LEADER 04861nam 2200649 450 001 9910823773703321 005 20200520144314.0 010 $a1-5231-5487-X 010 $a1-118-59795-8 010 $a1-118-59793-1 010 $a1-118-59797-4 035 $a(CKB)4330000000006590 035 $a(EBL)4622919 035 $a(PQKBManifestationID)16432189 035 $a(PQKBWorkID)14980501 035 $a(PQKB)24407718 035 $a(DLC) 2016020558 035 $a(Au-PeEL)EBL4622919 035 $a(CaPaEBR)ebr11244266 035 $a(OCoLC)956648059 035 $a(MiAaPQ)EBC4622919 035 $a(EXLCZ)994330000000006590 100 $a20160901h20162016 uy 0 101 0 $aeng 135 $aur|n|---||||| 181 $ctxt 182 $cc 183 $acr 200 10$aNonlinear regression modeling for engineering applications $emodeling, model validation, and enabling design of experiments /$fR. Russell Rhinehart 205 $aFirst edition. 210 1$aChichester, England :$cWiley :$cASME Press,$d2016. 210 4$dİ2016 215 $a1 online resource (403 p.) 225 1 $aWiley-ASME Press Series 300 $aDescription based upon print version of record. 311 $a1-118-59796-6 320 $aIncludes bibliographical references and index. 327 $aCover; Title Page; Copyright; Contents; Series Preface; Preface; Acknowledgments; Nomenclature; Symbols; Part I Introduction; Chapter 1 Introductory Concepts; 1.1 Illustrative Example-Traditional Linear Least-Squares Regression; 1.2 How Models Are Used; 1.3 Nonlinear Regression; 1.4 Variable Types; 1.5 Simulation; 1.6 Issues; 1.7 Takeaway; Exercises; Chapter 2 Model Types; 2.1 Model Terminology; 2.2 A Classification of Mathematical Model Types; 2.3 Steady-State and Dynamic Models; 2.4 Pseudo-First Principles-Appropriated First Principles; 2.5 Pseudo-First Principles-Pseudo-Components 327 $a2.6 Empirical Models with Theoretical Grounding2.7 Empirical Models with No Theoretical Grounding; 2.8 Partitioned Models; 2.9 Empirical or Phenomenological?; 2.10 Ensemble Models; 2.11 Simulators; 2.12 Stochastic and Probabilistic Models; 2.13 Linearity; 2.14 Discrete or Continuous; 2.15 Constraints; 2.16 Model Design (Architecture, Functionality, Structure); 2.17 Takeaway; Exercises; Part II Preparation for Underlying Skills; Chapter 3 Propagation of Uncertainty; 3.1 Introduction; 3.2 Sources of Error and Uncertainty; 3.3 Significant Digits; 3.4 Rounding Off 327 $a3.5 Estimating Uncertainty on Values3.6 Propagation of Uncertainty-Overview-Two Types, Two Ways Each; 3.7 Which to Report? Maximum or Probable Uncertainty; 3.8 Bootstrapping; 3.9 Bias and Precision; 3.10 Takeaway; Exercises; Chapter 4 Essential Probability and Statistics; 4.1 Variation and Its Role in Topics; 4.2 Histogram and Its PDF and CDF Views; 4.3 Constructing a Data-Based View of PDF and CDF; 4.4 Parameters that Characterize the Distribution; 4.5 Some Representative Distributions; 4.6 Confidence Interval; 4.7 Central Limit Theorem; 4.8 Hypothesis and Testing 327 $a4.9 Type I and Type II Errors, Alpha and Beta4.10 Essential Statistics for This Text; 4.11 Takeaway; Exercises; Chapter 5 Simulation; 5.1 Introduction; 5.2 Three Sources of Deviation: Measurement, Inputs, Coefficients; 5.3 Two Types of Perturbations: Noise (Independent) and Drifts (Persistence); 5.4 Two Types of Influence: Additive and Scaled with Level; 5.5 Using the Inverse CDF to Generate n and u from UID(0, 1); 5.6 Takeaway; Exercises; Chapter 6 Steady and Transient State Detection; 6.1 Introduction; 6.2 Method; 6.3 Applications; 6.4 Takeaway; Exercises 327 $aPart III Regression, Validation, DesignChapter 7 Regression Target - Objective Function; 7.1 Introduction; 7.2 Experimental and Measurement Uncertainty-Static and Continuous Valued; 7.3 Likelihood; 7.4 Maximum Likelihood; 7.5 Estimating x and y Values; 7.6 Vertical SSD-A Limiting Consideration of Variability Only in the Response Measurement; 7.7 r-Square as a Measure of Fit; 7.8 Normal, Total, or Perpendicular SSD; 7.9 Akaho's Method; 7.10 Using a Model Inverse for Regression; 7.11 Choosing the Dependent Variable; 7.12 Model Prediction with Dynamic Models 327 $a7.13 Model Prediction with Classification Models 410 0$aWiley-ASME Press Series 606 $aRegression analysis$xMathematical models 606 $aEngineering$xMathematical models 615 0$aRegression analysis$xMathematical models. 615 0$aEngineering$xMathematical models. 676 $a620.001/519536 700 $aRhinehart$b R. Russell$f1946-$01682578 801 0$bMiAaPQ 801 1$bMiAaPQ 801 2$bMiAaPQ 906 $aBOOK 912 $a9910823773703321 996 $aNonlinear regression modeling for engineering applications$94052804 997 $aUNINA