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OverviewForest Growth and Yield Modeling synthesizes current scientific literature and provides insights in how models are constructed. Giving suggestions for future developments, and outlining keys for successful implementation of models the book provides a thorough and up-to-date, single source reference for students, researchers and practitioners requiring a current digest of research and methods in the field. The book describes current modelling approaches for predicting forest growth and yield and explores the components that comprise the various modelling approaches. It provides the reader with the tools for evaluating and calibrating growth and yield models and outlines the steps necessary for developing a forest growth and yield model. Single source reference providing an evaluation and synthesis of current scientific literature Detailed descriptions of example models Covers statistical techniques used in forest model construction Accessible, reader-friendly style Full Product DetailsAuthor: Aaron R. Weiskittel (University of Maine) , David W. Hann (Oregon State University) , John A. Kershaw (University of New Brunswick) , Jerome K. Vanclay (Southern Cross University)Publisher: John Wiley & Sons Inc Imprint: John Wiley & Sons Inc Dimensions: Width: 17.30cm , Height: 2.70cm , Length: 25.20cm Weight: 0.875kg ISBN: 9780470665008ISBN 10: 0470665009 Pages: 432 Publication Date: 28 July 2011 Audience: Professional and scholarly , Professional & Vocational Format: Hardback Publisher's Status: Active Availability: Out of stock ![]() The supplier is temporarily out of stock of this item. It will be ordered for you on backorder and shipped when it becomes available. Table of ContentsPreface. Acknowledgements. 1 Introduction. 1.1 Model development and validation. 1.2 Important uses. 1.3 Overview of the book. 2 Indices of competition. 2.1 Introduction. 2.2 Two-sided competition. 2.2.1 Distance-independent. 2.2.2 Distance-dependent. 2.3 One-sided competition. 2.3.1 Distance-independent. 2.3.2 Distance-dependent. 2.4 Limitations. 2.4.1 Low predictive power. 2.4.2 Distance-independent vs. distance-dependent. 2.4.3 Influence of sampling design. 2.5 Summary. 3 Forest site evaluation. 3.1 Introduction. 3.2 Phytocentric measures of site quality. 3.2.1 Site index. 3.2.2 Plant indicators. 3.2.3 Other phytocentric measures. 3.3 Geocentric measures of site productivity. 3.3.1 Physiographic measures. 3.3.2 Climatic measures. 3.3.3 Soil measures. 3.4 Summary. 4 Whole-stand and size-class models. 4.1 Introduction. 4.2 Whole-stand models. 4.2.1 Yield tables and equations. 4.2.2 Compatible growth and yield equations. 4.2.3 Systems of equations. 4.2.4 State-space models. 4.2.5 Transition matrix models. 4.3 Size-class models. 4.3.1 Stand table projection. 4.3.2 Matrix models. 4.3.3 Diameter-class models. 4.3.4 Cohort models. 4.4 Summary. 5 Tree-level models. 5.1 Introduction. 5.2 Single-tree distance-dependent models. 5.2.1 Example models. 5.3 Tree-list distance-independent models. 5.3.1 Example models. 5.4 Summary. 6 Components of tree-list models. 6.1 Introduction. 6.2 Diameter increment. 6.2.1 Potential diameter increment equations with multiplicative modifiers. 6.2.2 Realized diameter increment equations. 6.3 Height increment. 6.3.1 Potential height increment equations with multiplicative modifiers. 6.3.2 Realized height increment equations. 6.4 Crown recession. 6.4.1 Individual-tree crown recession models. 6.4.2 Branch-level crown recession models. 6.5 Summary. 7 Individual-tree static equations. 7.1 Introduction. 7.2 Total height. 7.3 Crown length. 7.4 Crown width and profile. 7.5 Stem volume and taper. 7.6 Biomass. 7.7 Use of static equations to predict missing values. 7.8 Summary. 8 Mortality. 8.1 Introduction. 8.2 Stand-level mortality. 8.3 Individual-tree-level mortality. 8.4 Mechanistic models of mortality. 8.5 Development and application of mortality equations. 8.6 Summary. 9 Seeding, regeneration, and recruitment. 9.1 Introduction. 9.2 Seeding. 9.2.1 Flowering and pollination. 9.2.2 Seed production. 9.2.3 Seed dispersal. 9.2.4 Seed germination. 9.3 Regeneration. 9.4 Recruitment. 9.4.1 Static. 9.4.2 Dynamic. 9.5 Summary. 10 Linking growth models of different resolutions. 10.1 Introduction. 10.2 Linked stand- and size-class models. 10.2.1 Parameter recovery. 10.2.2 Modified stand table projection. 10.3 Linked stand- and tree-models. 10.3.1 Disaggregation. 10.3.2 Constrained. 10.3.3 Combined. 10.4 Summary. 11 Modeling silvicultural treatments. 11.1 Introduction. 11.2 Genetic improvements. 11.2.1 Stand-level. 11.2.2 Tree-level. 11.3 Early stand treatments. 11.3.1 Stand-level. 11.3.2 Tree-level. 11.4 Thinning. 11.4.1 Stand-level. 11.4.2 Tree-level. 11.5 Fertilization. 11.5.1 Stand-level. 11.5.2 Tree-level. 11.6 Combined thinning and fertilization. 11.6.1 Stand-level. 11.6.2 Tree-level. 11.7 Harvesting. 11.7.1 Stand-level. 11.7.2 Tree-level. 11.8 Summary. 12 Process-based models. 12.1 Introduction. 12.2 Key physiological processes. 12.2.1 Light interception. 12.2.2 Photosynthesis. 12.2.3 Stomatal conductance. 12.2.4 Respiration. 12.2.5 Carbon allocation. 12.2.6 Soil water and nutrients. 12.3 Example models. 12.3.1 Forest-BGC. 12.3.2 CenW. 12.3.3 BALANCE. 12.4 Limitations. 12.4.1 Initialization. 12.4.2 Parameterization. 12.4.3 Scale. 12.4.4 Sensitivity. 12.5 Summary. 13 Hybrid models of forest growth and yield. 13.1 Introduction. 13.2 Types of hybrid models. 13.2.1 Statistical growth equations with physiologically derived covariate. 13.2.2 Statistical growth equations with physiologically derived external modifier. 13.2.3 Allometric models. 13.3 Comparison to statistical models. 13.4 Summary. 14 Model construction. 14.1 Introduction. 14.2 Data requirements. 14.2.1 Stem analysis. 14.2.2 Temporary plots. 14.2.3 Permanent plots. 14.3 Model form. 14.4 Parameter estimation. 14.4.1 Regression. 14.4.2 Quantile regression. 14.4.3 Generalized linear regression models. 14.4.4 Mixed models. 14.4.5 Generalized algebraic difference approach. 14.4.6 System of equations. 14.4.7 Bayesian. 14.4.8 Nonparametric. 14.4.9 Annualization. 14.5 Summary. 15 Model evaluation and calibration. 15.1 Introduction. 15.2 Model criticism. 15.2.1 Model form and parameterization. 15.2.2 Variable selection and model simplicity. 15.2.3 Biological realism. 15.2.4 Compatibility. 15.2.5 Reliability. 15.2.6 Adaptability. 15.3 Model benchmarking. 15.3.1 Statistical tests. 15.3.2 Model error characterization. 15.4 Model calibration. 15.5 Summary. 16 Implementation and use. 16.1 Introduction. 16.2 Collection of appropriate data. 16.3 Generation of appropriate data. 16.4 Temporal scale. 16.5 Spatial scale. 16.6 Computer interface. 16.7 Visualization. 16.8 Output. 16.9 Summary. 17 Future directions. 17.1 Improving predictions. 17.2 Improving input data. 17.3 Improving software. 17.4 Summary. Bibliography. Appendix 1: List of species used in the text. Appendix 2: Expanded outline for ORGANON growth and yield model. Index.ReviewsAuthor InformationJerry Vanclay, Professor for Sustainable Forestry and Head, School of Environmental Science and Management, Southern Cross University, Australia Aaron Weiskittel, Assistant Professor of Forest Biometrics and Modelling, School of Forest Resources, University of Maine, Orono, USA John A. Kershaw, Jr., Professor of Forest Mensuration/Biometrics, Faculty of Forestry and Environmental Management, University of New Brunswick, Fredericton, Canada Tab Content 6Author Website:Countries AvailableAll regions |