Abstract

Runoff prediction in limited-data areas is vital for hydrological applications, such as the design of infrastructure and flood defenses, runoff forecasting, and water management. Rainfall–runoff models may be useful for simulation of runoff generation, particularly event-based models, which offer a practical modeling scheme because of their simplicity. However, there is a need to reduce the uncertainties related to the estimation of the initial wetness condition (IWC) prior to a rainfall event. Soil moisture is one of the most important variables in rainfall–runoff modeling, and remotely sensed soil moisture is recognized as an effective way to improve the accuracy of runoff prediction. In this study, the IWC was evaluated based on remotely sensed soil moisture by using the Soil Conservation Service-Curve Number (SCS-CN) method, which is one of the representative event-based models used for reducing the uncertainty of runoff prediction. Four proxy variables for the IWC were determined from the measurements of total rainfall depth (API5), ground-based soil moisture (SSMinsitu), remotely sensed surface soil moisture (SSM), and soil water index (SWI) provided by the advanced scatterometer (ASCAT). To obtain a robust IWC framework, this study consists of two main parts: the validation of remotely sensed soil moisture, and the evaluation of runoff prediction using four proxy variables with a set of rainfall–runoff events in the East Asian monsoon region. The results showed an acceptable agreement between remotely sensed soil moisture (SSM and SWI) and ground based soil moisture data (SSMinsitu). In the proxy variable analysis, the SWI indicated the optimal value among the proposed proxy variables. In the runoff prediction analysis considering various infiltration conditions, the SSM and SWI proxy variables significantly reduced the runoff prediction error as compared with API5 by 60% and 66%, respectively. Moreover, the proposed IWC framework with remotely sensed soil moisture indicates an improved Nash–Sutcliffe efficiency from 0.48 to 0.74 for the four catchments in the Korean Peninsula. It can be concluded that the SCS-CN method extended with remotely sensed soil moisture for reducing uncertainty in the runoff prediction and the proxy variables obtained from the soil moisture data provided by the ASCAT can be useful in enhancing the accuracy of runoff prediction over a range of spatial scales.

Highlights

  • Soil moisture denotes the water content in the land surface and subsurface, and it affects the partitioning between runoff and infiltration, as well as mass and energy exchange between the land surface and atmosphere

  • It can be concluded that the Service-Curve Number (SCS-CN) method extended with remotely sensed soil moisture for reducing uncertainty in the runoff prediction and the proxy variables obtained from the soil moisture data provided by the advanced scatterometer (ASCAT) can be useful in enhancing the accuracy of runoff prediction over a range of spatial scales

  • The daily ASCAT soil moisture was validated using in situ measurements provided by the Rural Development Administration (RDA)

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Summary

Introduction

Soil moisture denotes the water content in the land surface and subsurface, and it affects the partitioning between runoff and infiltration, as well as mass and energy exchange between the land surface and atmosphere. The characteristics of the spatiotemporal variability of soil moisture are important indicators of subsurface water storage that influences the partitioning of rainfall into runoff and infiltration [3,4,5,6]. An accurate soil moisture observation can lead to improved hydrological modeling for both flood simulation and forecasting, as well as surface–ground water flow. It requires the development of an accurate and reliable soil moisture monitoring process with a suitable spatiotemporal resolution at the catchment scale. Direct soil moisture observation is not simple owing to spatiotemporal variability, heterogeneity in soil properties, and geographical location of the observatory [7]

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