mobsim: An R package for the simulation and measurement of biodiversity across spatial scales

Research output: Journal contributionsJournal articlesResearch

Standard

mobsim: An R package for the simulation and measurement of biodiversity across spatial scales. / May, Felix; Gerstner, Katharina; McGlinn, Daniel J. et al.
In: Methods in Ecology and Evolution, Vol. 9, No. 6, 01.06.2018, p. 1401-1408.

Research output: Journal contributionsJournal articlesResearch

Harvard

APA

Vancouver

May F, Gerstner K, McGlinn DJ, Xiao X, Chase JM. mobsim: An R package for the simulation and measurement of biodiversity across spatial scales. Methods in Ecology and Evolution. 2018 Jun 1;9(6):1401-1408. Epub 2018 Mar 14. doi: 10.1111/2041-210X.12986

Bibtex

@article{816b24cbf81345708e6ce8304cb670cb,
title = "mobsim: An R package for the simulation and measurement of biodiversity across spatial scales",
abstract = "Estimating biodiversity and its change in space and time poses serious methodological challenges. First, there has been a long debate on how to quantify biodiversity, and second, measurements of biodiversity and its change are scale-dependent. Therefore, comparisons of biodiversity metrics between communities are ideally carried out across scales. Simulations can be used to study the behaviour of biodiversity metrics across scales, but most approaches are system specific, plagued by large parameter spaces, and therefore cumbersome to use and interpret. However, realistic spatial biodiversity patterns can be generated without reference to ecological processes, which suggests a simple simulation framework as important tool for ecologists. Here, we present the r package mobsim that allows users to simulate the abundances and the distributions of individuals of different species in a spatially explicit landscape. Users can define key properties of communities, including the total number of individuals, the species-abundance distribution (SAD) and the degree of intraspecific spatial aggregation. Furthermore, the package provides functions that derive biodiversity measures, such as rarefaction curves and species–area relationships (SAR), from simulated communities or from observed data, as well as functions that simulate different sampling designs. We show several example applications of the package. First, we illustrate how species rarefaction and accumulation curves can be used to disentangle changes in the fundamental components that underlie biodiversity: (i) total abundance, (ii) species-abundance distribution and (iii) species aggregation. Second, we demonstrate how mobsim can be applied to assess the performance of species-richness estimators. The latter indicates how spatial aggregation challenges classical non-spatial species-richness estimators. mobsim allows the simulation and analysis of a large range of biodiversity scenarios and sampling designs in a comprehensive way by directly manipulating key community properties. The simplicity and control provided by the package also makes it a useful didactic tool. The combination of controlled simulations and their analysis will facilitate a more rigorous interpretation of real-world data that exhibit sampling effects and scale dependence.",
keywords = "diversity indices, simulation, sampling, scale dependence, species–area relationship, species abundance distribution, rarefaction curve, species–accumulation curve, Gender and Diversity",
author = "Felix May and Katharina Gerstner and McGlinn, {Daniel J.} and Xiao Xiao and Chase, {Jonathan M.}",
year = "2018",
month = jun,
day = "1",
doi = "10.1111/2041-210X.12986",
language = "English",
volume = "9",
pages = "1401--1408",
journal = "Methods in Ecology and Evolution",
issn = "2041-210X",
publisher = "British Ecological Society",
number = "6",

}

RIS

TY - JOUR

T1 - mobsim

T2 - An R package for the simulation and measurement of biodiversity across spatial scales

AU - May, Felix

AU - Gerstner, Katharina

AU - McGlinn, Daniel J.

AU - Xiao, Xiao

AU - Chase, Jonathan M.

PY - 2018/6/1

Y1 - 2018/6/1

N2 - Estimating biodiversity and its change in space and time poses serious methodological challenges. First, there has been a long debate on how to quantify biodiversity, and second, measurements of biodiversity and its change are scale-dependent. Therefore, comparisons of biodiversity metrics between communities are ideally carried out across scales. Simulations can be used to study the behaviour of biodiversity metrics across scales, but most approaches are system specific, plagued by large parameter spaces, and therefore cumbersome to use and interpret. However, realistic spatial biodiversity patterns can be generated without reference to ecological processes, which suggests a simple simulation framework as important tool for ecologists. Here, we present the r package mobsim that allows users to simulate the abundances and the distributions of individuals of different species in a spatially explicit landscape. Users can define key properties of communities, including the total number of individuals, the species-abundance distribution (SAD) and the degree of intraspecific spatial aggregation. Furthermore, the package provides functions that derive biodiversity measures, such as rarefaction curves and species–area relationships (SAR), from simulated communities or from observed data, as well as functions that simulate different sampling designs. We show several example applications of the package. First, we illustrate how species rarefaction and accumulation curves can be used to disentangle changes in the fundamental components that underlie biodiversity: (i) total abundance, (ii) species-abundance distribution and (iii) species aggregation. Second, we demonstrate how mobsim can be applied to assess the performance of species-richness estimators. The latter indicates how spatial aggregation challenges classical non-spatial species-richness estimators. mobsim allows the simulation and analysis of a large range of biodiversity scenarios and sampling designs in a comprehensive way by directly manipulating key community properties. The simplicity and control provided by the package also makes it a useful didactic tool. The combination of controlled simulations and their analysis will facilitate a more rigorous interpretation of real-world data that exhibit sampling effects and scale dependence.

AB - Estimating biodiversity and its change in space and time poses serious methodological challenges. First, there has been a long debate on how to quantify biodiversity, and second, measurements of biodiversity and its change are scale-dependent. Therefore, comparisons of biodiversity metrics between communities are ideally carried out across scales. Simulations can be used to study the behaviour of biodiversity metrics across scales, but most approaches are system specific, plagued by large parameter spaces, and therefore cumbersome to use and interpret. However, realistic spatial biodiversity patterns can be generated without reference to ecological processes, which suggests a simple simulation framework as important tool for ecologists. Here, we present the r package mobsim that allows users to simulate the abundances and the distributions of individuals of different species in a spatially explicit landscape. Users can define key properties of communities, including the total number of individuals, the species-abundance distribution (SAD) and the degree of intraspecific spatial aggregation. Furthermore, the package provides functions that derive biodiversity measures, such as rarefaction curves and species–area relationships (SAR), from simulated communities or from observed data, as well as functions that simulate different sampling designs. We show several example applications of the package. First, we illustrate how species rarefaction and accumulation curves can be used to disentangle changes in the fundamental components that underlie biodiversity: (i) total abundance, (ii) species-abundance distribution and (iii) species aggregation. Second, we demonstrate how mobsim can be applied to assess the performance of species-richness estimators. The latter indicates how spatial aggregation challenges classical non-spatial species-richness estimators. mobsim allows the simulation and analysis of a large range of biodiversity scenarios and sampling designs in a comprehensive way by directly manipulating key community properties. The simplicity and control provided by the package also makes it a useful didactic tool. The combination of controlled simulations and their analysis will facilitate a more rigorous interpretation of real-world data that exhibit sampling effects and scale dependence.

KW - diversity indices, simulation, sampling, scale dependence, species–area relationship, species abundance distribution, rarefaction curve, species–accumulation curve

KW - Gender and Diversity

UR - http://www.scopus.com/inward/record.url?scp=85043602025&partnerID=8YFLogxK

UR - https://www.mendeley.com/catalogue/0e7ff57f-0e8f-3204-9dd7-b982be9d3414/

U2 - 10.1111/2041-210X.12986

DO - 10.1111/2041-210X.12986

M3 - Journal articles

VL - 9

SP - 1401

EP - 1408

JO - Methods in Ecology and Evolution

JF - Methods in Ecology and Evolution

SN - 2041-210X

IS - 6

ER -

DOI

Recently viewed

Publications

  1. The German perspective of education for sustainable development
  2. ephemera: theory & politics in organization
  3. Article 2 Non-Contractual Obligations
  4. The Role of Intermediary Organizations in Eco-Efficiency Improvements in SMEs
  5. Bringing ecosystem services into economic decision-making
  6. Effect of overlapping audit and compensation committee memberships on the readability of management compensation reports in the German HDAX
  7. Fehlgeburt und Stillgeburt
  8. Der blinde Fleck der Kritiker
  9. Environmental commitments and rhetoric over the Pandemic crisis
  10. Eco-Controlling
  11. 'l'll tell you what the truth is'
  12. Transformation of Seafood Side-Streams and Residuals into Valuable Products
  13. Digital naturalism
  14. Berufstätigkeit in unsicheren Ländern
  15. A pluralistic and integrated approach to action-oriented knowledge for sustainability
  16. Thinking about individual actor-level perspectives in sociotechnical transitions
  17. Value Co-Creation and Society
  18. Patients' and Physicians' Perceptions of Medical Services in Germany
  19. Partizipative Führung an Schulen in Hamburg
  20. Szenen des Lernens
  21. Molecular analyses and species distribution models indicate cryptic northern mountain refugia for a forestdwelling ground beetle
  22. Corrigendum to: Pathways to Implementation: Evidence on How Participation in Environmental Governance Impacts on Environmental Outcomes
  23. Action tendencies and characteristics of environmental risks
  24. It pays to be active on many foreign markets
  25. Didactics of Mathematics in Higher Education as a Scientific Discipline - Conference Proceedings
  26. Cost of illness for bipolar disorder