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Uncertainty management in simulation-optimization of complex systems algorithms and applications / [electronic resource] :

  • 其他作者:
  • 其他題名:
    • Operations research/computer science interfaces series
  • 出版: Boston, MA : Springer US :Imprint: Springer
  • 叢書名: Operations research/computer science interfaces seriesv.59
  • 主題: Uncertainty (Information theory) , Economics/Management Science. , Operation Research/Decision Theory. , Operations Research, Management Science.
  • ISBN: 9781489975478 (electronic bk.) 、 9781489975461 (paper)
  • FIND@SFXID: CGU
  • 資料類型: 電子書
  • 內容註: Part I: Advanced Tutorials -- Supporting Time-Critical Decision Making with Real Time Simulations -- Metamodel-based Robust Simulation-Optimization: An Overview -- Simulation-Based Modelling of a Stochastic Equilibrium -- Part II: Uncertainty Management Using Sequential Parameter Optimization -- A Review on Global Sensitivity Analysis Methods -- Connections Among Optimization Models with Uncertainties, ABC and RBV -- Addressing Uncertainty in Complex Systems. The Case of Bio-Based Products Derived from Urban Bio-Waste Valorisation -- Part III: Methods and Applications -- Global Optimization of Simulation Based Complex Systems -- Personnel Scheduling in Queues with Time-Varying Arrival Rates: Applications of Simulation-Optimization -- Stochastic Dual Dynamic Programming Solution of a Short-Term Disaster Management Problem -- Optimal Stock Allocation in Single Echelon Inventory Systems Subject to a Service Constraint.
  • 摘要註: This book illustrates strategies to account for uncertainty in complex systems as described by computer simulations. When optimizing the performances of these systems, accounting for or neglecting uncertainty may lead to completely different results; therefore, uncertainty management is a major issue in simulation-optimization. Because of its wide field of applications, simulation-optimization issues have been addressed by different communities with different methods, and from somewhat different perspectives. Alternative approaches have been developed, also depending on the application context, without any well-established method clearly outperforming the others. The book brings together researchers from different (though interrelated) areas; namely, statistical methods, experimental design, stochastic programming, global optimization, metamodeling, and design and analysis of computer simulation experiments. The aim of this editorial work is to take advantage of such a multidisciplinary environment to give readers a much deeper understanding of the commonalities and differences of the various approaches to simulation-based optimization, especially in uncertain environments. Editors aim to offer a bibliographic reference on the topic, enabling interested readers to learn about the state-of-the-art in this research area, while also accounting for potential real-world applications. Besides researchers and scientists in the field, the primary audience for the book includes Ph.D. students, academic teachers, and practitioners. The editors have been the recipients of a European Science Foundation award (STRAT01-EW11-068) for the organization of the Strategic Workshop "Uncertainty management in simulation-optimization of complex systems: algorithms and applications", held in Rome from 9th to 12th May 2012, which foster an in-depth trans-disciplinary discussion on the topic of this book.
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  • 系統號: 005134587 | 機讀編目格式
  • 館藏資訊

    ​This book aims at illustrating strategies to account for uncertainty in complex systems described by computer simulations. When optimizing the performances of these systems, accounting or neglecting uncertainty may lead to completely different results; therefore, uncertainty management is a major issues in simulation-optimization. Because of its wide field of applications, simulation-optimization issues have been addressed by different communities with different methods, and from slightly different perspectives. Alternative approaches have been developed, also depending on the application context, without any well-established method clearly outperforming the others. This editorial project brings together — as chapter contributors — researchers from different (though interrelated) areas; namely, statistical methods, experimental design, stochastic programming, global optimization, metamodeling, and design and analysis of computer simulation experiments. Editors’ goal is to take advantage of such a multidisciplinary environment, to offer to the readers a much deeper understanding of the commonalities and differences of the various approaches to simulation-based optimization, especially in uncertain environments. Editors aim to offer a bibliographic reference on the topic, enabling interested readers to learn about the state-of-the-art in this research area, also accounting for potential real-world applications to improve also the state-of-the-practice. Besides researchers and scientists of the field, the primary audience for the proposed book includes PhD students, academic teachers, as well as practitioners and professionals. Each of these categories of potential readers present adequate channels for marketing actions, e.g. scientific, academic or professional societies, internet-based communities, and authors or buyers of related publications.​

    資料來源: Google Book
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