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  • Intelligent Prognostics for Engineering Systems with Machine Learning Techniques

    Intelligent Prognostics for Engineering Systems with Machine Learning Techniques by Soni, Gunjan; Yadav, Om Prakash; Badhotiya, Gaurav Kumar;

    Series: Advanced Research in Reliability and System Assurance Engineering;

      • GET 20% OFF

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      • Publisher's listprice GBP 125.00
      • The price is estimated because at the time of ordering we do not know what conversion rates will apply to HUF / product currency when the book arrives. In case HUF is weaker, the price increases slightly, in case HUF is stronger, the price goes lower slightly.

        59 718 Ft (56 875 Ft + 5% VAT)
      • Discount 20% (cc. 11 944 Ft off)
      • Discounted price 47 775 Ft (45 500 Ft + 5% VAT)

    59 718 Ft

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    Availability

    Estimated delivery time: In stock at the publisher, but not at Prospero's office. Delivery time approx. 3-5 weeks.
    Not in stock at Prospero.

    Why don't you give exact delivery time?

    Delivery time is estimated on our previous experiences. We give estimations only, because we order from outside Hungary, and the delivery time mainly depends on how quickly the publisher supplies the book. Faster or slower deliveries both happen, but we do our best to supply as quickly as possible.

    Short description:

    The text discusses the latest data-driven, physics-based, and hybrid approaches employed in each stage of industrial prognostics and reliability estimation. It will be a useful text for senior undergraduate, graduate students, and academic researchers in areas such as industrial and production engineering

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    Long description:

    The text discusses the latest data-driven, physics-based, and hybrid approaches employed in each stage of industrial prognostics and reliability estimation. It will be a useful text for senior undergraduate, graduate students, and academic researchers in areas such as industrial and production engineering, electrical engineering, and computer science.


    The book



    • Discusses basic as well as advance research in the field of prognostics

    • Explores integration of data collection, fault detection, degradation modeling and reliability prediction in one volume

    • Covers prognostics and health management (PHM) of engineering systems

    • Discusses latest approaches in the field of prognostics based on machine learning

    The text deals with tools and techniques used to predict/ extrapolate/ forecast the process behavior, based on current health state assessment and future operating conditions with the help of Machine learning. It will serve as a useful reference text for senior undergraduate, graduate students, and academic researchers in areas such as industrial and production engineering, manufacturing science, electrical engineering, and computer science.

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    Table of Contents:

    Chapter 1: A Bibliometric Analysis of Research on Tool Condition Monitoring
    Jeetesh Sharma, M.L. Mittal, Gunjan Soni


    1.1 Introduction
    1.2 Data Collection and Research Methodology
    1.3 Bibliometric Analysis
    1.4 Conclusion


    Chapter 2: Predicting Restoration Factor for Different Maintenance Types
    Neeraj Kumar Goyal, Tapash Kumar Das, Namrata Mohanty


    2.1 Introduction
    2.2 Proposed Model
    2.3 Case Study
    2.4 Conclusion


    Chapter 3:  Measurement and Modeling of Cutting Tool Temperature during Dry Turning Operation of DSS
    P. Kumar, O.P.Yadav


    3.1. Introduction
    3.2. Materials and methods
    3.3. Results and discussion
    3.4. Empirical Modeling
    3.5. Conclusions


    Chapter 4: Leaf disease recognition: Comparative Analysis of Various Convolutional Neural Network Algorithms
    Vikas Kumar Roy, Ganpati Kumar Roy, Vasu Thakur, Nikhil Baliyan, Nupur Goyal


    4.1 Introduction
    4.2 Literature Review
    4.3 Dataset
    4.4 Methodology
    4.5 Results and discussion
    4.6 Conclusion


    Chapter 5: On the Validity of Parallel Plate Assumption for Modelling Leakage Flow past Hydraulic Piston-Cylinder Configurations
    Rishabh Gupta, Jatin Prakash, Ankur Miglani, Pavan Kumar Kankar


    5.1 Introduction
    5.2 The Leakage Flow Models
    5.3 Results and discussion
    5.4 Concluding remarks


    Chapter 6: Development of a hybrid MGWO-optimized Support vector machine approach for tool wear estimation
    N. Rajpurohit, Jeetesh Sharma, M. L. Mittal


    6.1 Introduction
    6.2 Materials and methods
    6.3 Results and discussion
    6.4 Conclusion and future work


    Chapter 7: The Energy Consumption Optimization Using Machine Learning Technique in Electrical Arc Furnaces (EAF)
    Rishabh Dwivedi, Ashutosh Mishra, Devesh Kumar, Amitkumar Patil


    7.1 Introduction:
    7.2 Literature Review
    7.3 Methodology
    7.4 Result and Discussion
    7.4.1Managerial Implications
    7.5 Conclusion Limitations and Future scope


    Chapter 8: PID based ANN control of Dynamic Systems
    A. Kharola


    8.1 Introduction
    8.2 Mathematical modeling of inverted double pendulum
    8.3 PID based ANN control of Inverted double pendulum System
    8.4 Simulation & Results Comparison
    8.5 Conclusion


    Chapter 9: Fatigue Damage Prognosis of Offshore Piping
    A. Keprate, N. Bagalkot


    9.1 Introduction
    9.2 Understanding Piping Fatigue
    9.3 Fatigue Damage Prognosis
    9.4 Case Study
    9.5 Conclusion


    Chapter 10: Minimization of Joint Angle Jerk for Industrial Manipulator based on Prognostic Behaviour
    Vaishnavi J, Bharat Singh, Ankit Vijayvargiya, Rajesh Kumar


    10.1 Introduction
    10.2 System Description
    10.3 Algorithms and Objective functions
    10.3.1 Objective Function
    10.3.2 Modified Objective Function
    10.3.3 Particle Swarm Optimization (PSO)
    10.4 Results and Discussion
    10.5 Conclusion


    Chapter 11: Estimation of bearing remaining useful life using exponential degradation model and random forest algorithm
    Pawan, Jeetesh Sharma, M. L. Mittal


    11.1 Introduction
    11.2 The proposed RUL estimate approach
    11.3 Experimental result and Discussion
    11.4 Conclusion


    Chapter 12: Machine Learning-based Predictive Maintenance for Diagnostics and Prognostics of Engineering Systems
    Ramnath Prabhu Bam, Rajesh S. Prabhu Gaonkar, Clint Pazhayidam George
    12.1 Introduction and Overview
    12.2 Diagnostics and Prognostics based on Predictive Maintenance
    12.3 Machine Learning for Predictive Maintenance
    12.4 Machine learning-based Predictive Maintenance in Engineering Systems
    12.5 Summary


     

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