Premium
Spatial variations in throughfall in a Moso bamboo forest: sampling design for the estimates of stand‐scale throughfall
Author(s) -
Shinohara Yoshinori,
Onozawa Yuka,
Chiwa Masaaki,
Kume Tomonori,
Komatsu Hikaru,
Otsuki Kyoichi
Publication year - 2009
Publication title -
hydrological processes
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.222
H-Index - 161
eISSN - 1099-1085
pISSN - 0885-6087
DOI - 10.1002/hyp.7473
Subject(s) - throughfall , interception , leaf area index , environmental science , canopy , spatial variability , sampling (signal processing) , atmospheric sciences , spatial ecology , bamboo , spatial heterogeneity , scale (ratio) , phyllostachys , soil science , mathematics , statistics , ecology , geography , soil water , cartography , filter (signal processing) , computer science , computer vision , biology , geology
We investigated the spatial and seasonal variations in throughfall (Tf) in relation to spatial and seasonal variations in canopy structure and gross rainfall (Rf) and assessed the impacts of the variations in Tf on stand‐scale Tf estimates. We observed the canopy structure expressed as the leaf area index (LAI) once a month and Tf once a week in 25 grids placed in a Moso bamboo ( Phyllostachys pubescens ) forest for 1 year. The mean LAI and spatial variation in LAI did have some seasonal variations. The spatial variations in Tf reduced with increasing Rf, and the relationship between the spatial variation and the Rf held throughout the year. These results indicate that the seasonal change in LAI had little impact on spatial variations in Tf, and that Rf is a critical factor determining the spatial variations in Tf at the study site. We evaluated potential errors in stand‐scale Tf estimates on the basis of measured Tf data using Monte Carlo sampling. The results showed that the error decreases greatly with increasing sample size when the sample size was less than ∼8, whereas it was near stable when the sample size was 8 or more, regardless of Rf. A sample size of eight results in less than 10% error for Tf estimates based on Student's t ‐value analysis and would be satisfactory for interception loss estimates when considering errors included in Rf data. Copyright © 2009 John Wiley & Sons, Ltd.