Hydrology and Earth System Sciences (Jun 2022)

Forecasting green roof detention performance by temporal downscaling of precipitation time-series projections

  • V. Pons,
  • V. Pons,
  • R. Benestad,
  • E. Sivertsen,
  • T. M. Muthanna,
  • J.-L. Bertrand-Krajewski

DOI
https://doi.org/10.5194/hess-26-2855-2022
Journal volume & issue
Vol. 26
pp. 2855 – 2874

Abstract

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A strategy to evaluate the suitability of different multiplicative random cascades to produce rainfall time series, taking into account climate change, inputs for green infrastructures models. The multiplicative random cascades reproduce a (multi)fractal distribution of precipitation through an iterative and multiplicative random process. In the current study, the initial model, a flexible cascade that deviates from multifractal scale invariance, was improved with (i) a temperature dependency and (ii) an additional function to reproduce the temporal structure of rainfall. The structure of the models with depth and temperature dependency was found to be applicable in eight locations studied across Norway and France. The resulting time series from both reference period and projection based on RCP 8.5 were applied to two green roofs with different properties. The different models led to a slight change in the performance of green roofs, but this was not significant compared to the range of outcomes due to ensemble uncertainty in climate modelling and the stochastic uncertainty due to the nature of the process. The hydrological dampening effect of the green infrastructure was found to decrease in most of the Norwegian cities due to an increase in precipitation, especially Bergen (Norway), while slightly increasing in Marseille (France) due to decrease in rainfall event frequency.