Repositorio Institucional
Repositorio Institucional
CONICET Digital
  • Inicio
  • EXPLORAR
    • AUTORES
    • DISCIPLINAS
    • COMUNIDADES
  • Estadísticas
  • Novedades
    • Noticias
    • Boletines
  • Ayuda
    • General
    • Datos de investigación
  • Acerca de
    • CONICET Digital
    • Equipo
    • Red Federal
  • Contacto
JavaScript is disabled for your browser. Some features of this site may not work without it.
  • INFORMACIÓN GENERAL
  • RESUMEN
  • ESTADISTICAS
 
Artículo

Fragment size, vegetation structure and physical environment control grassland functioning: a test based on artificial neural networks

Herrera, Lorena PaolaIcon ; Texeira González, Marcos AlexisIcon ; Paruelo, JoséIcon
Fecha de publicación: 07/2013
Editorial: Wiley
Revista: Applied Vegetation Science
ISSN: 1402-2001
Idioma: Inglés
Tipo de recurso: Artículo publicado
Clasificación temática:
Ciencias de las Plantas, Botánica

Resumen

Questions: How do fragment-level characteristics affect remnant grassland functioning in a highly transformed landscape? Are artificial neural networks (ANNs) a better statistical tool to model variations in grassland functioning compared to linear regression models (LRMs)? Location: Tandilia Range, Southern Pampa, Buenos Aires Province, Argentina. Methods: We characterized the dynamics of the vegetation functioning in 60 remnant grasslands by means of the Enhanced Vegetation Index (EVI) data provided by MODIS/Terra images from July 2000 to June 2005. First, we performed a principal component analysis on the fragments mean monthly values of EVI in order to obtain synthetic measures (i.e. the PCA axes) of grassland functioning. Grassland fragments were also characterized by their size, vegetation structure (abundance of the tall-tussock grass Paspalum quadrifarium), and physical environment (soil type -abundance of litholitic soils-, elevation, aspect and slope). The relationship between grassland functioning and these explanatory variables was explored by means of linear regression models (LRMs) and artificial neural networks (ANNs). Results: The first and second PCA axes were related to the annual integral of EVI (EVI-I) and EVI seasonality (EVI-S), respectively; and explained jointly approximately 80% of total variability in mean EVI values. ANNs captured better than regression models the relationships among the proposed controls and the spatial variability of grassland functioning in Southern Pampa. Results showed EVI-I variability was related to all independent variables except aspect. While fragment-size, litholitic soils and slope were negatively related to EVI-I, the abundance of P. quadrifarium showed a positive effect on the spectral index. Grasslands with high seasonality were large, and had high slope and aspect, low abundance of P. quadrifarium and more abundance of litholitic soils. Conclusions: Our results showed that grassland functioning in Southern Pampa, as estimated by EVI, depends on fragment-size, vegetation structure and physical factors (soil type, aspect and slope). Paspalum quadrifarium may be performing an important functional role in this grassland system.
Palabras clave: Enhanced Vegetation Index , Fragmentation , Landscape Structure , Modis Data
Ver el registro completo
 
Archivos asociados
Thumbnail
 
Tamaño: 584.6Kb
Formato: PDF
.
Descargar
Licencia
info:eu-repo/semantics/openAccess Excepto donde se diga explícitamente, este item se publica bajo la siguiente descripción: Creative Commons Attribution-NonCommercial-ShareAlike 2.5 Unported (CC BY-NC-SA 2.5)
Identificadores
URI: http://hdl.handle.net/11336/7547
URL: http://onlinelibrary.wiley.com/doi/10.1111/avsc.12009/abstract
DOI: http://dx.doi.org/10.1111/avsc.12009
Colecciones
Articulos(CCT - MAR DEL PLATA)
Articulos de CTRO.CIENTIFICO TECNOL.CONICET - MAR DEL PLATA
Articulos(IFEVA)
Articulos de INST.D/INV.FISIOLOGICAS Y ECO.VINCULADAS A L/AGRIC
Citación
Herrera, Lorena Paola; Texeira González, Marcos Alexis; Paruelo, José; Fragment size, vegetation structure and physical environment control grassland functioning: a test based on artificial neural networks; Wiley; Applied Vegetation Science; 16; 3; 7-2013; 426-437
Compartir
Altmétricas
 

Enviar por e-mail
Separar cada destinatario (hasta 5) con punto y coma.
  • Facebook
  • X Conicet Digital
  • Instagram
  • YouTube
  • Sound Cloud
  • LinkedIn

Los contenidos del CONICET están licenciados bajo Creative Commons Reconocimiento 2.5 Argentina License

https://www.conicet.gov.ar/ - CONICET

Inicio

Explorar

  • Autores
  • Disciplinas
  • Comunidades

Estadísticas

Novedades

  • Noticias
  • Boletines

Ayuda

Acerca de

  • CONICET Digital
  • Equipo
  • Red Federal

Contacto

Godoy Cruz 2290 (C1425FQB) CABA – República Argentina – Tel: +5411 4899-5400 repositorio@conicet.gov.ar
TÉRMINOS Y CONDICIONES