Description

Book Synopsis

This textbook provides an introduction to probabilistic reliability analysis of power systems. It discusses a range of probabilistic methods used in reliability modelling of power system components, small systems and large systems. It also presents the benefits of probabilistic methods for modelling renewable energy sources. The textbook describes real-life studies, discussing practical examples and providing interesting problems, teaching students the methods in a thorough and hands-on way.

The textbook has chapters dedicated to reliability models for components (reliability functions, component life cycle, two-state Markov model, stress-strength model), small systems (reliability networks, Markov models, fault/event tree analysis) and large systems (generation adequacy, state enumeration, Monte-Carlo simulation). Moreover, it contains chapters about probabilistic optimal power flow, the reliability of underground cables and cyber-physical power systems.

After reading this book, engineering students will be able to apply various methods to model the reliability of power system components, smaller and larger systems. The textbook will be accessible to power engineering students, as well as students from mathematics, computer science, physics, mechanical engineering, policy & management, and will allow them to apply reliability analysis methods to their own areas of expertise.



Table of Contents

Introduction.- Power System Failures.- Reliability Models of Components.- Reliability Models of Small Systems.- Reliability Models of Large Systems.- Probabilistic Optimal Power Flow.- Conclusion.

Probabilistic Reliability Analysis of Power Systems: A Student’s Introduction

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    £54.99

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    Order before 4pm today for delivery by Fri 19 Jun 2026.

    A Paperback by Bart W. Tuinema, José L. Rueda Torres, Alexandru I. Stefanov

    15 in stock


      View other formats and editions of Probabilistic Reliability Analysis of Power Systems: A Student’s Introduction by Bart W. Tuinema

      Publisher: Springer Nature Switzerland AG
      Publication Date: 23/04/2021
      ISBN13: 9783030435004, 978-3030435004
      ISBN10: 3030435008

      Description

      Book Synopsis

      This textbook provides an introduction to probabilistic reliability analysis of power systems. It discusses a range of probabilistic methods used in reliability modelling of power system components, small systems and large systems. It also presents the benefits of probabilistic methods for modelling renewable energy sources. The textbook describes real-life studies, discussing practical examples and providing interesting problems, teaching students the methods in a thorough and hands-on way.

      The textbook has chapters dedicated to reliability models for components (reliability functions, component life cycle, two-state Markov model, stress-strength model), small systems (reliability networks, Markov models, fault/event tree analysis) and large systems (generation adequacy, state enumeration, Monte-Carlo simulation). Moreover, it contains chapters about probabilistic optimal power flow, the reliability of underground cables and cyber-physical power systems.

      After reading this book, engineering students will be able to apply various methods to model the reliability of power system components, smaller and larger systems. The textbook will be accessible to power engineering students, as well as students from mathematics, computer science, physics, mechanical engineering, policy & management, and will allow them to apply reliability analysis methods to their own areas of expertise.



      Table of Contents

      Introduction.- Power System Failures.- Reliability Models of Components.- Reliability Models of Small Systems.- Reliability Models of Large Systems.- Probabilistic Optimal Power Flow.- Conclusion.

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