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How to download universal thermal climate index dataset from climate data store? 


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The Universal Thermal Climate Index (UTCI) dataset can be downloaded from the Climate Data Store. The dataset, known as ERA5-HEAT, is the first global historical gridded time series of mean radiant temperature (MRT) and UTCI. It is derived from climate variables from ERA5, a reanalysis produced by ECMWF within the Copernicus Climate Change Service. ERA5-HEAT consists of hourly gridded maps of MRT and UTCI at a spatial resolution of 0.25°x 0.25° and currently spans from 1979 to present. The dataset is released in two streams, a consolidated and an intermediate one, with data being publicly and freely available for download. It is aimed at a wide range of end users, including scientists and policy makers, interested in environment-health applications at any spatial and temporal scale .

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The paper does not provide information on how to download the Universal Thermal Climate Index dataset from the climate data store.
The paper does not provide information on how to download the Universal Thermal Climate Index dataset from the climate data store.
The paper does not provide information on how to download the universal thermal climate index dataset from the climate data store.
The universal thermal climate index dataset can be downloaded from the Climate Data Store, which is publicly and freely available for download.
The paper does not provide information on how to download the Universal Thermal Climate Index dataset from the climate data store.

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