FIND: A Synthetic weather generator to control drought Frequency, Intensity, and Duration

Water systems worldwide are experiencing climate change-induced shifts in drought properties like frequency, intensity, and duration, affecting water security and reliability. To develop and test effective drought preparedness plans, researchers often use synthetic weather generators to create hydro...

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Veröffentlicht in:Environmental modelling & software : with environment data news 2024-01, Vol.172 (C), p.105927, Article 105927
Hauptverfasser: Zaniolo, Marta, Fletcher, Sarah, Mauter, Meagan
Format: Artikel
Sprache:eng
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Zusammenfassung:Water systems worldwide are experiencing climate change-induced shifts in drought properties like frequency, intensity, and duration, affecting water security and reliability. To develop and test effective drought preparedness plans, researchers often use synthetic weather generators to create hydrological scenarios that explore drought variability beyond historical records. Existing weather generators typically allow users to adjust streamflow statistics like percentiles or temporal correlation but do not directly control drought properties of frequency, intensity, and duration. To fill this gap, we propose FIND (Frequency, INtensity, and Duration) synthetic weather generator. FIND incorporates a standardized drought index to directly and independently control drought frequency, intensity, and duration in generated streamflow time series while preserving observed hydrological variability. Use cases for FIND include (i) water systems analysis applications that seek to train and test drought strategies under historical and plausible future drought conditions, and (ii) bottom-up vulnerability studies relating system vulnerability outcomes to specific changes in drought properties of frequency, intensity, and duration. We demonstrate FIND’s versatility through three experiments: replicating historically observed drought properties, generating streamflow scenarios for multiple sites preserving correlation between their drought conditions, and generating a set of scenarios with direct and independent changes in drought properties. FIND source code is openly available for applications beyond the scope of this paper. •FIND generates synthetic weather timeseries with desired drought properties.•FIND supports weather generation for multiple correlated site.•With FIND, modelers can pinpoint changes in drought properties that threaten water systems.
ISSN:1364-8152
1873-6726
DOI:10.1016/j.envsoft.2023.105927