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  • Yow, D. M., 2007: Urban heat islands: Observations, impacts, and adaptation. Geogr. Compass, 1, 12271251, https://doi.org/10.1111/j.1749-8198.2007.00063.x.

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  • Zagouras, A., A. Kazantzidis, E. Nikitidou, and A. A. Argiriou, 2013: Determination of measuring sites for solar irradiance, based on cluster analysis of satellite-derived cloud estimations. Sol. Energy, 97, 111, https://doi.org/10.1016/j.solener.2013.08.005.

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    Depiction of a weather information value chain to demonstrate a path that can be used to foster communication between researchers and end users to generate a value for the end user (after Lazo 2017).

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    A large storm and major cities in the eastern United States (Source: NOAA/NASA).

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    The combined impact of urbanization and climate change on heating (Stone 2012; copyright B. Stone Jr., reproduced with permission of the licensor through PLSclear).

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    Impact of weather and climate events on energy systems [after Dubus et al. 2018a; CC BY 4.0 (https://creativecommons.org/licenses/by/4.0/)]. Photograph credits: Copyright University Corporation for Atmospheric Research from (left to right and then top to bottom) R. Bumpas, S.E. Haupt, C. Calvin, NWS/NCEP/Climate Prediction Center, S.E. Haupt, J. Weber, C. Calvin, and the Research Applications Laboratory; most are licensed under CC BY-NC 4.0 via OpenSky.