05715nam a2200361Ia 4500001000900000003000500009005001700014007000300031008004100034010001100075020002200086040001800108050002300126082002700149245013000176250001700306264006700323300006000390504002800450505350100478520082403979650004704803650004704850650005904897650006504956700003505021901002105056902000605077905006305083942001505146999001905161952017305180dia_7323CHAP20230317134601.0ta220117s2014 -usad fr 001 0 eng d a178527 a978-0-12-397008-4 cCHAPamxchpua aSB112.5b.W67 2014 a631.558 bW67 201422010aWorking with dynamic crop models : methods, tools and examples for agriculture and environment /cDaniel Wallach...[y otros] a2a edición aSan Diego, California, US :bElsevier :bAcademic Press,c2014 axvi, 487 páginas :bilustraciones, gráficas, tablas aIncluye bibliografías aPreface -- Section 1: Basics -- Chapter 1. Basics of Agricultural System Models -- 1 Introduction -- 2 System Models -- 3 Developing Dynamic System Models -- 4 Other Forms of System Models -- 5 Examples of Dynamic Agricultural System Models -- Exercises -- References -- Chapter 2. Statistical Notions Useful for Modeling -- 1 Introduction -- 2 Random Variable -- 3 The Probability Distribution of a Random Variable -- 4 Several Random Variables -- 5 Samples, Estimators, and Estimates -- 6 Regression Models -- 7 Bayesian Statistics -- Exercises -- References -- Chapter 3. The R Programming Language and Software -- 1 Introduction -- 2 Getting Started -- 3 Objects in R -- 4 Vectors (numerical, logical, character) -- 5 Other Data Structures -- 6 Read from and Write to File System -- 7 Control Structures -- 8 Functions -- 9 Graphics -- 10 Statistics and Probability -- 11 Advanced Data Processing -- 12 Additional Packages (libraries) -- 13 Running an External Model from R -- 14 Reducing Computing Time -- Exercises -- References -- Chapter 4. Simulation with Dynamic System Models -- 1 Introduction -- 2 Simulating Continuous Time Models (differential equation form) -- 3 Simulation of System Models in Difference Equation Form -- Exercises -- References -- Section 2: Methods -- Chapter 5. Uncertainty and Sensitivity Analysis -- 1 Introduction -- 2 A Simple Example using Uncertainty and Sensitivity Analysis -- 3 Uncertainty Analysis -- 4 Sensitivity Analysis -- 5 Recommendations -- 6 R code Used in this Chapter -- Exercises -- References -- Chapter 6. Parameter Estimation with Classical Methods (Model Calibration) -- 1 Introduction -- 2 An Overview of Model Calibration -- 3 The Statistics of Parameter Estimation -- 4 Application of Statistical Principles to System Models -- 5 Algorithms for OLS -- 6 R Functions for Parameter Estimation -- Exercises -- Models for Exercises -- References -- Chapter 7. Parameter Estimation with Bayesian Methods -- 1 Introduction -- 2 Ingredients for Implementing a Bayesian Estimation Method -- 3 Computation of Posterior Mode -- 4 Algorithms for Estimating Posterior Probability Distribution -- 5 Concluding Remarks -- Exercises -- References -- Chapter 8. Data Assimilation for Dynamic Models -- 1 Introduction -- 2 Model Specification -- 3 Filter and Smoother for Gaussian Dynamic Linear Models -- 4 Filter and Smoother for Non-Linear Models -- 5 Concluding Remarks -- Exercises -- References -- Chapter 9. Model Evaluation -- 1 Introduction -- 2 A Model as a Scientific Hypothesis -- 3 Comparing Simulated and Observed Values -- 4 From the Sample to the Population -- 5 The Predictive Quality of a Model -- 6 Summary -- 7 R Functions -- Exercises -- References -- Chapter 10. Putting It All Together in a Case Study -- 1 Introduction -- 2 Description of the Case Study -- 3 How Difficult and Time-Consuming is Each Step? -- 4 R Code Used in This Chapter -- Appendix 1. The Models Included in the ZeBook R Package: Description, R Code, and Examples of Results -- 1 Introduction -- 2 SeedWeight Model -- 3 Magarey Model -- 4 Soil Carbon Model -- 5 WaterBalance Model -- 6 Maize Crop Model -- 7 Verhulst Model -- 8 Population Age Model -- 9 Predator-Prey Model -- 10 Weed Model -- 11 EPIRICE Model -- References -- Appendix 2. An Overview of the R Package ZeBook -- 1 Introduction -- 2 Installation -- 3 Functions and Demos in the Zebook Package -- 4 How to use the ZeBook Package -- 5 List of Packages Needed -- Index2 aThis second edition of Working with Dynamic Crop Models is meant for self-learning by researchers or for use in graduate level courses devoted to methods for working with dynamic models in crop, agricultural, and related sciences. Each chapter focuses on a particular topic and includes an introduction, a detailed explanation of the available methods, applications of the methods to one or two simple models that are followed throughout the book, real-life examples of the methods from literature, and finally a section detailing implementation of the methods using the R programming language. The consistent use of R makes this book immediately and directly applicable to scientists seeking to develop models quickly and effectively, and the selected examples ensure broad appeal to scientists in various disciplines.13aCrop yieldsxMathematical models 916295413aCropsxGrowthxMathematical models916295513aCultivosxCrecimientoxModelos matemáticos 916295613aRendimiento de los cultivosxModelos matemáticos 91629571 aWallach, Daniel9120922eautor a631.558 W67 2014 aA a5232272014 -usimn 8222223322eng16 cLIBRO2ddc c178527d178527 00102ddc4051708GRALaIA_bIA_d2018-08-09eCompra Librería UACh F. 36557iConsumol0o631.558 W67 2014p1102013171r2022-01-18 00:00:00tEj. 1w2022-01-18yLIBRO