2021
DOI: 10.1088/1755-1315/724/1/012047
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Cumulonimbus cloud prediction based on machine learning approach using radiosonde data in Surabaya, Indonesia

Abstract: Increase in frequency and strength of cumulonimbus is one of the impacts of climate change. The presence of cumulonimbus usuallyy causes extreme weather. Cumulonimbus can produce heavy rainfalls, tornadoes, turbulences, and other extreme weather events. Upper air conditions have a great effect on the process of cloud growth. Radiosonde observations can be used to predict the presence of cumulonimbus in the short-term period of weather forecast. This study aimed to predict the occurrence of cumulonimbus using r… Show more

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Cited by 3 publications
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“…In models without CAPE, accuracy was 72%; in models with CAPE, accuracy was 80%; the false alarm rate was 17%; in models with CAPE, it was 21%. This Data comes from Juanda Surabaya Meteorological Station during 2018-2019 [34]. In parallel [35], these models have been used in DTR, LR, Ridge, Lasso, RFR, KNNR, GBR, and CNN.…”
Section: 2mentioning
confidence: 99%
“…In models without CAPE, accuracy was 72%; in models with CAPE, accuracy was 80%; the false alarm rate was 17%; in models with CAPE, it was 21%. This Data comes from Juanda Surabaya Meteorological Station during 2018-2019 [34]. In parallel [35], these models have been used in DTR, LR, Ridge, Lasso, RFR, KNNR, GBR, and CNN.…”
Section: 2mentioning
confidence: 99%