Cite as:
Egli, S.; Thies, B. &amp; Bendix, J. (2018): <b>A Hybrid Approach for Fog Retrieval Based on a Combination of Satellite and Ground Truth Data</b>. <i>Remote Sensing</i> <b>10</b>(4), 1-26.

Resource Description

Title: A Hybrid Approach for Fog Retrieval Based on a Combination of Satellite and Ground Truth Data
FOR816dw ID: 312
Publication Date: 2018-04-18
License and Usage Rights:
Resource Owner(s):
Individual: Sebastian Egli
Individual: Boris Thies
Individual: Jörg Bendix
Fog has a substantial influence on various ecosystems and it impacts economy, traffic systems and human life in many ways. In order to be able to deal with the large number of influence factors, a spatially explicit high-resoluted data set of fog frequency distribution is needed. In this study, a hybrid approach for fog retrieval based on Meteosat Second Generation (MSG) data and ground truth data is presented. The method is based on a random forest (RF) machine learning model that is trained with cloud base altitude (CBA) observations from Meteorological Aviation Routine Weather Reports (METAR) as well as synoptic weather observations (SYNOP). Fog is assumed where the model predicts CBA values below a dynamically derived threshold above the terrain elevation. Cross validation results show good accordance with observation data with a mean absolute error of 298 m in CBA values and an average Heidke Skill Score of 0.58 for fog occurrence. Using this technique, a 10 year fog baseline climatology with a temporal resolution of 15 min was derived for Europe for the period from 2006 to 2015. Spatial and temporal variations in fog frequency are analyzed. Highest average fog occurrences are observed in mountainous regions with maxima in spring and summer. Plains and lowlands show less overall fog occurrence but strong positive anomalies in autumn and winter.
| Fog detection | fog | ground fog | retrieval of fog | satellite climatology of fog | ground fog detection | fog remote sensing | ground fog frequency | fog monitoring |
Literature type specific fields:
Journal: Remote Sensing
Volume: 10
Issue: 4
Page Range: 1-26
Publisher: MDPI
Metadata Provider:
Individual: Sebastian Egli
Online Distribution:
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