Forest Growth and Yield Modeling - Aaron R. Weiskittel - E-Book

Forest Growth and Yield Modeling E-Book

Aaron R. Weiskittel

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Beschreibung

Forest 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

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Contents

Cover

Title Page

Copyright

Preface

Acknowledgements

Chapter 1: Introduction

1.1 Model development and validation

1.2 Important uses

1.3 Overview of the book

Chapter 2: Indices of competition

2.1 Introduction

2.2 Two-Sided Competition

2.3 One-Sided Competition

2.4 Limitations

2.5 Summary

Chapter 3: Forest site evaluation

3.1 Introduction

3.2 Phytocentric Measures of Site Quality

3.3 Geocentric Measures of Site Productivity

3.4 Summary

Chapter 4: Whole-stand and size-class models

4.1 Introduction

4.2 Whole-Stand Models

4.3 Size-Class Models

4.4 Summary

Chapter 5: Tree-level models

5.1 Introduction

5.2 Single-Tree Distance-Dependent Models

5.3 Tree-List Distance-Independent Models

5.4 Summary

Chapter 6: Components of tree-list models

6.1 Introduction

6.2 Diameter Increment

6.3 Height Increment

6.4 Crown Recession

6.5 Summary

Chapter 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

Chapter 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

Chapter 9: Seeding, regeneration, and recruitment

9.1 Introduction

9.2 Seeding

9.3 Regeneration

9.4 Recruitment

9.5 Summary

Chapter 10: Linking growth models of different resolutions

10.1 Introduction

10.2 Linked Stand- and Size-Class Models

10.3 Linked Stand- and Tree-level Models

10.4 Summary

Chapter 11: Modeling silvicultural treatments

11.1 Introduction

11.2 Genetic Improvements

11.3 Early Stand Treatments

11.4 Thinning

11.5 Fertilization

11.6 Combined Thinning and Fertilization

11.7 Harvesting

11.8 Summary

Chapter 12: Process-based models

12.1 Introduction

12.2 Key Physiological Processes

12.3 Example Models

12.4 Limitations

12.5 Summary

Chapter 13: Hybrid models of forest growth and yield

13.1 Introduction

13.2 Types of Hybrid Models

13.3 Comparison to Statistical Models

13.4 Summary

Chapter 14: Model construction

14.1 Introduction

14.2 Data Requirements

14.3 Model Form

14.4 Parameter Estimation

14.5 Summary

Chapter 15: Model evaluation and calibration

15.1 Introduction

15.2 Model Criticism

15.3 Model Benchmarking

15.4 Model Calibration

15.5 Summary

Chapter 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

Chapter 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

Operational Steps of ORGANON EDIT

Operational Steps of ORGANON RUN

Index

This edition first published 2011 © 2011 by John Wiley & Sons, Ltd.

Wiley-Blackwell is an imprint of John Wiley & Sons, formed by the merger of Wiley's global Scientific, Technical and Medical business with Blackwell Publishing.

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Designations used by companies to distinguish their products are often claimed as trademarks. All brand names and product names used in this book are trade names, service marks, trademarks or registered trademarks of their respective owners. The publisher is not associated with any product or vendor mentioned in this book. This publication is designed to provide accurate and authoritative information in regard to the subject matter covered. It is sold on the understanding that the publisher is not engaged in rendering professional services. If professional advice or other expert assistance is required, the services of a competent professional should be sought.

Library of Congress Cataloging-in-Publication Data

Forest growth and yield modeling / Aaron R. Weiskittel... [et al.].

p. cm.

Includes index.

ISBN 978-0-470-66500-8 (hardback)

1. Trees–Growth–Computer simulation. 2. Forest productivity–Computer simulation.

3. Trees–Growth–Mathematical models. 4. Forest productivity–Mathematical models. I. Weiskittel, Aaron R.

SD396.F66 2011

634′.0441–dc23

2011014943

A catalogue record for this book is available from the British Library.

This book is published in the following electronic format: ePDF 9781119998525; Wiley Online Library 9781119998518; ePub 9781119971504; Mobi 9781119971511

Preface

In 1994, Jerome Vanclay published a comprehensive and definitive text on forest growth and yield modeling. Since then, significant changes in data availability, computing power, and statistical techniques have largely changed the state of forest growth and yield modeling in a rather short time period. This new book attempts to build on the successful approach of the 1994 book and provide a broad perspective on all aspects of forest growth and yield modeling.

Most foresters, students, and even researchers treat forest growth and yield models as incomprehensible and outdated black boxes that are frustrating to use and with predictions that can be inaccurate. Yet, growth and yield predictions are still central to answering a variety of practical and research questions on a daily basis, often with little appreciation of how the models actually operate, their key assumptions, and the difficulty of the task at hand. As with the previous edition, this book attempts to make growth models more accessible to a wider audience by exploring their individual components, discussing aspects of their construction, and, most importantly, describing their limitations. Specific attention is given to individual tree growth models because they are the tool most commonly used for practical decisions. For each type of growth model, several example growth models from different regions of the world are described in detail so that the differences between modeling approaches are better illustrated and the black-box nature of specific models is lessened.

The text is intended for practitioners, researchers, and students alike. Given their relative lack of coverage in other books, two detailed chapters on measuring site productivity and competition are given, which could be used in several undergraduate and graduate-level university courses. There are also individual chapters that describe whole-stand/size-class, individual tree, process-based, and hybrid models. The key growth model components discussed in detail are increment equations, static equations, mortality, and regeneration/recruitment. Other chapters include combining models of different resolutions, modeling silvicultural treatments, and potential future directions. Finally, chapters on model evaluation, model development, and model use are given to guide future efforts. The extensive bibliography should serve as a useful guide for specific references on more advanced topics.

A team of authors with a diverse background and expertise was assembled to provide a comprehensive and international perspective. The book's original author, Dr. Jerome Vanclay, provided expertise on all aspects of growth models, particularly models developed in the southern hemisphere and for tropical forests. Dr. John Kershaw, a co-author on Wiley's fourth edition of the Forest Mensuration book, brought a perspective on growth and yield models used in North America, particularly Canada. Dr. David Hann has an extensive career working on forest growth and yield models and is the developer of the ORGANON growth model, which is widely used in the US Pacific Northwest. Finally, Dr. Aaron Weiskittel has spent time working with process and hybrid models and is currently developing an individual tree growth model for the northeastern North America.

Acknowledgements

The authors acknowledge the help of many friends and colleagues during the preparation of this book. Drs. Peter Marshall (University of British Columbia), David Marshall (Weyerhaeuser Company), and Quang Cao (Louisiana State University) provided useful feedback on the content and organization of the text. Greg Johnson (Weyerhaeuser Company), Jim Goudie (Canadian Forest Service), Dr. Robert Monserud (retired, US Forest Service), Dr. Rongxia Li (University of Maine), University of Washington Stand Management Cooperative (SMC), US Forest Service, and New Brunswick Department of Natural Resources provided data useful in the construction of several figures.

Dr. Phil Radtke (Virginia Polytechnic Institute and State University), Dr. Peter Gould (US Forest Service), Dr. Laura Leites (Pennsylvania State University), Dr. Jeff Gove (US Forest Service), Dr. Martin Ritchie (US Forest Service), Dr. Jeremy Wilson (University of Maine), Dr. Thomas Ledermann (Austria Federal Forest Office), Dr. Laura Kenefic (US Forest Service), Dr. Duncan Wilson (Oklahoma State University), Matthew Russell (University of Maine), Joshua Sjostrom (University of Maine), Elijah Shank (University of Maine), and Elizabeth McGarrigle (University of New Brunswick) reviewed several chapters. Special thanks to Drs. Robert Curtis (US Forest Service), Oscar García (University of Northern British Columbia), and Dave Hyink (retired, Weyerhaeuser Company) for extensive reviews of the book. Special thanks are due Clare Lendrem for an outstanding job as copy-editor.

Finally, thanks to the encouragement, patience, and understanding of friends and family.

Chapter 1

Introduction

All models are an abstraction of reality that attempt to conceptualize key relationships of a system. Models can be both quantitative and conceptual in nature, but all models are integrators of multiple fields of knowledge. Consequently, models generally have several important and varied uses. Forest growth and yield models are no different. Foresters often have a general sense of a stand's developmental trajectory and what can be done to alter it. However, it generally takes years of experience to achieve this level of expertise and, even then, quantifying the predictions can be difficult. Forest growth models attempt to bridge this gap by providing model users the ability to predict the future condition of the forest. Ultimately, growth models are the quantitative generalizations on the knowledge of forest stand development and their response to silvicultural treatments.

Forest growth and yield models have a long, and rapidly expanding, history of development (Figure 1.1, 1.2). Their development and use has particularly increased in the last two decades, due in part to the greater availability of personal computers to perform both data analysis and complex simulations (Figure 1.2). This has resulted in a wide array of modeling approaches, each with their own advantages and disadvantages. In particular, models differ in the type of data used and the method of construction. This book attempts to provide an overview of the primary concepts involved in forest modeling, the various techniques used to represent the determinants of growth, and the techniques needed to both develop and use a growth model properly.

Figure 1.1 Number of publications on growth and yield, by publication year, based on a keyword search of the CAB Direct database (www.cabdirect.org, accessed December 21, 2010).

Figure 1.2 Key milestones in model development and associated concepts and techniques.

Although the concepts of forest growth and yield have long been a part of forestry, they have been defined and named in various ways, particularly in the US (Bruce, 1981). In this book, increment is defined as the difference between tree or stand dimensions from one time period to the next, while growth is the final dimension from one time period to the next. In other words, increment is determined by either solving a growth equation or by observing growth at two points of time (Bruce, 1981).

This book is focused on models that predict the development of a single forest stand (Figure 1.3). Although a distinction between empirical and mechanistic models is often made (e.g. Taylor et al., 2009), this is not a useful metric of differentiation, as all models are on a spectrum of empiricism. Instead, this book groups forest stand development models into four broad categories: (1) statistical models; (2) process; (3) hybrid; and (4) gap (Table 1.1; Figure 1.4).

Figure 1.3 Types of forest vegetation prediction models. Adapted from Taylor et al. (2009).

Figure 1.4 Types of forest vegetation prediction models that are focused on the stand-level.

Table 1.1 Categories of quantitative single stand forest development models and their definition, use, advantages, and disadvantages.

Statistical models rely on the collection and analysis of data that will characterize the targeted population in a manner that allows statistical variability to be estimated for parameters. The primary intent of statistical models is for prediction of forest stand development and yield over time. Process models represent key physiological processes (e.g. light interception, photosynthesis), often for understanding and exploring system behavior, which are then combined to characterize both tree and stand development. Hybrid models merge features of statistical and process models and are used both for understanding and for prediction. Gap models are designed to explore long-term ecological processes, generally for understanding interactions that control forest species succession. Models that integrate the development of multiple forest stands, such as landscape models, exist (e.g. Mladenoff, 2004), but will not be covered in this book.

Within any given model category, models differ in their resolution (both spatial and temporally), spatial dependence, and degree of determinism. Spatial resolution refers to the basic unit for predictions, with the simplest being a whole-stand approach (Chapter 4), and the individual-tree approach is the most detailed (Chapter 5). A size-class model is a compromise between the whole-stand and individual-tree approaches (Chapter 4). Some process models even have a spatial resolution of an individual leaf within a tree crown. In addition, a significant amount of effort has been made in combining predictions from models with different spatial resolutions (Chapter 10).

Temporal resolution is the basic time step for model predictions. Several process models have daily or even hourly time steps, while statistical models generally have 1- to 10-year temporal resolutions. Models also vary in their use of spatial information. Distance-dependent or spatially explicit models require spatial location information; often individual-tree x–y coordinates are needed. Distance-independent or spatially implicit models do not require this information.

Finally, models differ in their use of deterministic approaches, which means that a particular function will always return the same output return value for any given set of input values. In contrast, stochastic approaches incorporate some purely random element and will give different return values in successive runs with any given set of input values. Stochasticity can be an important element of forest modeling, as some relevant factors like natural disturbances that ultimately govern the growth and yield of a particular stand can be random or unpredictable. However, a model with too many stochastic elements can make interpretation a challenge.

Stochasticity is one approach for addressing the variability that is inherent in all aspects of modeling. Even models in fundamental sciences like physics and chemistry have purely random elements. However, biological systems are even more variable and models need to recognize the important sources. Therefore, the models examined in this book have a framework that is based upon our current biological knowledge and are parameterized with the knowledge that the parameters are uncertain.

Forest growth models have several components. At minimum, forest stand development models must represent growth (Chapter 6) and mortality (Chapter 8). Models must also have components that relate the traditional tree measurements of diameter and height to other attributes like total volume or biomass with the use of static equations (Chapter 7). Comprehensive growth models include components to predict regeneration and ingrowth (Chapter 9) and representation of silvicultural treatments (Chapter 11). In addition, understanding the key biological determinants of growth and yield, namely competition (Chapter 2) and site potential productivity (Chapter 3), is important.

1.1 Model development and validation

As with most fields, forest modeling is both an art and a science. Ideally, the development of any model involves a comprehensive understanding of the system and an approach for detecting the crucial relationships. This often means that modelers must be multidisciplinary. In addition, model development is often an iterative and collaborative effort between modelers, fundamental scientists, and model users. The process of modeling is an assessment of current understanding of forests, information needed for management, and crucial knowledge gaps.

Consequently, research questions can often be generated by assessment of model strengths and weaknesses. This also illustrates an important modeling distinction, namely the use of models for prediction versus understanding, which will be further discussed below. Although there are important general modeling philosophies like Occam's principle of parsimony, which suggests that models should be as simple as possible, but as complex as necessary (Kimmins et al., 2008), achieving this is often easier said than done.

Regardless of modeling approach, empirical data of one type or another will be required for either model construction (Chapter 14) or model evaluation (Chapter 15). Data can often vary greatly in its quality and overall usefulness for modeling. Among others, data quality is influenced by how well the data represents the population of interest, the variables collected, and the degree of measurement error, which is often an overlooked yet important determinant of predictability (e.g. Hasenauer and Monserud, 1997). The statistical tools used to construct models are continually changing and evolving. Chapter 14 provides a brief overview of the key statistical techniques in order to give a better context to statistical forest growth and yield models.

To be useful for a given purpose, a model must be representative of reality to some degree. Consequently, a variety of methods have been used to verify model predictions (Chapter 15). This has ranged from simple statistical tests to complex stochastic simulations. Each has their own merits, but, in general, models must be verified using multiple approaches to ensure full reliability. If model predictions are found to be inadequate, a larger question quickly becomes how to fix or re-calibrate the model. This can often be a complicated undertaking, but emerging approaches may simplify the process.

1.2 Important uses

Models are tools designed to be used in a variety of ways (Chapter 16). The key uses of any well-developed model are prediction and education in its broadest sense (Figure 1.5). In forestry, some key prediction roles of growth models are (1) update forest inventories; (2) assess alternative forest silvicultural systems; (3) determine the influence of disturbance agents like insects or disease; (4) estimate sustainable yield of forest products; and (5) generalize regional trends. Growth and yield information is required to make all major forest management decisions. Some of the basic decisions that require accurate growth and yield information include: (1) even-aged stand-level decisions; (2) uneven-aged stand-level decisions; (3) forest- or ownership-level decisions; and (4) regional and national decisions. The type of information needed from a forest growth and yield model to make these different decisions depends on the spatial and temporal level at which information is needed (Table 1.2).

Figure 1.5 The role of growth models in decision making, forest management, and the formation of forest policy. Adapted from Nix and Gillison (1985).

Table 1.2 Uses of growth and yield models to aid in key forest management decisions.

Type of decisionImportant factors to considerReferenceEven-aged stand-levelPlanting density; thinning strategy; fertilization strategy; species or species mix; rotation lengthHann and Brodie (1980)Uneven-aged stand-levelSustainable diameter distribution; cutting cycle length; species mix; fertilization strategy; conversion strategyHann and Bare (1979)Forest or ownership levelSchedule of stand treatments; allowable harvest; wildlife habitat; aestheticsBettinger et al. (2009)Regional or national levelCarbon sequestration potential; allowable harvest; wildlife habitatBettinger et al. (2005)

For example, a silviculturist would primarily use a growth and yield model to project the development of the stand under alternative treatment strategies such thinning or fertilization regimes. A forest planner would likely use a growth and yield model to stratify individual stands in a forest into homogeneous units, project the development of each stratum, and use a harvest scheduler to determine the optimal silvicultural system and allowable harvest. A policy-maker would generally use a growth and yield model to depict regional or national trends like carbon sequestration potential or sustainable harvest levels to set effective policies. In fact, growth models were used in the United States, by the Chicago Climate Exchange and the California Climate Action Registry, to set standards for carbon credit trading and greenhouse gas registries at regional and national scales.

Additional uses of models are the visualization of management alternatives and the assessment of forest stand dynamics on wildlife habitat and streamside conditions for fish habitat. Consequently, the implications of basing decisions on a growth and yield model at any level are often quite significant, which both model developers and users need to be aware of.

There are several complex issues facing the practice of forestry today, like assessing the effects of climate change, forest carbon neutrality, and long-term sustainability. Answering these open questions with empirical data is often difficult, requires long-term investment, or is impossible. Consequently, growth and yield models are widely used by scientists as research tools to test hypotheses and understand system behavior. For example, the ORGANON growth and yield model (Hann, 2011) has been widely used by scientists to answer several research questions on a broad array of topics ranging from forest management, planning, and economics, to conservation issues (Table 1.3).

Table 1.3 Examples of the applied uses of the ORGANON growth and yield model.

StudyPurposeForest managementMaguire et al. (1991)Examine the influence of alternative management on wood qualityWelty et al. (2002)Assess strategies for managing riparian zonesWilson and Oliver (2000)Strategies for density management to ensure stabilitySessions et al. (2004)Manage the consequences of wildfireForest planningJohnson et al. (2007a)Develop large-scale, long-term plans for usage of forested landscapesSessions et al. (2000)Develop mature forest habitatShillinger et al. (2003)Predict future timber supplyJohnson et al. (2007b)Large-scale assessment of socioeconomic effects on forest structure and timber productionEconomicsBirch and Johnson (1992)Determine the economic impact of green tree retentionFight et al. (1993)Conduct a financial analysis of pruning alternativesBusby et al. (2007)Evaluate the opportunity cost of forest certificationLatta and Montgomery (2004)Create cost-effective older stand structuresWildlifeHayes et al. (1997)Evaluate response of wildlife to thinningCalkin et al. (2002)Managing for wildlife biodiversityLichtenstein and Montgomery (2003)Assessing influence of timber management on wildlife biodiversityAndrews et al. (2005)Strategies for creating northern spotted owl nesting sitesNalle et al. (2004)Strategies for joint management of timber and wildlife

Models are good research tools as they allow the construction of what-if scenarios and experimentation with different parameter settings. In addition, the development and construction of any growth model often leads to new and interesting research questions. This is because model development largely requires making and testing key assumptions, assessing patterns, and providing full disclosure, which are all basic tenets of the scientific method. In other words, developing a model requires the processes or system being modeled to be conceptualized and understood.

Forest growth and yield models are useful tools for education, a role that ORGANON has often played (Marshall et al., 1997). This is because models require hands-on interaction, synthesis of multiple concepts, and critical thinking skills to assess the appropriateness of output. In addition, combining model prediction with visualization tools (Chapter 16) allows visual demonstration of key concepts like stand structure and stratification, which can be difficult to achieve with just words or in the field.

1.3 Overview of the book

Forest growth modeling is an evolving and comprehensive field that can be difficult to describe fully. Previous books on forest growth modeling have either become outdated (e.g. Vanclay, 1994), focused primarily on one geographic region (e.g. Hasenauer, 2006), or are specific to a particular modeling approach (e.g. Landsberg and Sands, 2011). This book attempts to provide a comprehensive overview of forest models from multiple perspectives in order to be useful to model developers, scientists, students, and model users alike.

The book is divided into 17 individual chapters that give an overview of the key concepts determining growth and yield (Chapters 2, 3), the different types of modeling approaches (Chapters 4, 5, 12, 13), and the various dimensions of developing, validating, and using a growth model (Chapter 14, 15, 16). Example models are described in detail for each modeling approach to illustrate key differences and provide information on some of the more widely used models (Table 1.4).

Table 1.4 Model name, type, resolution, distance dependence, stochasticity, region, primary species, and reference for example models considered in the text.

In particular, the components of statistical, distance-independent, individual-tree models are discussed in detail (Chapters 6, 7). Attention is given to this type of modeling approach because it has been widely adopted and extensively used for operational management planning. For example, statistical, distance-independent, individual-tree models are currently available and used throughout the United States (Crookston and Dixon, 2005), western Canada (e.g. Temesgen and LeMay, 1999), central Canada (e.g. Bokalo et al., in review), eastern Canada (e.g. Woods and Penner, 2007), central Europe (e.g. Monserud et al., 1997), and northern Europe (e.g. Hynynen et al., 2002). The approach has been preferred because it can be used in a wide range of stand structures, particularly in uneven-aged (Peng, 2000) and mixed species stands (Porté and Bartelink, 2002). Throughout the book, specific attention is given to the ORGANON growth and yield model of the United States Pacific Northwest (Hann, 2011), as it has a long history of continuous development, is applicable to a large number of conifer and hardwood species in a wide array of stand conditions, and has been rigorously tested.

It is our hope that the book can help promote a more comprehensive understanding of forest models, and guide future modeling efforts.

Chapter 2

Indices of Competition

2.1 Introduction

The degree that a site is occupied by trees, and the resulting level of competition between those trees, is a primary factor that drives the growth and yield of a stand (Curtis, 1970). Trees compete for a variety of resources including light, water, nutrients, and physical space. Competition among plants is summarized as the action on, and reaction to, their living environment (Ford and Sorrensen, 1992). As trees grow, they modify their surrounding environment and alter the ability of their neighbors to acquire resources. Consequently, competition is highly dynamic, both spatially and temporally. Tomé and Burkhart (1989) identified three primary components of competition: (1) the general environment of the tree; (2) micro-environmental and genetic influences; and (3) the influence of local neighbors.

There are many different types of competition. One of the most important distinctions is the mode of competition, which can be aboveground and belowground. Aboveground competition is primarily for light, while belowground competition is focused on soil water and nutrient acquisition. Two other types of competition generally distinguished in forestry are the species of competitor trees and the symmetry of competitive interactions. Intra-specific is competition between individuals of the same species, while inter-specific is competition between individuals of different species. Forest growth and yield models have generally just focused on intra-specific competition (Liu and Burkhart, 1994), but understanding and predicting influences of inter-specific competition is becoming increasingly important due to an emphasis on mixed-species management.

One- and two-sided competition refer to the evenness of competition in a stand (Weiner, 1990). In one-sided competition, larger trees are not affected by their smaller neighbors; while resources are shared (equally or proportionally to size) by all trees in two-sided competition (Soares and Tomé, 2003). It is commonly assumed that one-sided competition is driven by the availability of aboveground resources, and two-sided is more reflective of belowground competition (Casper and Jackson, 1997), but this is an oversimplification of the various complex processes involved, and there are likely to be several mechanisms driving competition symmetry (Schwinning and Weiner, 1998). Further, it is not possible to directly measure severity of competition at any particular point in time (Curtis, 1970). However, many growth and yield models consider both one- and two-sided indices of competition with the implicit assumption that both aboveground and belowground competition is being represented by them. In reality, modelers are attempting to quantify the level of competition experienced by a tree, and its social position within the stand, rather than describe its symmetry.

Although competition acts on individual trees, it is often described at the stand-level in forestry. Common indices of competition in forestry are ones that describe stand density or stocking. Stand density is a quantitative measure of the degree of crowding and resulting level of competition existing within the stand (Zeide, 2005). Stocking is a relative measure (usually expressed as a proportion or a percentage) of the adequacy of the stand's density for meeting the target management density (Curtis, 1970). Stockability is the inherent capability of a site to support a maximum stand density. Various indices are used to describe density, stocking, and stockability, which are incorporated to varying degrees in growth models.

Competition influences forest growth and dynamics in multiple ways. At the tree-level, competition reduces growth, particularly diameter growth, and increases both crown recession and the probability of mortality. Competition can also cause stagnation, stratification, and instability. Consequently, an index of competition must account for: (1) the of individuals; (2) the of the individuals; and (3) the of individuals. From a growth and yield modeling perspective, Munro (1974) identified two major classes of competition indices: distance-independent and distance-dependent indices. These are discussed in this chapter from both a one- and a two-sided competition perspective. Comprehensive assessment of competition indices as they relate to growth and yield models is also to be found in Biging and Dobbertin (1992; 1995) and Pretzsch (2009).

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