intensity_duration_frequency_analysis
Rainfall analysis tool
Analyzes rainfall intensity based on duration and return period according to DWA-A 531 (2012)
heavy rain as a function of the duration and the return period acc. to DWA-A 531 (2012) This program reads the measurement data of the rainfall and calculates the distribution of the rainfall as a function of the return period and the duration for duration steps up to 12 hours (and more) and return period in a range of '0.5a <= T_n <= 100a'
40 stars
2 watching
15 forks
Language: Python
last commit: 3 months ago
Linked from 1 awesome list
analysisdesign-rainfalldurationduration-stepsdwadwa-a-531dwdheavy-rainidfintensity-duration-frequencykostrameasurement-dataprecipitationpythonrainfallreturn-period
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