensuring compliance with safety and regulatory requirements.

    8. Quality Assurance and Reliability Engineering: Emphasizing quality control methodologies and reliability assessment techniques, this course prepares students for roles in maintaining high standards of product and service quality. Topics include statistical process control, Six Sigma applications, and continuous improvement strategies used in manufacturing environments.

    9. Artificial Intelligence in Industrial Systems: This cutting-edge course explores how AI technologies can enhance industrial maintenance practices. Students learn to develop AI models for predictive maintenance, implement neural networks for pattern recognition, and integrate machine learning into existing maintenance workflows using platforms like TensorFlow and PyTorch.

    10. Embedded Systems Design: Focused on designing embedded systems for industrial applications, this course covers microcontroller architectures, real-time operating systems, and hardware-software co-design principles. Students build functional prototypes of embedded systems used in maintenance monitoring and control applications.

    Project-Based Learning Philosophy

    The Industrial Maintenance program at Government Polytechnic Kanalichhina places significant emphasis on project-based learning to ensure that students develop practical skills and real-world experience. This approach is embedded throughout the curriculum, from foundational projects in early semesters to complex capstone initiatives in the final year.

    Mini-projects are introduced starting from the second semester, allowing students to apply theoretical concepts learned in class to tangible problems. These projects typically involve designing small-scale systems, conducting experiments, or solving practical maintenance challenges using available tools and resources. Evaluation criteria include technical competency, creativity, teamwork, and presentation skills.

    As students progress through their academic journey, project complexity increases, culminating in a comprehensive capstone project in the final year. These projects are typically developed in collaboration with industry partners, providing students with exposure to real-world constraints and expectations. Faculty mentors guide students through every stage of the project lifecycle, from problem identification to solution implementation.

    The evaluation process for these projects is multifaceted, incorporating peer reviews, faculty assessments, and industry feedback. Students are required to present their findings at departmental symposiums and may have opportunities to showcase their work at national conferences or competitions. This ensures that students not only gain technical expertise but also develop communication and presentation skills essential for professional success.