
Introduction to Forestry Data Analysis with R
Chapman & Hall/CRC (Publisher)
1st Edition
Will be published approx. on 7. September 2026
Book
Hardback
630 pages
978-1-032-12028-7 (ISBN)
Description
Introduction to Forestry Data Analysis with R equips students and practitioners with the skills needed to move confidently between field measurements and modern analytical workflows. As forestry, ecology, and natural resource management become increasingly data-driven, professionals are expected not only to collect information but also to organize, analyze, visualize, and defend quantitative results. This book responds to that shift by integrating foundational forest inventory concepts with practical computing in R.
Distinct from both generic programming texts and traditional mensuration references, this volume teaches R through real forestry datasets and operational examples. The first half develops core programming skills - data wrangling, visualization, and reproducible workflows - while the second half applies these tools to forest inventory, monitoring, and estimation. Classical methods developed by forest biometricians are presented alongside transparent, step-by-step computational implementations, enabling readers to connect statistical theory with modern, repeatable analysis.
Key Features:
? Introduces R and the tidyverse using forestry-specific datasets and management questions
? Develops reproducible workflows for data import, cleaning, transformation, visualization, and reporting
? Presents forest inventory concepts including simple random, systematic, stratified, cluster, and multistage sampling
? Implements classical estimators using transparent, script-based computing rather than black-box software
? Integrates spatial data handling and mapping for areal sampling frames and field-based applications
? Emphasizes practical problem-solving, code organization, and analytical habits that scale from single stands to large inventories
Introduction to Forestry Data Analysis with R is intended for undergraduate and graduate students in forestry, natural resources, and environmental science, as well as practitioners seeking to modernize and streamline their analytical workflows. Whether readers are learning R for the first time or adapting established inventory methods to contemporary datasets, it provides a clear, practical, and reproducible foundation for data-driven forest analysis.
Distinct from both generic programming texts and traditional mensuration references, this volume teaches R through real forestry datasets and operational examples. The first half develops core programming skills - data wrangling, visualization, and reproducible workflows - while the second half applies these tools to forest inventory, monitoring, and estimation. Classical methods developed by forest biometricians are presented alongside transparent, step-by-step computational implementations, enabling readers to connect statistical theory with modern, repeatable analysis.
Key Features:
? Introduces R and the tidyverse using forestry-specific datasets and management questions
? Develops reproducible workflows for data import, cleaning, transformation, visualization, and reporting
? Presents forest inventory concepts including simple random, systematic, stratified, cluster, and multistage sampling
? Implements classical estimators using transparent, script-based computing rather than black-box software
? Integrates spatial data handling and mapping for areal sampling frames and field-based applications
? Emphasizes practical problem-solving, code organization, and analytical habits that scale from single stands to large inventories
Introduction to Forestry Data Analysis with R is intended for undergraduate and graduate students in forestry, natural resources, and environmental science, as well as practitioners seeking to modernize and streamline their analytical workflows. Whether readers are learning R for the first time or adapting established inventory methods to contemporary datasets, it provides a clear, practical, and reproducible foundation for data-driven forest analysis.
More details
Series
Language
English
Place of publication
United Kingdom
Publishing group
Taylor & Francis Ltd
Target group
College/higher education
Professional and scholarly
Academic and Postgraduate
Illustrations
20 farbige Tabellen, 20 s/w Tabellen, 93 farbige Zeichnungen, 93 farbige Abbildungen
20 Tables, color; 20 Tables, black and white; 93 Line drawings, color; 93 Illustrations, color
Dimensions
Height: 254 mm
Width: 178 mm
Weight
453 gr
ISBN-13
978-1-032-12028-7 (9781032120287)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions
Andrew O. Finley | Jeffrey W. Doser
Introduction to Forestry Data Analysis with R
Book
approx. 09/2026
1st Edition
Chapman & Hall/CRC
€74.50
Not yet published
Persons
Andrew O. Finley is a Professor in the Department of Forestry and the Department of Statistics and Probability at Michigan State University, USA.
Jeffrey W. Doser is an Assistant Professor in the Department of Forestry and Environmental Resources at North Carolina State University, USA.
Jeffrey W. Doser is an Assistant Professor in the Department of Forestry and Environmental Resources at North Carolina State University, USA.
Content
1 Overviewandmotivating data. 2 Introduction to R and RStudio. 3 Scripts and reproducibleworkflows. 4 Data structures. 5 Functions and functional programming. 6 Data summary and analysiswith tidyverse. 7 Manipulating and summarizing datawith dplyr. 8 Tidying datawith tidyr. 9 Creating graphicswith ggplot2. 10 Preliminary definitions and concepts. 11 Basic statistical concepts. 12 Estimating forest parameters. 13 Sampling designs and estimation in forest inventory. 15 Stratified sampling. 16 Estimation using covariates. 17 Cluster sampling. 18 Multistage sampling.