swMATH ID: 15742
Software Authors: Andreas Hill, Alexander Massey, Daniel Mandallaz
Description: The R Package forestinventory: Design-Based Global and Small Area Estimations for Multiphase Forest Inventories. Forest inventories provide reliable evidence-based information to assess the state and development of forests over time. They typically consist of a random sample of plot locations in the forest that are assessed individually by field crews. Due to the high costs of these terrestrial campaigns, remote sensing information available in high quantity and low costs is frequently incorporated in the estimation process in order to reduce inventory costs or improve estimation precision. With respect to this objective, the application of multiphase forest inventory methods (e.g., double- and triple-sampling regression estimators) has proved to be efficient. While these methods have been successfully applied in practice, the availability of open-source software has been rare if not non-existent. The R package forestinventory provides a comprehensive set of global and small area regression estimators for multiphase forest inventories under simple and cluster sampling. The implemented methods have been demonstrated in various scientific studies ranging from small to large scale forest inventories, and can be used for post-stratification, regression and regression within strata. This article gives an extensive review of the mathematical theory of this family of design-based estimators, puts them into a common framework of forest inventory scenarios and demonstrates their application in the R environment.
Homepage: https://cran.r-project.org/web/packages/forestinventory/index.html
Source Code:  https://github.com/cran/forestinventory
Dependencies: R
Keywords: R; R package; forest inventory; design-based; infinite population approach; two-and three-phase sampling; regression estimators; small area estimation; Journal of Statistical Software
Related Software: ggplot2; SAS; data.table; maSAE; JoSAE; Survey; R; CRAN
Cited in: 0 Publications

Standard Articles

1 Publication describing the Software Year