Abstract

Abstract. Current global precipitation (P) datasets do not take full advantage of the complementary nature of satellite and reanalysis data. Here, we present Multi-Source Weighted-Ensemble Precipitation (MSWEP) version 1.1, a global P dataset for the period 1979–2015 with a 3-hourly temporal and 0.25° spatial resolution, specifically designed for hydrological modeling. The design philosophy of MSWEP was to optimally merge the highest quality P data sources available as a function of timescale and location. The long-term mean of MSWEP was based on the CHPclim dataset but replaced with more accurate regional datasets where available. A correction for gauge under-catch and orographic effects was introduced by inferring catchment-average P from streamflow (Q) observations at 13 762 stations across the globe. The temporal variability of MSWEP was determined by weighted averaging of P anomalies from seven datasets; two based solely on interpolation of gauge observations (CPC Unified and GPCC), three on satellite remote sensing (CMORPH, GSMaP-MVK, and TMPA 3B42RT), and two on atmospheric model reanalysis (ERA-Interim and JRA-55). For each grid cell, the weight assigned to the gauge-based estimates was calculated from the gauge network density, while the weights assigned to the satellite- and reanalysis-based estimates were calculated from their comparative performance at the surrounding gauges. The quality of MSWEP was compared against four state-of-the-art gauge-adjusted P datasets (WFDEI-CRU, GPCP-1DD, TMPA 3B42, and CPC Unified) using independent P data from 125 FLUXNET tower stations around the globe. MSWEP obtained the highest daily correlation coefficient (R) among the five P datasets for 60.0 % of the stations and a median R of 0.67 vs. 0.44–0.59 for the other datasets. We further evaluated the performance of MSWEP using hydrological modeling for 9011 catchments (< 50 000 km2) across the globe. Specifically, we calibrated the simple conceptual hydrological model HBV (Hydrologiska Byråns Vattenbalansavdelning) against daily Q observations with P from each of the different datasets. For the 1058 sparsely gauged catchments, representative of 83.9 % of the global land surface (excluding Antarctica), MSWEP obtained a median calibration NSE of 0.52 vs. 0.29–0.39 for the other P datasets. MSWEP is available via http://www.gloh2o.org.

Highlights

  • A quantitative appraisal of precipitation (P ) amount and of its spatiotemporal distribution is essential for many scientific and operational applications, including but not limited to increasing our understanding of the hydrological cycle, assessing the hydrological impacts of human activities, assessing water resources, irrigation planning, and forecasting of droughts and floods

  • The temporal variability of Multi-Source Weighted-Ensemble Precipitation (MSWEP) was determined by weighted averaging of P anomalies from seven datasets; two based solely on interpolation of gauge observations (CPC Unified and Global Precipitation Climatology Centre (GPCC)), three on satellite remote sensing (CMORPH, Global Satellite Mapping of Precipitation (GSMaP)-Moving Vector with Kalman (MVK), and TRMM Multi-satellite Precipitation Analysis (TMPA) 3B42RT), and two on atmospheric model reanalysis (ERA-Interim and JRA-55)

  • Climate Hazards Group Precipitation Climatology (CHPclim) has been adjusted for orographic effects, it does not explicitly account for windinduced gauge under-catch and is likely to underestimate P, in snow-dominated regions

Read more

Summary

Introduction

A quantitative appraisal of precipitation (P ) amount and of its spatiotemporal distribution is essential for many scientific and operational applications, including but not limited to increasing our understanding of the hydrological cycle, assessing the hydrological impacts of human activities, assessing water resources, irrigation planning, and forecasting of droughts and floods Satellites are capable of observing large areas instantaneously at a high resolution They are suitable for rainfall estimation in the tropics, which exhibit highly heterogeneous rainfall patterns due to the importance of convective storms (Smith et al, 2005).

CRU 3 GPCC
12 TMPA 3B42
14 PFD 15 WFDEI
21 CMAP 22 MSWEP
MSWEP methodology
Bias correction of CHPclim
Bias correction using catch-ratio equations
Bias correction based on Q observations
Gauge-based evaluation of gridded P datasets
Merging procedure
Evaluation using FLUXNET gauge observations
Evaluation using hydrological modeling
Evaluation of MSWEP using FLUXNET gauge observations
Evaluation of MSWEP using hydrological modeling
Caveats and future work
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call