EGU23-1314, updated on 27 Apr 2023
https://doi.org/10.5194/egusphere-egu23-1314
EGU General Assembly 2023
© Author(s) 2023. This work is distributed under
the Creative Commons Attribution 4.0 License.

Modelling rainfall interarrival times and rainfall depths at daily scale

Stefano Ferraris1, Carmelo Agnese2, Tommaso Martini3, Elvira Di Nardo3, and Giorgio Baiamonte2
Stefano Ferraris et al.
  • 1Università degli Studi di Torino, Politecnico di Torino Interuniversity Department of Regional and Urban Studies and Planning, Italy (stefano.ferraris@unito.it)
  • 2Università di Palermo, Department of Agricultural, Food and Forest Sciences, Italy
  • 3Università of Torino, Department of Mathematics “G. Peano”, Italy

Analysis of daily rainfall data, and subsequent modelling of some derived variables concerning rainfall, is fundamental in different areas such as agricultural, ecological, and engineering disciplines. A way of studying the alternance of consecutive rainy days (wet spells) and no-rainy days (dry spells) is through the interarrival time (IT), which is the time elapsed between two consecutives rainy days. If we suppose that IT observations are independent and identically distributed (i.i.d.), ITs are usually modelled through a renewal processes. The simplest renewal process is the Bernoulli process with ITs geometrically distributed. The need to suppose a non-constant probability of rain brings to more sophisticated models. Previous works [Agnese et al. (2014), Baiamonte et al. (2019)] have successfully proposed the three-parameter family of the Hurwitz-Lerch-Zeta distribution (HLZD), which represents a forward step with respect to other commonly used IT distributions. In [Agnese et al. (2022)], a second successfully reached goal was to show that the HLZD is also suitable to model the rainfall depth, h. In literature, rainfall depths are more frequently treated as continuous, despite sometimes these models fail to account for the time discreteness of the sampled process. Indeed, daily rainfall depth measurements are usually carried out by automatic-counting how many times a small bucket corresponding to 0.2 mm is filled. Due to the abundance of ties in the data, the variable depth h is well suited to be considered discrete. We present results involving data never considered in literature and consisting of measures sampled along 60-70 years at 7 different stations. These stations represent different climates from the rainfall characteristics point of view and let us to infer about the great handiness of the HLZD within rainfall modelling. Current research is addressed to modelling further rainfall variables related to IT and h, such as wet and dry spells, and the cumulative rainfall depth in a wet spell. Furthermore, given the remarkable performance of the HLZD family of distributions in the univariate modelling, we aim at modelling the dependence structure between IT and h, exploiting possibly new methodological advances in the subject, such as discrete copulas.

 

References

  • Agnese, G. Baiamonte, E. Di Nardo, S. Ferraris, and T. Martini (2022). Modelling the frequency of interarrival times and rainfall depths with the Poisson Hurwitz-Lerch zeta distribution. Fractal and Fractional, 6(9).
  • Agnese, G. Baiamonte, and C. Cammalleri (2014). Modelling the occurrence of rainy days
    under a typical Mediterranean climate. Advances in Water Resources, 64:62–76.
  • G. Baiamonte, L. Mercalli, D. C. Berro, C. Agnese, and S. Ferraris (2019). Modelling the frequency distribution of inter-arrival times from daily precipitation time-series in north-west Italy. Hydrology Research, 50(1):339–357.

How to cite: Ferraris, S., Agnese, C., Martini, T., Di Nardo, E., and Baiamonte, G.: Modelling rainfall interarrival times and rainfall depths at daily scale, EGU General Assembly 2023, Vienna, Austria, 24–28 Apr 2023, EGU23-1314, https://doi.org/10.5194/egusphere-egu23-1314, 2023.