書名: SIMULATION-BASED ENGINEERING OF COMPLEX SYSTEMS (2版)
作者: CLYMER
版次: 2
ISBN: 9780470401293
出版社: John Wiley
出版日期: 2009/02
書籍開數、尺寸: 23.6x16.3x3.3
頁數: 503
定價: 1900
售價: 1900
庫存: 有庫存: >=5
LINE US! 詢問這本書 團購優惠、書籍資訊 等

付款方式: 超商取貨付款 line pay
信用卡 全支付
線上轉帳 Apple pay
物流方式: 超商取貨
宅配
門市自取

詳細資訊

【簡介】 A hands-on approach to understanding, designing, analyzing, and evaluating complex systems During the last few years, Simulation-Based Systems Engineering (SBSE) has become an essential tool for the design and evaluation of complex systems. This is the first book to cover the basic principles of complex systems through the use of hands-on experimentation using an icon-based simulation tool. Utilizing the accompanying software tool ExtendSim, which works with the OpEMCSS library, readers are invited to engage in simulation-based experiments that demonstrate the principles of complex systems with an emphasis on design, analysis, and evaluation. A number of real-world examples are included to demonstrate how to model complex systems across a range of engineering, business, societal, economic, and scientific disciplines. Beginning with an introduction to SBSE, the book covers: Simulation concepts and building blocks Systems design and model development Markov model development Reliability processes Queuing theory in SBSE Rule-based learning and adaptation Agent motion and spatial interactions Multi-agent system of systems Assuming only a very basic background in problem-solving ability, this book is ideal as a textbook for students (a homework solution manual is also available) and as a reference book for practitioners in industry. 【目錄】 Preface xiii Acknowledgments xvii Overview xix 1 Introduction to Simulation-Based Systems Engineering 1 1.1 Definition of Complex Systems 3 1.1.1 Exercise: Model a Goal-Oriented Activity 6 1.1.2 Agent-Based System Architectures 9 1.1.3 Simulation and AI-Based System Design 11 1.1.4 Expansionism Versus Reductionism 12 1.1.5 Summary 15 1.2 Using Simulation to Understand Complex Systems 15 1.2.1 ExtendSim Discrete-Event Simulation User Environment and OpEMCSS Overview 15 1.2.2 Simulation Model Development Procedure 17 1.2.3 Simulation Programs: How Serial and Parallel Process Models Work 21 1.2.4 Sensitivity Analysis 29 1.3 Bringing Complex Systems into Being 30 1.3.1 Definition of Systems Engineering 31 1.3.2 Levels of System Description 33 1.3.3 Systems Engineering Life Cycle 35 1.3.4 Simulation of the System Development Process 38 1.3.5 Simulation-Based Systems Engineering 46 1.4 Summary 47 Problems 50 References 53 Bibliography 53 2 Simulation Concepts and Building Blocks 55 2.1 Statistical Aspects of Simulation 56 2.1.1 Convergence Theorems 57 2.1.2 Uniform Random-Number Generator 58 2.1.3 Discrete Probability Distributions 59 2.1.4 Goodness-of-Fit Test 60 2.1.5 Generation of Random Variables 62 2.2 OpEM Graphical Modeling Language 64 2.2.1 Petri Nets 65 2.2.2 OpEM Graphs 68 2.3 OpEM Parallel Process Simulations 72 2.3.1 Sequential Process Event 76 2.3.2 Split Event 78 2.3.3 Complex Assemble Event 80 2.3.4 Simple Assemble Event 83 2.3.5 Comparison of Petri Nets and OpEM Graphs 84 2.4 OpEMCSS Simulation of Context-Sensitive Systems 86 2.4.1 Types of CSS Process Interactions and Timeline Analysis 86 2.4.2 How ExtendSim Has Been Modified to Implement the OpEM Language 88 2.4.3 How OpEMCSS Blocks Work Together to Model an Example CSS 90 2.4.4 Summary 98 2.5 An OpEM Example of Preemptive Scheduling 99 2.6 Summary 112 Problems 114 References 118 Bibliography 119 3 Systems Design and Model Development 120 3.1 Inventory System 122 3.1.1 Inventory System Model Development 122 3.1.2 Inventory System Model Description 125 3.1.3 Inventory System Model Operation 132 3.1.4 Summary 132 3.2 Part Production System 134 3.2.1 Part Production System Model Development 134 3.2.2 Part Production System Model Description 137 3.2.3 Part Production System Model Operation 141 3.3 Seaport System 142 3.3.1 Seaport System Model Development 142 3.3.2 Seaport System Model Description 145 3.3.3 Seaport System Model Operation 151 3.4 Advanced Features of OpEMCSS 153 3.4.1 Expanded Split and Assemble Operation 154 3.4.2 Preemption of a Resource 167 3.4.3 “Wake Up” a Passivated Process 172 3.5 Summary 172 Problems 174 References 176 4 Markov Model Development 177 4.1 Discrete-Time Markov Chains 178 4.1.1 Stochastic Processes 178 4.1.2 Transition Probabilities 179 4.1.3 Properties of a Finite-State Markov Chain 180 4.1.4 Development of [P]n 181 4.1.5 Steady-State Solution 182 4.1.6 First-Passage Times 187 4.2 Continuous-Time Markov Processes 189 4.2.1 Poisson Distribution 189 4.2.2 Kolmogorov Differential Equations 191 4.2.3 Transition Intensities for Poisson Process 194 4.2.4 Transition Matrix for Several Examples 196 4.2.5 Markov Process Model of a Queuing System 199 4.2.6 Summary of Assumptions 203 4.3 Semi-Markov Flow Graphs 205 4.3.1 Definitions 206 4.3.2 Laplace Transforms 207 4.3.3 Flow-Graph Reduction 210 4.3.4 Thief of Baghdad Process 213 4.3.5 General Reaction Time Distributions 215 4.3.6 Summary of Flow-Graph Techniques 217 4.4 System Design and Evaluation Using Markov Models 217 4.4.1 Data Communications System Design Problem 217 4.4.2 Markov Model of Sequential Link Operation 219 4.4.3 Markov Model of Parallel Link Operation 222 4.4.4 Sensitivity of Link Effectiveness 227 4.4.5 Conclusions 232 Problems 234 References 237 Bibliography 237 5 Reliability Processes 238 5.1 Definitions 238 5.1.1 System 238 5.1.2 Multidimensional System Analysis 239 5.1.3 Equipment Dependency Diagrams 240 5.1.4 Reliability 241 5.1.5 Reliability Process 243 5.2 Reliability of Nonmaintained Module Groups 244 5.2.1 Method 244 5.2.2 Series Module Group 245 5.2.3 Parallel Module Group 246 5.2.4 Series–Parallel Module Group 246 5.2.5 Four-Module Group 247 5.2.6 Logic Techniques 248 5.3 Availability of Maintained Module Groups 249 5.3.1 Method 249 5.3.2 Series Module Group 249 5.3.3 Parallel Module Group 252 5.3.4 Analysis of Maintained Module Groups 253 5.4 Dependence of System Performance on Reliability 253 5.4.1 System of Three Radars and Two Detection Consoles 253 5.4.2 State-Space Equation 254 5.4.3 Validation of Model Results 256 5.4.4 Sensitivity Curve 257 5.5 Summary 258 Problems 258 Bibliography 260 6 Queuing Theory in Simulation-Based Systems Engineering 261 6.1 Single-Queue, Single-Server Process 262 6.1.1 Supermarket Checkout Stand 262 6.1.2 Parallel Process 263 6.1.3 Operational Sequence 265 6.1.4 Finite Queue Model 266 6.1.5 Infinite Queue Model 271 6.1.6 Gamma Service Time 274 6.2 Single-Queue, Two-Server Process 275 6.2.1 Bank 275 6.2.2 Parallel Process 275 6.2.3 Operational Sequence 277 6.2.4 Finite Queue Model 278 6.2.5 Infinite Queue Model 280 6.3 Comparison of Simulation, Markov Process, and Queuing Theory Models 281 Problems 283 Bibliography 285 7 Rule-Based Learning and Adaptation 286 7.1 Classifier Systems 287 7.2 Induction of Decision-Making Rules 289 7.2.1 Overview of the Rule Induction Problem 289 7.2.2 Situational Universe for a Classifier System 291 7.2.3 Lessons Learned from Previous Research 293 7.2.4 Theory of Inductive Learning of Decision-Making Rules 295 7.2.5 Summary of Induction Methods and Theory 297 7.3 Supervisory Rule Learning 297 7.3.1 Classifier Event Action Block 297 7.3.2 Induction Process Model 302 7.4 Generation of Planning Rules 308 7.4.1 Prisoner’s Dilemma 308 7.4.2 Finite-State Machine Model 313 7.4.3 Grid World Model 318 7.5 Summary 320 7.6 Conclusions 322 References 323 Bibliography 324 8 Agent Motion and Spatial Interactions 325 8.1 Discrete-Event Model of Continuous Motion 326 8.1.1 Range Closing/Range Not Closing Interaction 326 8.1.2 Angle Closing/Angle Not Closing Interaction 331 8.1.3 Intercept Interaction 334 8.2 Agent Motion and Spatial Interaction Blocks 335 8.2.1 Initialize Agent Event Action 335 8.2.2 Change Agent Event Action 336 8.2.3 Agent Interaction Event Action 338 8.2.4 Animation Event Action 342 8.3 World Model 343 8.4 Sonar Array System 354 8.5 Summary 366 Bibliography 368 9 Multiagent System of Systems 369 9.1 Agents and Agent Interactions 370 9.1.1 Agents 370 9.1.2 Agent Interactions in System of Systems 373 9.1.3 Bringing Multiagent Systems of Systems into Being 375 9.2 Elevator System 376 9.2.1 Person Arrival Process 376 9.2.2 Person Process 378 9.2.3 Elevator Motion Process 379 9.2.4 Evaluation of Elevator System Performance 382 9.3 Distributed, Vehicle Traffic Light Control System 383 9.3.1 Traffic Control Agent 384 9.3.2 Fuzzy Control 387 9.3.3 Simulation of a Vehicle Traffic Control Network 388 9.3.4 Results of Simulation Runs 392 9.4 Communication Blocks for Multiagent Systems 394 9.4.1 Memory Event Action Block 394 9.4.2 Analysis Event Action Block 397 9.4.3 Send Message Event Action Block 400 9.4.4 Plan Execution Event Action Block 401 9.4.5 Message Passing in a Multiagent System 402 9.5 Summary 406 References 408 Bibliography 409 Appendix A OpEMCSS User’s Manual 410 A.1 Minimum Requirements for Successful CSS Modeling Languages 411 A.2 Modeling Languages Survey 412 A.2.1 Petri Nets 412 A.2.2 IDEF0 Diagrams 412 A.2.3 ExtendSim Queuing Models 413 A.2.4 Modeling Languages Survey Summary 413 A.3 Operational Evaluation Modeling (OpEM) Historical Overview 413 A.4 OpEMCSS Familiarization Exercises 416 A.4.1 How to Set Up ExtendSim LT-RunTime 416 A.4.2 ExtendSim Environment Overview 418 A.4.3 Block Familiarization Exercises 424 A.5 Overview of Context-Sensitive Event Action Blocks 433 A.5.1 Message Event Action Block 433 A.5.2 Context-Sensitive Event Action Block 434 A.5.3 Event Action Block 434 A.6 Summary 434 References 435 Appendix B Overview of OpEMCSS Library Blocks 436 B.1 Definition of OpEMCSS Block Categories 436 B.2 Description of OpEMCSS Blocks by Category 437 B.2.1 Category 1 437 B.2.2 Category 2 439 B.2.3 Category 3 441 B.2.4 Category 4 444 B.2.5 Category 5 454 B.2.6 Category 6 464 B.2.7 Category 7 469 B.2.8 Category 8 473 B.2.9 Category 9 475 B.3 Summary of OpEMCSS Block Categories 476 Appendix C Programming OpEMCSS Special Blocks 477 C.1 Special Event Action Block Dialogs 478 C.2 Execute Event Action Procedure 478 C.3 Summary 484 Index 487

為您推薦

MODELING AND SIMULATION BASED SYSTEMS ENGINEERING

MODELING AND SIMULATION BASED SYSTEMS ENGINEERING

類似書籍推薦給您

Modeling and simulation (M&S) based systems engineering (MSBSE) is the extension of MBSE, which enhances the value of MBSE and the ability of digitally evaluating and optimizing the whole system through comprehensive applications of M&S technologies. This book puts together the recent research in MSBSE, and hopefully this will provide the researchers and engineers with reference cases in M&S technologies to support the R&D of complex products and systems. Sample Chapter(s) Preface Chapter 1: Introduction Contents: Introduction (Lin Zhang and Chun Zhao) Using Modeling and Simulation and Artificial Intelligence to Improve Complex Adaptive System Engineering (Andrew Talk, Philip Barry and Steven C Doskey) DEVS and MBSE: A Review (Bernard P Zeigler) XDEVS: A Hybrid System Modeling Framework (Kunyu Xie, Lin Zhang, Yuanjun Laili and Xiaohan Wang) An Integrated Intelligent Modeling and Simulation Language for Model-Based Systems Engineering (Lin Zhang, Fei Ye, Kunyu Xie, Pengfei Gu, Xiaohan Wang, Yuanjun Laili, Chun Zhao, Xuesong Zhang, Minjie Chen, Tinggu Lin and Zhen Chen) Modeling for Heterogeneous Objects Based on X Language: A Modeling Method of Algorithm-Hardware (Yue Liu and Chun Zhao) Data-Driven Modeling Method with Reverse Process (Guodong Yi, Lifan Yi, Zaizhao Zhang and Chuihui Li) Simulation-Oriented Model Reuse in Cyber-Physical Systems: A Method Based on Constrained Directed Graph (Wenzheng Liu, Heming Zhang, Chao Tang, Shuangfei Wu and Hongguang Zhu) Model Maturity Towards Modeling and Simulation: Concepts, Index System Framework and Evaluation Method (Lin Zhang, Ying Liu, Yuanjun Laili and Weicun Zhang) FPGA-Based Edge Computing: Task Modeling for Cloud-Edge Collaboration (Chuan Xiao and Chun Zhao) Hybrid Intelligent Modeling Approach for Online Predicting and Simulating Surface Temperature of HVs (Ming Tie, Hong Fang, Jianlin Wang and Weihua Chen) Knowledge-Driven Material Design Platform Based on the Whole-Process Simulation and Modeling (Gongzhuang Peng, Tie Li, Xiang Zhai, Wenzheng Liu and Heming Zhang) A Model Validation Method Based on the Orthogonal Polynomial Transformation and Area Metric (Huan Zhang, Wei Li, Ping Ma and Ming Yang) A Mixed Reality Simulation Evaluation Method for Complex System (Lijun Wang, Yang Xue, Yi Lv, Yufen Wu, Dawei Wang and Shuhong Xu) Readership: Graduate students, engineers and researchers specializing in the fields of System Engineering.

原價: 3028 售價: 2877 現省: 151元
立即查看
Modeling and Simulation-Based Systems Engineering Handbook 2015 (TAYLOR)

Modeling and Simulation-Based Systems Engineering Handbook 2015 (TAYLOR)

類似書籍推薦給您

原價: 1850 售價: 1850 現省: 0元
立即查看
A PRACTICAL APPROACH TO QUANTITATIVE VALIDATION OF PATIENT-REPORTED OUTCOMES: A SIMULATION-BASED GUIDE USING SAS

A PRACTICAL APPROACH TO QUANTITATIVE VALIDATION OF PATIENT-REPORTED OUTCOMES: A SIMULATION-BASED GUIDE USING SAS

類似書籍推薦給您

DESCRIPTION A Simulation-Based Guide Using SAS In A Practical Approach to Quantitative Validation of Patient-Reported Outcomes, two distinguished researchers, with 50 years of collective research experience and hundreds of publications on patient-centered research, deliver a detailed and comprehensive exposition on the critical steps required for quantitative validation of patient-reported outcomes (PROs). The book provides an incisive and instructional explanation and discussion on major aspects of psychometric validation methodology on PROs, especially relevant for medical applications sponsored by the pharmaceutical industry, where SAS is the primary software, and evaluated in regulatory and other healthcare environments. Central topics include test-retest reliability, exploratory and confirmatory factor analyses, construct and criterion validity, responsiveness and sensitivity, interpretation of PRO scores and findings, and meaningful within-patient change and clinical important difference. The authors provide step-by-step guidance while walking readers through how to structure data prior to a PRO analysis and demonstrate how to implement analyses with simulated examples grounded in real-life scenarios. Readers will also find: A thorough introduction to patient-reported outcomes, including their definition, development, and psychometric validation Comprehensive explorations of the validation workflow, including discussions of clinical trials as a data source for validation and the validation workflow for single and multi-item scales In-depth discussions of key concepts related to a validation of a measurement scale Special attention is given to the US Food and Drug Administration (FDA) guidance on development and validation of the PROs, which lay the foundation and inspiration for the analytic methods executed A Practical Approach to Quantitative Validation of Patient-Reported Outcomes is a required reference that will benefit psychometricians, statisticians, biostatisticians, epidemiologists, health service and public health researchers, outcome research scientists, regulators, and payers. STATISTICS IN PRACTICE A series of practical books outlining the use of statistical techniques in a wide range of applications areas: HUMAN AND BIOLOGICAL SCIENCES EARTH AND ENVIRONMENTAL SCIENCES INDUSTRY, COMMERCE AND FINANCE

原價: 1850 售價: 1850 現省: 0元
立即查看
Simulation-Based Lean Six-Sigma and Design for Six-Sigma 2006 <JW> 0-471-69490-8

Simulation-Based Lean Six-Sigma and Design for Six-Sigma 2006 <JW> 0-471-69490-8

類似書籍推薦給您

原價: 3513 售價: 3513 現省: 0元
立即查看
Electromagnetic Simulation Techniques Based on the FDTD Method 2009 <JW> 978-0-470-50203-7

Electromagnetic Simulation Techniques Based on the FDTD Method 2009 <JW> 978-0-470-50203-7

類似書籍推薦給您

原價: 1600 售價: 1600 現省: 0元
立即查看