scispace - formally typeset
Journal ArticleDOI

Very high resolution interpolated climate surfaces for global land areas.

Reads0
Chats0
TLDR
In this paper, the authors developed interpolated climate surfaces for global land areas (excluding Antarctica) at a spatial resolution of 30 arc s (often referred to as 1-km spatial resolution).
Abstract
We developed interpolated climate surfaces for global land areas (excluding Antarctica) at a spatial resolution of 30 arc s (often referred to as 1-km spatial resolution). The climate elements considered were monthly precipitation and mean, minimum, and maximum temperature. Input data were gathered from a variety of sources and, where possible, were restricted to records from the 1950–2000 period. We used the thin-plate smoothing spline algorithm implemented in the ANUSPLIN package for interpolation, using latitude, longitude, and elevation as independent variables. We quantified uncertainty arising from the input data and the interpolation by mapping weather station density, elevation bias in the weather stations, and elevation variation within grid cells and through data partitioning and cross validation. Elevation bias tended to be negative (stations lower than expected) at high latitudes but positive in the tropics. Uncertainty is highest in mountainous and in poorly sampled areas. Data partitioning showed high uncertainty of the surfaces on isolated islands, e.g. in the Pacific. Aggregating the elevation and climate data to 10 arc min resolution showed an enormous variation within grid cells, illustrating the value of high-resolution surfaces. A comparison with an existing data set at 10 arc min resolution showed overall agreement, but with significant variation in some regions. A comparison with two high-resolution data sets for the United States also identified areas with large local differences, particularly in mountainous areas. Compared to previous global climatologies, ours has the following advantages: the data are at a higher spatial resolution (400 times greater or more); more weather station records were used; improved elevation data were used; and more information about spatial patterns of uncertainty in the data is available. Owing to the overall low density of available climate stations, our surfaces do not capture of all variation that may occur at a resolution of 1 km, particularly of precipitation in mountainous areas. In future work, such variation might be captured through knowledgebased methods and inclusion of additional co-variates, particularly layers obtained through remote sensing. Copyright  2005 Royal Meteorological Society.

read more

Content maybe subject to copyright    Report

Citations
More filters
Journal ArticleDOI

Tracking vegetation phenology across diverse North American biomes using PhenoCam imagery.

TL;DR: A series of datasets, together consisting of almost 750 years of observations, characterizing vegetation phenology in diverse ecosystems across North America can be used for phenological model validation and development, evaluation of satellite remote sensing data products, benchmarking earth system models, and studies of climate change impacts on terrestrial ecosystems.
Journal ArticleDOI

Recent responses to climate change reveal the drivers of species extinction and survival

TL;DR: This work addresses the specific changes in climate that were associated with recent population extinctions, using data from 538 plant and animal species distributed globally and shows that niche shifts appear to be far more important for avoiding extinction than dispersal, although most studies focus only on dispersal.
Journal ArticleDOI

Climate, Niche Evolution, and Diversification of the “Bird‐Cage” Evening Primroses (Oenothera, Sections Anogra and Kleinia)

TL;DR: It is suggested that the spatiotemporal climatic heterogeneity of western North America has served as a driver of diversification in relation to climate, consistent with Axelrod's hypothesis that the spread of arid conditions in western NorthAmerica stimulated diversification of ard‐adapted lineages.
Journal ArticleDOI

Modeling plant species distributions under future climates: how fine scale do climate projections need to be?

TL;DR: As climate-data resolution became coarser, SDMs predicted larger habitat area with diminishing spatial congruence between fine- and coarse-scale predictions, which depended on climate scenario and species' range size.
Journal ArticleDOI

Climate change and risk of leishmaniasis in north america: predictions from ecological niche models of vector and reservoir species.

TL;DR: It is predicted that climate change will exacerbate the ecological risk of human exposure to leishmaniasis in areas outside its present range in the United States and, possibly, in parts of southern Canada.
References
More filters
Journal ArticleDOI

An improved method of constructing a database of monthly climate observations and associated high-resolution grids

TL;DR: In this paper, a database of monthly climate observations from meteorological stations is constructed and checked for inhomogeneities in the station records using an automated method that refines previous methods by using incomplete and partially overlapping records and by detecting inhomalities with opposite signs in different seasons.
Journal ArticleDOI

A high-resolution data set of surface climate over global land areas

TL;DR: In this paper, the construction of a 10' latitude/longitude data set of mean monthly sur-face climate over global land areas, excluding Antarctica, was described, which includes 8 climate conditions: precipitation, wet-day frequency, temperature, diurnal temperature range, relative humid-ity, sunshine duration, ground frost frequency and windspeed.
Journal ArticleDOI

Representing Twentieth-Century Space–Time Climate Variability. Part I: Development of a 1961–90 Mean Monthly Terrestrial Climatology

TL;DR: In this article, a 0.5° lat × 0. 5° long surface climatology of global land areas, excluding Antarctica, is described, which represents the period 1961-90 and comprises a suite of nine variables: precipitation, wet-day frequency, mean temperature, diurnal temperature range, vapor pressure, sunshine, cloud cover, ground frost frequency, and wind speed.
Journal ArticleDOI

Generating surfaces of daily meteorological variables over large regions of complex terrain

TL;DR: In this paper, a method for generating daily surfaces of temperature, precipitation, humidity, and radiation over large regions of complex terrain is presented, based on the spatial convolution of a truncated Gaussian weighting filter with the set of station locations.
Journal ArticleDOI

A knowledge-based approach to the statistical mapping of climate

TL;DR: In this article, the authors present a knowledge-based framework for climate mapping using a statistical regression model known as PRISM (parameter-elevation regressions on independent slopes model).
Related Papers (5)