2012
DOI: 10.1002/qj.1918
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A critical assessment of surface cloud observations and their use for verifying cloud forecasts

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Cited by 34 publications
(46 citation statements)
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References 34 publications
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“…Increasing the aggregation, the log‐odds ratio for an aggregation time interval of 90 min at 1.3 km spatial resolution is similar to that for a 60 min time integration at a 12 km resolution (≈1.95). The results shown so far point out that WRF appears to perform better for coarser model spatial or temporal resolutions in accordance with the results presented in other works [e.g., Mittermaier , ]. This may be considered disappointing and indicative of a rather poor WRF skill to properly represent local‐ or small‐area clouds.…”
Section: Resultsmentioning
confidence: 99%
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“…Increasing the aggregation, the log‐odds ratio for an aggregation time interval of 90 min at 1.3 km spatial resolution is similar to that for a 60 min time integration at a 12 km resolution (≈1.95). The results shown so far point out that WRF appears to perform better for coarser model spatial or temporal resolutions in accordance with the results presented in other works [e.g., Mittermaier , ]. This may be considered disappointing and indicative of a rather poor WRF skill to properly represent local‐ or small‐area clouds.…”
Section: Resultsmentioning
confidence: 99%
“…This may be considered disappointing and indicative of a rather poor WRF skill to properly represent local‐ or small‐area clouds. Nevertheless, it is a consequence of the variation of the cloud predictability limit at different spatial resolutions and the so‐called double‐penalty effect , already reported in previous works [ Mass et al ., ; Rossa et al ., ; Mittermaier , ; Cintineo et al ., ]. The double penalty consists in that although the model may generate a cloud, if it is not generated at the right moment and at the right place, it will be considered as if it was not created even though the cloud might have been generated in the proximities and about the time of its actual position.…”
Section: Resultsmentioning
confidence: 99%
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“…This might cause some small inconsistencies amongst different stations. Other sources of uncertainties in the comparisons are the subjectivity of human 25 observations and their inevitable variation from one observer to another (Mittermaier, 2012); the scenery effect (Malberg, 1973;Karlsson, 2003;Werkmeister et al, 2015) which increases the difficulty of comparing two different observation geometries, as cloud fractional cover tends to be overestimated by a ground-based observer looking in a slanted way at clouds spread vertically, especially when clouds are low on the horizon; and the detection difference between a human eye limited to the visible spectra and satellite sensors, which have wider spectral ranges, especially infrared wavelengths. …”
Section: Visual Observationsmentioning
confidence: 99%
“…This feature seems to be replicated best by the JMA model (vertical panel in Figure (b)), except that one of the peaks has shifted from 1 to 0 okta. This shift may not seem significant at first glance, but as Mittermaier () explains, cloud amounts are rarely considered in isolation but are usually taken as being greater than a defined amount, thus this will have an impact on the verification scores examined below.…”
Section: Low‐to‐medium Cloud Verificationmentioning
confidence: 99%