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Performance modeling of automated manufacturing systemsJune 1992
Publisher:
  • Prentice-Hall, Inc.
  • Division of Simon and Schuster One Lake Street Upper Saddle River, NJ
  • United States
ISBN:978-0-13-658824-5
Published:01 June 1992
Pages:
592
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Abstract

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Cited By

  1. Boulas K, Dounias G and Papadopoulos C (2023). A hybrid evolutionary algorithm approach for estimating the throughput of short reliable approximately balanced production lines, Journal of Intelligent Manufacturing, 34:2, (823-852), Online publication date: 1-Feb-2023.
  2. Shailesh T, Nayak A and Prasad D (2022). Transformation of sequence diagram to timed Petri net using Atlas Transformation Language metamodel approach, Journal of Software: Evolution and Process, 34:1, Online publication date: 18-Jan-2022.
  3. Duan S, Kang L and Haber R (2022). An Enhanced Multiobjective Double Row Layout Model considering the Machine Breakdowns, Computational Intelligence and Neuroscience, 2022, Online publication date: 1-Jan-2022.
  4. Velez M, Jamshidi P, Siegmund N, Apel S and Kästner C White-Box Analysis over Machine Learning Proceedings of the 43rd International Conference on Software Engineering, (1072-1084)
  5. Punitha V, Mala C and Rajagopalan N (2020). A novel deep learning model for detection of denial of service attacks in HTTP traffic over internet, International Journal of Ad Hoc and Ubiquitous Computing, 33:4, (240-256), Online publication date: 1-Jan-2020.
  6. Biagi M, Carnevali L, Tadano K and Vicario E Evaluation of stochastic bounds on the remaining completion time of products in a buffered sequential workflow 2018 IEEE 23rd International Conference on Emerging Technologies and Factory Automation (ETFA), (456-463)
  7. Feng W, Zheng L and Li J Scheduling policies in multi-product manufacturing systems with sequence-dependent setup times Proceedings of the Winter Simulation Conference, (2055-2066)
  8. Costelha H and Lima P Modelling, analysis and execution of multi-robot tasks using petri nets Proceedings of the 7th international joint conference on Autonomous agents and multiagent systems - Volume 3, (1187-1190)
  9. García E, Correcher A, Morant F, Quiles E and Blasco R (2005). Modular Fault Diagnosis Based on Discrete Event Systems, Discrete Event Dynamic Systems, 15:3, (237-256), Online publication date: 1-Sep-2005.
  10. Desharnais J, Gupta V, Jagadeesan R and Panangaden P (2003). Approximating labelled Markov processes, Information and Computation, 184:1, (160-200), Online publication date: 10-Jul-2003.
  11. Desharnais J, Panangaden P, Jagadeesan R and Gupta V Approximating Labeled Markov Processes Proceedings of the 15th Annual IEEE Symposium on Logic in Computer Science
  12. ACM
    Gupta V, Jagadeesan R and Panangaden P Stochastic processes as concurrent constraint programs Proceedings of the 26th ACM SIGPLAN-SIGACT symposium on Principles of programming languages, (189-202)
  13. Ciardo G, Nicol D and Trivedi K (1999). Discrete-Event Simulation of Fluid Stochastic Petri Nets, IEEE Transactions on Software Engineering, 25:2, (207-217), Online publication date: 1-Mar-1999.
  14. Delen D, Benjamin P and Erraguntla M Integrated modeling and analysis generator environment (IMAGE) Proceedings of the 30th conference on Winter simulation, (1401-1408)
  15. Ciardo G, Nicol D and Trivedi K Discrete-event simulation of fluid stochastic Petri nets Proceedings of the 6th International Workshop on Petri Nets and Performance Models
  16. Seifert R, Kay M and Wilson J Evaluation of AGV routing strategies using hierarchical simulation Proceedings of the 27th conference on Winter simulation, (850-856)
  17. ACM
    D'Souza K, Banaszak Z and Wojcik R Modeling and control of deadlocks in a flexible machining cell Proceedings of the 25th conference on Winter simulation, (923-929)
  18. Su W, Xie X, Li J and Zheng L An energy and productivity optimization model in Bernoulli serial lines 2016 IEEE International Conference on Automation Science and Engineering (CASE), (855-860)
Contributors
  • Indian Institute of Science
  • Indian Institute of Science

Reviews

Jaak Tepandi

Manufacturing produces real wealth for our society, is a source of employment for the population, and constitutes the backbone of the service sector. Recent years have seen the emergence of automated manufacturing systems (AMSs), driven by demand for increased productivity, flexibility, and competitiveness. These systems are highly capital-intensive, so it is important to be able to plan, predict, and manage their performance. Performance evaluation offers methods and tools for the design and operation of high-performance AMSs. Performance evaluation methods for AMSs fall into two classes: performance measurement of existing systems and performance modeling. The latter can be either simulation or analytical. Traditionally, discrete event simulation has been widely accepted and employed in factory environments for the study of issues in design and operation. Meanwhile, analytical modeling tools are becoming increasingly popular and have emerged as an alternative to simulation. Discrete event dynamic system models can be broadly classified as qualitative or quantitative. This book is mainly concerned with the quantitative analytical modeling of AMSs. The book has an introduction, four major chapters, and an epilogue. Chapter 2 provides a logical overview of AMSs, covering the hardware, the software, and integration issues. It presents the evolution of manufacturing, the product cycle in manufacturing plants, different types of plant configurations, performance measures of manufacturing systems, the building blocks of AMSs, plant layouts, flexible manufacturing systems, and computer control and integration issues. Chapter 3 gives a detailed presentation of Markov chain models. The chapter starts with preliminary material on memoryless random variables, stochastic processes, and the Poisson process. The authors then discuss discrete and continuous time Markov chain models, the Markov model of a transfer line, birth and death processes in manufacturing, time-reversible Markov chains, modeling of deadlocks, semi-Markov processes, and transient analysis of manufacturing systems. The chapter concludes with an overview of computational issues in Markov analysis. Chapter 4, on queueing models, deals with queues and queueing networks. The topics covered under queues are Little's law, M/M/1 queues, M/M/m queues, batch arrival queueing systems, queues with general distributions, and queues with breakdowns. The chapter includes a case study on analyzing the performance of a flexible machine center, using polling models. Under queueing networks, the authors cover Little's law, open and closed queueing networks, product form networks, queueing networks with blocking, approximate analysis of queueing systems, and performability analysis. Petri net models are the subject of chapter 5. The discussion starts with the classical Petri net models and proceeds to stochastic and generalized stochastic Petri nets, a case study of a Kanban production system, deadlock analysis using Petri nets, and extended classes of timed Petri nets. The chapter concludes with a discussion of integrated models that use both queueing networks and Petri nets. The epilogue is dedicated to important issues in AMS modeling and design that fall outside the scope of this text. The audience for this book comprises engineering students at the senior undergraduate level, first-year graduate students , research and development engineers, and factory managers. The authors have succeeded in making this work a textbook in the true sense. The book is interesting to read, well presented, and well illustrated, with a sufficient selection of exercises and references as well as an adequate index. Some exceptions to this general impression include the sometimes superfluous use of abbreviations in the text and an overloaded flowchart for the automated operation of flexible manufacturing systems in Figure 2.22. The book would also benefit from some general introductory references to database management systems, selected from the large number of textbooks available. In summary, this excellent textbook fulfills its basic goal of introducing analytical modeling tools and their use during the life cycle of an AMS.

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