Publication: Artificial Neural Network based PERSIANN data sets in evaluation of hydrologic utility of precipitation estimations in a tropical watershed of Sri Lanka
Type:
Article
Date
2021-09
Journal Title
Journal ISSN
Volume Title
Publisher
AIMS Geosciences
Abstract
The developments of satellite technologies and remote sensing (RS) have provided a way
forward with potential for tremendous progress in estimating precipitation in many regions of the world.
These products are especially useful in developing countries and regions, where ground-based rain
gauge (RG) networks are either sparse or do not exist. In the present study the hydrologic utility of
three satellite-based precipitation products (SbPPs) namely, Precipitation Estimation from Remotely
Sensed Information using Artificial Neural Networks (PERSIANN), PERSIANN-Cloud Classification
System (PERSIANN-CCS) and Precipitation Estimation from Remotely Sensed Information using
Artificial Neural Networks-Dynamic Infrared Rain Rate near real-time (PDIR-NOW) were examined
by using them to drive the Hydrologic Engineering Center-Hydrologic Modeling System (HEC-HMS)
hydrologic model for the Seethawaka watershed, a sub-basin of the Kelani River Basin of Sri Lanka.
The hydrologic utility of SbPPs was examined by comparing the outputs of this modelling exercise
against observed discharge records at the Deraniyagala streamflow gauging station during two extreme
rainfall events from 2016 and 2017. The observed discharges were simulated considerably better by the
model when RG data was used to drive it than when these SbPPs. The results demonstrated that
PERSIANN family of precipitation products are not capable of producing peak discharges and timing
of peaks essential for near-real time flood-forecasting applications in the Seethawaka watershed. The
difference in performance is quantified using the Nash-Sutcliffe Efficiency, which was >0.80 for the
model when driven by RGs, and <0.08 when driven by the SbPPs. Amongst the SbPPs, PERSIANN
performed best. The outcomes of this study will provide useful insights and recommendations for
future research expected to be carried out in the Seethawaka watershed using SbPPs. The results of this
479
AIMS Geosciences Volume 7, Issue 3, 478–489.
study calls for the refinement of retrieval algorithms in rainfall estimation techniques of PERSIANN
family of rainfall products for the tropical region.
Description
Keywords
discharge, Persiann, rainfall, seethawaka watershed
