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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Industrial Maintenance

    Government Polytechnic Kaladhungi
    Duration
    4 Years
    Industrial Maintenance UG OFFLINE

    Duration

    4 Years

    Industrial Maintenance

    Government Polytechnic Kaladhungi
    Duration
    Apply

    Fees

    ₹1,20,000

    Placement

    92.0%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹9,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Industrial Maintenance
    UG
    OFFLINE

    Fees

    ₹1,20,000

    Placement

    92.0%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹9,00,000

    Seats

    180

    Students

    180

    ApplyCollege

    Seats

    180

    Students

    180

    Curriculum

    Comprehensive Course Structure

    Semester Course Code Course Title Credit Structure (L-T-P-C) Prerequisites
    Semester I EN101 Engineering Mathematics I 3-1-0-4 -
    PH101 Physics for Engineers 3-1-0-4 -
    CH101 Chemistry for Engineers 3-1-0-4 -
    EC101 Electrical Engineering Fundamentals 3-1-0-4 -
    ME101 Mechanics of Solids 3-1-0-4 -
    CS101 Computer Programming 3-1-0-4 -
    EP101 Engineering Drawing and Graphics 2-1-0-3 -
    EG101 Introduction to Engineering 2-0-0-2 -
    ES101 Environmental Science and Sustainability 3-0-0-3 -
    EN102 Engineering Mathematics II 3-1-0-4 EN101
    PH102 Thermodynamics and Heat Transfer 3-1-0-4 PH101
    EC102 Electronics Circuits 3-1-0-4 EC101
    ME102 Fluid Mechanics and Hydraulic Machines 3-1-0-4 ME101
    Semester II EN201 Probability and Statistics 3-1-0-4 EN102
    PH201 Electromagnetic Fields and Waves 3-1-0-4 PH102
    CH201 Chemical Engineering Principles 3-1-0-4 CH101
    EC201 Digital Electronics and Logic Design 3-1-0-4 EC102
    ME201 Mechanical Measurements and Instrumentation 3-1-0-4 ME102
    CS201 Data Structures and Algorithms 3-1-0-4 CS101
    EP201 Engineering Economics and Management 3-0-0-3 -
    EG201 Professional Ethics and Values 2-0-0-2 -
    EN202 Linear Algebra and Differential Equations 3-1-0-4 EN201
    PH202 Optics and Modern Physics 3-1-0-4 PH201
    EC202 Analog Electronics 3-1-0-4 EC201
    ME202 Mechanical Design and Drafting 3-1-0-4 ME201
    EN203 Complex Variables and Transforms 3-1-0-4 EN202
    Semester III ME301 Mechanics of Materials 3-1-0-4 ME202
    EC301 Signals and Systems 3-1-0-4 EC202
    CS301 Database Management Systems 3-1-0-4 CS201
    EN301 Control Systems Engineering 3-1-0-4 EN203
    PH301 Quantum Physics and Applications 3-1-0-4 PH202
    ME302 Thermal Engineering 3-1-0-4 ME202
    EC302 Communication Systems 3-1-0-4 EC301
    CS302 Operating Systems 3-1-0-4 CS301
    EN302 Digital Signal Processing 3-1-0-4 EN301
    PH302 Nuclear Physics and Applications 3-1-0-4 PH301
    ME303 Mechanical Vibrations 3-1-0-4 ME302
    EC303 Microprocessors and Microcontrollers 3-1-0-4 EC302
    CS303 Software Engineering 3-1-0-4 CS302
    Semester IV ME401 Design of Machine Elements 3-1-0-4 ME303
    EC401 Computer Networks 3-1-0-4 EC303
    CS401 Artificial Intelligence 3-1-0-4 CS303
    EN401 Process Control Systems 3-1-0-4 EN302
    PH401 Advanced Physics Concepts 3-1-0-4 PH302
    ME402 Industrial Safety and Risk Management 3-1-0-4 ME303
    EC402 Embedded Systems 3-1-0-4 EC401
    CS402 Machine Learning 3-1-0-4 CS401
    EN402 Industrial Automation 3-1-0-4 EN401
    PH402 Optical and Quantum Technologies 3-1-0-4 PH401
    ME403 Maintenance Engineering 3-1-0-4 ME402
    EC403 Power Electronics and Drives 3-1-0-4 EC402
    CS403 Big Data Analytics 3-1-0-4 CS402
    Semester V ME501 Predictive Maintenance using AI/ML 3-1-0-4 ME403
    EC501 Industrial IoT and Sensor Networks 3-1-0-4 EC403
    CS501 Advanced Data Analytics for Maintenance 3-1-0-4 CS403
    EN501 Smart Manufacturing Systems 3-1-0-4 EN402
    PH501 Renewable Energy Technologies 3-1-0-4 PH402
    ME502 Energy Auditing and Management 3-1-0-4 ME403
    EC502 Robotics and Automation 3-1-0-4 EC501
    CS502 Cloud Computing for Industrial Applications 3-1-0-4 CS501
    EN502 Digital Twin Technology 3-1-0-4 EN501
    PH502 Sustainable Energy Practices 3-1-0-4 PH501
    ME503 Advanced Maintenance Techniques 3-1-0-4 ME502
    EC503 Industrial Automation and Control Systems 3-1-0-4 EC502
    CS503 Blockchain Applications in Industry 3-1-0-4 CS502
    Semester VI ME601 Advanced Predictive Modeling for Maintenance 3-1-0-4 ME503
    EC601 Edge Computing in Industrial Environments 3-1-0-4 EC503
    CS601 Machine Learning for Industrial Applications 3-1-0-4 CS503
    EN601 Industry 4.0 Integration 3-1-0-4 EN502
    PH601 Quantum Technologies in Industry 3-1-0-4 PH502
    ME602 Industrial Safety and Compliance 3-1-0-4 ME503
    EC602 Advanced Control Systems for Manufacturing 3-1-0-4 EC601
    CS602 Data Science and Analytics for Maintenance 3-1-0-4 CS601
    EN602 Cybersecurity in Industrial Environments 3-1-0-4 EN601
    PH602 Nanotechnology and Its Applications 3-1-0-4 PH601
    ME603 Maintenance Optimization and Cost Analysis 3-1-0-4 ME602
    EC603 Advanced IoT Implementations 3-1-0-4 EC602
    CS603 Software Engineering for Smart Systems 3-1-0-4 CS602
    Semester VII ME701 Capstone Project - Industrial Maintenance 3-0-0-6 -
    EC701 Research Methodology and Project Planning 2-0-0-3 -
    CS701 Capstone Thesis Writing 2-0-0-3 -
    EN701 Final Year Project - Industry Collaboration 4-0-0-8 -
    PH701 Capstone Research Paper Presentation 2-0-0-3 -
    ME702 Mini Project - Maintenance Innovation 2-0-0-4 -
    EC702 Project Supervision and Evaluation 1-0-0-2 -
    Semester VIII ME801 Internship and Practical Exposure 0-0-6-12 -
    EC801 Capstone Presentation and Defense 2-0-0-4 -
    CS801 Advanced Capstone Research 3-0-0-6 -
    EN801 Final Project Implementation 4-0-0-8 -
    PH801 Research Synthesis and Publication 2-0-0-3 -
    ME802 Industry Project Finalization 3-0-0-6 -
    EC802 Final Review and Grading 1-0-0-2 -

    Detailed Description of Advanced Departmental Electives

    Departmental electives form a crucial part of the Industrial Maintenance program, offering students specialized knowledge and advanced skills in emerging fields. These courses are designed to deepen understanding and enhance career prospects by aligning with current industry trends and demands.

    Predictive Maintenance using AI/ML

    This course explores how machine learning algorithms can be applied to predict equipment failures before they occur. Students learn about data collection, preprocessing, feature extraction, and model selection techniques tailored for industrial environments. Topics include regression analysis, classification models, neural networks, deep learning architectures, and time series forecasting methods.

    Industrial IoT and Sensor Networks

    This course introduces students to the architecture and implementation of Internet of Things (IoT) solutions in industrial settings. It covers sensor technologies, communication protocols, network topologies, edge computing, data fusion techniques, and real-time monitoring systems. Students also learn about security challenges and best practices for deploying IoT infrastructure in manufacturing environments.

    Advanced Data Analytics for Maintenance

    Building upon foundational analytics concepts, this course focuses on advanced statistical methods and tools used in industrial maintenance optimization. It includes exploratory data analysis, hypothesis testing, regression modeling, clustering algorithms, decision trees, and ensemble methods. The course emphasizes practical applications using industry-standard software like Python, R, and MATLAB.

    Smart Manufacturing Systems

    This elective delves into the integration of digital technologies in manufacturing processes. It covers topics such as automation systems, robotic process automation (RPA), cyber-physical systems, smart factories, digital twin modeling, and Industry 4.0 principles. Students gain hands-on experience with simulation tools and real-world case studies from leading manufacturers.

    Renewable Energy Technologies

    The course explores various renewable energy sources and their applications in industrial maintenance contexts. It covers solar power systems, wind turbines, hydroelectric plants, and biomass technologies. Students learn about energy storage solutions, grid integration challenges, maintenance practices for renewable assets, and environmental impact assessments.

    Energy Auditing and Management

    This course provides a comprehensive overview of energy auditing techniques and management strategies in industrial settings. It includes energy consumption analysis, benchmarking methods, energy efficiency improvements, carbon footprint reduction, and sustainability reporting frameworks. Students are trained to conduct audits using industry-standard tools and interpret results for strategic decision-making.

    Robotics and Automation

    This course covers the design, implementation, and maintenance of robotic systems in industrial environments. It includes robot kinematics, control systems, programming languages, sensor integration, machine vision, and collaborative robotics (cobots). Students work on hands-on projects involving industrial robots and automation solutions.

    Digital Twin Technology

    Students learn how to create virtual replicas of physical assets using digital twin technology. The course covers modeling techniques, simulation environments, real-time data integration, predictive analytics, and visualization tools. It emphasizes practical applications in manufacturing, energy, transportation, and other sectors.

    Cybersecurity in Industrial Environments

    This course addresses the growing threat landscape in industrial cybersecurity. It covers network security, endpoint protection, intrusion detection systems, vulnerability assessments, risk management, compliance standards (e.g., NIST, ISO 27001), and incident response procedures. Students are exposed to real-world scenarios through simulations and case studies.

    Industry 4.0 Integration

    This course explores how Industry 4.0 technologies such as artificial intelligence, IoT, robotics, and big data analytics can be integrated into traditional manufacturing processes. It includes topics like smart production lines, predictive maintenance systems, supply chain digitization, digital transformation strategies, and future trends in industrial innovation.

    Project-Based Learning Philosophy

    The department strongly believes in project-based learning as a means to develop critical thinking, problem-solving, and collaborative skills among students. The curriculum includes mandatory mini-projects in earlier semesters and a final-year capstone project that integrates all learned concepts.

    Mini Projects

    Mini projects are assigned during the second and third years to provide practical exposure to real-world problems. These projects typically last 3-4 months and involve small teams of 2-4 students working under faculty supervision. The evaluation criteria include project proposal, implementation, documentation, presentation, and peer review.

    Final-Year Capstone Project

    The final-year capstone project is a significant component of the program that allows students to demonstrate their mastery of industrial maintenance concepts. Students choose projects aligned with their interests or industry needs and work closely with faculty mentors throughout the process. The project involves research, design, prototyping, testing, documentation, and presentation components.

    Project Selection Process

    Students can select projects based on various categories including:

    • Research-based projects aligned with faculty expertise
    • Industry-sponsored projects addressing real challenges
    • Innovation and entrepreneurship projects
    • Interdisciplinary collaborative projects

    The selection process involves proposal submissions, mentor matching, and approval by the departmental committee. Faculty members play a crucial role in guiding students through each phase of their project journey.