Login / Signup

A dataset of functional traits for compound pinnate leaves of plants in the Huangshui River Valley of Qinghai Province, China.

Qian WangAnselmo NogueiraJi-Zhong WanChun-Jing WangLan-Ping Li
Published in: Biodiversity data journal (2023)
This dataset includes field survey data on the functional properties of compound leaves from herbaceous species in the Huangshui River Basin of Qinghai Province, China, at altitudes from 1800 m to 4000 m in the summer of 2021. Data were collected from 326 plots, including 646 data points of compound leaf plants, spanning 32 compound leaf plant species belonging to 14 genera and four families. The study species were chosen from 47 families, 165 genera and 336 species present in the plots and all compound leaf plants were chosen within each plot. We picked the parts containing leaves, petioles and rachis from the study plants and separated the leaves from the plants. The cut compound leaf part was a leaflet, while the petiole and rachis were linear elements. The dataset includes information about the leaflet trait variation (i.e. leaflet area, leaflet dry mass, specific leaflet area and leaflet nitrogen content per unit dry mass) and linear elements' biomass and nitrogen content per unit dry mass (i.e. both petiole and rachis) of 646 compound leaves. This dataset can be used to analyse the evolution of leaf traits and the basic functioning of ecosystems. Moreover, the dataset provides an important basis for studying the species distribution and protection of biodiversity of the Qinghai-Tibet Plateau and evaluating ecosystem services. These data also support the high-quality development of the Yellow River Basin and have empirical and practical value for alpine biodiversity protection and ecosystem management.
Keyphrases
  • mitral valve
  • aortic valve
  • electronic health record
  • climate change
  • big data
  • healthcare
  • south africa
  • essential oil
  • genetic diversity
  • gene expression
  • machine learning
  • artificial intelligence
  • cross sectional