Artificial neural network based PERSIANN data sets in evaluation of hydrologic utility of precipitation estimations in a tropical watershed of Sri Lanka

IF 0.9 Q4 GEOSCIENCES, MULTIDISCIPLINARY
M. Gunathilake, Thamashi Senerath, Upaka S. Rathnayake
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引用次数: 7

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 study calls for the refinement of retrieval algorithms in rainfall estimation techniques of PERSIANN family of rainfall products for the tropical region.
基于人工神经网络的PERSIANN数据集在斯里兰卡热带流域降水估算水文效用评价中的应用
卫星技术和遥感(RS)的发展为在估计世界许多地区的降水方面取得巨大进展提供了一条前进的道路。这些产品在发展中国家和地区特别有用,因为那里的地面雨量计(RG)网络要么稀疏,要么根本不存在。在本研究中,三种基于卫星的降水产品(SbPPs)的水文效用,即利用人工神经网络(PERSIANN)进行遥感信息降水估算,通过对斯里兰卡克拉尼河流域子流域Seethawaka流域的水文工程中心-水文建模系统(HEC-HMS)水文模型的驱动,研究了persiann -云分类系统(PERSIANN-CCS)和基于人工神经网络的遥感信息降水估计-动态红外近实时雨率(PDIR-NOW)。通过将模拟结果与Deraniyagala河流量测量站在2016年和2017年两次极端降雨事件期间观测到的流量记录进行比较,研究了SbPPs的水文效用。当使用RG数据驱动该模型时,所观察到的放电比使用这些SbPPs时要好得多。结果表明,在Seethawaka流域,PERSIANN系列降水产品不能产生峰值流量和峰值时间,这是近实时洪水预报应用所必需的。使用Nash-Sutcliffe效率对性能差异进行了量化,在RGs驱动下,该模型的效率为bb0.80,而在sbpp驱动下,该模型的效率为< 0.08。在sbpp中,PERSIANN表现最好。本研究的结果将为未来在Seethawaka流域使用SbPPs进行的研究提供有用的见解和建议。本研究结果要求对热带地区PERSIANN系列降雨产品的降雨估计技术中的检索算法进行改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
AIMS Geosciences
AIMS Geosciences GEOSCIENCES, MULTIDISCIPLINARY-
自引率
7.70%
发文量
31
审稿时长
8 weeks
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