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Article

Estimation of Real-Time Rainfall Fields Reflecting the Mountain Effect of Rainfall Explained by the WRF Rainfall Fields

1
Major of Environmental Engineering, Division of Earth Environmental System Science, Pukyong National University, Busan 48513, Republic of Korea
2
Forecast and Control Division, Nakdong River Flood Control Office, Busan 49300, Republic of Korea
3
Hydro Science and Engineering Research Institute, Korea Institute of Civil Engineering and Building Technology (KICT), Goyangsi 10223, Republic of Korea
4
Water Resources & Environmental Research Center, K-Water Research Institute, Daejeon 34350, Republic of Korea
*
Author to whom correspondence should be addressed.
Water 2023, 15(9), 1794; https://doi.org/10.3390/w15091794
Submission received: 2 March 2023 / Revised: 21 April 2023 / Accepted: 4 May 2023 / Published: 7 May 2023
(This article belongs to the Special Issue Intelligent Modelling for Hydrology and Water Resources)

Abstract

:
The effect of mountainous regions with high elevation on hourly timescale rainfall presents great difficulties in flood forecasting and warning in mountainous areas. In this study, the hourly rainfall–elevation relationship of the regional scale is investigated using the hourly rainfall fields of three storm events simulated by Weather Research and Forecasting (WRF) model. From this relationship, a parameterized model that can estimate the spatial rainfall field in real time using the hourly rainfall observation data of the ground observation network is proposed. The parameters of the proposed model are estimated using eight representative pixel pairs in valleys and mountains. The proposed model was applied to the Namgang Dam watershed, a representative mountainous region in the Korea, and it was found that as elevation increased in eight selected pixel pairs, rainfall intensity also increased. The increase in rainfall due to the mountain effect was clearly observed with more rainfall in high mountainous areas, and the rainfall distribution was more realistically represented using an algorithm that tracked elevation along the terrain. The proposed model was validated using leave-one-out cross-validation with seven rainfall observation sites in mountainous areas, and it demonstrated clear advantages in estimating a spatial rainfall field that reflects the mountain effect. These results are expected to be helpful for flood forecasting and warning, which need to be calculated quickly, in mountainous areas. Considering the importance of orographic effects on rainfall spatial distribution in mountainous areas, more storm events and physical analysis of environmental factors (wind direction, thermal cycles, and mountain slope angle) should be continuously studied.

1. Introduction

The complex topography of the Korea, with many mountainous areas, has a significant impact on the spatial pattern of rainfall. Previous studies have highlighted the importance of orographic effects on the spatial distribution of rainfall in mountainous areas [1,2,3,4,5,6,7,8]. The mountain effect, also known as the orographic effect, may cause rainfall intensification, acting as a precursor of convective storm formation [9,10]. It is expected that climate change caused by global warming will intensify the spatio-temporal variability of rainfall and extreme phenomena [11], and this mountain effect can be strengthened. However, most previous studies have focused on rainfall over longer timescales, such as daily, monthly, and yearly timescales. The effect of mountains on the spatial distribution of rainfall is more pronounced in the long timescale, while the relationship between rainfall and elevation becomes more complex in the short timescale [12]. Nonetheless, for the flood forecasting and warning, the influence of elevation at these shorter timescales is critical, especially in mountainous areas with a limited number of ground rainfall observation sites. External drift kriging and co-kriging methods using the statistical relationship between ground observed rainfall data and elevation have been used to obtain the rainfall field in the void space of the ground observation network [13,14,15]. However, on a short timescale, there are often cases where rainfall occurs only in some areas, and it is often impractical to estimate an appropriate variogram in real time, making it difficult to apply models based on kriging.
The scarcity of studies investigating the relationship between rainfall and elevation on short timescales can be attributed to the limited spatial density of ground observation networks in mountainous areas. Typically, the maximum spatial scale for investigating the rainfall–elevation relationship at the hourly timescale is considered to be the meso-γ-scale, which is approximately around 5 km. [16,17]. However, in most regions, including the Korea, it is challenging to find ground observation networks with such high spatial density. Consequently, the current ground rainfall observation network may underestimate or overestimate the spatial rainfall of the watershed, leading to distortions not only in the estimation of flood volume but also in the assessment of the watershed’s hydrologic cycle.
Over the last 30 years, there has been a significant improvement in the quality of rainfall simulations produced by numerical weather forecasting models at global, regional, and local scales. For example, Ohara et al. [18] successfully reconstructed past typhoon precipitation using MM5 (Fifth-Generation Penn State/NCAR Mesoscale Model) [19], while Wu et al. [20] simulated typhoon rainfall using various weather prediction numerical models such as the WRF (Weather Research and Forecasting) model, HWRF (Hurricane Weather Research and Forecasting) model, MM5, and CReSS (Cloud Resolving Storm Simulator) and identified the optimal combination of these ensembles. Karki et al. [21] used WRF to simulate extreme heavy rain events in Nepal and evaluated the location and intensity of rainfall events through sensitivity analysis of the physical options in WRF. Similarly, Patel et al. [22] utilized WRF to predict extreme flooding in western coastal cities of India, and Caumont et al. [23] simulated extreme storm events in France using a weather prediction numerical model. While numerical weather forecasting models excel in consistently simulating the dynamics of the atmosphere and addressing orographic precipitation generation mechanisms more accurately [9], their long computing time makes them unsuitable for forecasting and warning purposes.
This study aims to estimate a real-time rainfall field in the Namgang Dam watershed by using rainfall data observed at ground observation sites. The purpose is to improve the reliability of flood estimation for flood forecasting and warning in the mountainous region. The focus of the research is on extreme rainfall and its spatio-temporal distribution, with a perspective on hydrology and disaster prevention. This approach may differ from research that takes into account various weather factors such as atmospheric pressure and wind speed.
The research schematic diagram depicted in Figure 1 illustrates the methodology used in this study. The rainfall time series from 2001 to 2020 in the target area were analyzed, and storm events were selected and simulated using the WRF model. The spatial rainfall field is reconstructed from the WRF simulation results through bias correction using ground observation data. The INCA (Integrated Nowcasting through Comprehensive Analysis) algorithm, developed by ZAMG (Austrian Central Institute for Meteorology and Geodynamics), is applied to quantify the relationship between rainfall and elevation in the Namgang Dam watershed using the reconstructed rainfall field and ground observation data. Additionally, a rainfall field estimation model, which is associated with elevation, is proposed based on this relationship. Finally, the practical applicability of the proposed model is assessed using leave-one-out cross-validation (LOOCV) for seven ground observation sites in the mountainous region of the Namgang Dam watershed.

2. Materials and Methods

2.1. Target Area and Storm Events

The Namgang Dam watershed is a representative mountainous region in the Korea, with a highest elevation of 1853 m and a lowest elevation of 35 m based on a digital elevation model with a spatial resolution of 90 m. For this study, the target area shown in Figure 2 was selected, which includes 55 ground rainfall observation sites. The elevation of the lowest operating site is 4.5 m, while the highest site has an elevation of 1087.9 m.
Storm events that occurred in 2003, 2007, and 2020 were selected for WRF modeling. The storm event that occurred in 2003 was associated with Typhoon Maemi, which recorded the highest accumulated rainfall (about 250 mm) in the Namgang Dam watershed among typhoons that have affected the Korea in the past 30 years. The storm event that occurred in 2007 was selected from among the storm events that showed an abnormally large runoff rate in Namgang Dam watershed. This storm event was also related to Typhoon Nari, and the official record of the inflow of flooding from Namgang Dam showed a runoff rate of 1.02 at this time. The storm events that occurred in 2020 were chosen as relatively recent extreme storm events. This storm event showed a pattern of torrential rainfall that was not related to a typhoon, and it is a storm event that occurred during an unprecedentedly long rainy season.

2.2. WRF

WRF (Weather Research and Forecasting) is a community weather forecasting numerical model developed in cooperation with more than 150 organizations around the world, centered on the US National Center for Atmospheric Research (NCAR). As of 10 May 2021, version 4.3 is provided, and this version was used in this study.
To simulate rainfall using WRF, it is necessary to explore the scheme of physics options suitable for the target area and storm event [22]. Among the physical options generally used in WRF, MP (microphysics), CU (cumulus parameterization), and PL (planetary boundary layer) are known as major physical options that affect rainfall [24,25]. In addition to these physical options, RA_L (longwave radiation) and RA_S (shortwave radiation) have been added to the latest version of WRF. In this study, the selected storm events were reproduced by numerical experiments with various combinations of schemes available in the five physics options. Various experiments were performed, consisting of the seven different MP (Goddard 4-ice, Ferrier Eta, Stony-Brook University, Thompson, WRF Double Moment 6-class, WRF Single-Moment 5-class, and WRF Single-Moment 6-class scheme), four CP (Betts–Miller–Janjic, Kain–Fritsch, New Tiedtke, and Tiedtke scheme), two different PL (Mellor–Yamada–Janjic, Yonsei University scheme), two different RA_L (RRTM, RRTMG scheme), and two different RA_S (Dudhia, RRTMG scheme) schemes.
The spatial domain driving the WRF consists of three-level domains. The final domain was configured with a spatial resolution of 3 km (see Figure 3). However, the simulated rainfall fields were analyzed by limiting them to the area corresponding to Figure 2 inside the domain D-3.
Even if a storm event is reconstructed using the combination of physics options–scheme that is most appropriate for each storm event, the observed rainfall from ground observation networks cannot be fully reproduced. In this study, conditional merging (CM) [26] was used to perform bias correction for the simulated rainfall field through the following procedure:
(1) Obtain the rainfall field R s ( x ) simulated by WRF.
(2) Generate the interpolated spatial rainfall field R k o ( x ) using co-kriging from ground observation network data.
(3) Generate the rainfall field R k s ( x ) interpolated by co-kriging by extracting data of pixels where the ground observation network is located from R s ( x ) .
(4) Calculate the difference of the simulated and observed rainfall fields as R s x = R s x R k s ( x ) .
(5) Obtain the bias-corrected rainfall field R c s x = R k o x + R s ( x ) , where R c s x represents the bias-corrected rainfall field, R k o x represents the interplated spatial rainfall field.

2.3. Estimation Model of Rainfall Field Associated with Elevation

The algorithm introduced in this study has been successfully applied to the Austrian INCA nowcasting system [27,28], and relatively recently applied to account for the mountain effect of rainfall near Beijing, China [29]. The rainfall field estimation algorithm considering the elevation effect on rainfall is designed depending on the magnitude of the rainfall intensity. The equation of the proposed algorithm is as follows.
P m = P v ( a b · P v ) P v + ( a 1 b · P c ) P c ,   f o r   P v P c ,   f o r   P v > P c
where P m and P v are mountain and valley rainfall, respectively, and P c = ( a 1 ) / ( 2 b ) . Parameters a and b were estimated to minimize the difference between observed P m (simulated by the WRF in this study) and the calculated P m using Equation (1).
To extend the relationship in the mountain–valley station pair to the rainfall field, we first construct the station-based terrain Z s t ( i , j ) interpolated with the inverse distance weighting method (IDW) using the elevation of the pixel where the station is located. Here, ( i , j ) denotes a pixel position, i denotes a longitude direction, and j denotes a latitude direction. Then, using the relationship between valley and mountain rainfall in Equation (1), the relative rainfall increment field is calculated as follows.
G i , j = P m i , j P v ( i , j ) z r
where P v is a rainfall field that interpolates rainfall data of a pixel with an observation site using IDW, and P m can be calculated by applying the parameters a , P c , and P v to Equation (1). The z r is the average elevation difference of mountain–valley pixels used to construct the relationship of Equation (1) ( z r = 528 m in this study). That is, G is the rainfall increment per unit meter of mountain.
Therefore, the geographic rainfall increases due to the elevation effect P can be obtained as follows.
P i , j = G ( i , j ) · [ Z H ^ i , j Z S T ( i , j ) ]
where Z H ^ conceptually represents the actual elevation, but because the reduction in the mountain effect at a high elevation above a certain level should be reflected, the adjusted elevation is applied as follows.
Z H ^ = Z M A X Z · e x p Z H Z M A X + Z Z Z H , f o r   Z H > Z M A X Z , f o r   Z H Z M A X Z
where Z H is the actual elevation, and Z m a x and Z are 1500 m and 250 m, respectively.
Finally, the hourly rainfall field P E considering the mountain effect is composed as follows.
P E i , j = P v i , j + P i , j ,   for   P i , j > 0
In this case, P E i , j = P v i , j is applied to a pixel with P i , j 0 .

3. Results and Discussion

3.1. WRF Simulation Results

In order to run WRF, initial and boundary conditions are necessary, and these have a significant impact on the simulated results of WRF. For initial and boundary condition data, the following data are commonly used: (1) National Centers for Environmental Prediction (NCEP) Final Operation Model Global Tropospheric Analyses (hereinafter referred to as NCEP-FNL); (2) NCEP’s GDAS/FNL 0.25 Degree Global Tropospheric Analyses and Forecast Grids (hereinafter NCEP-GDAS/FNL); (3) ERA-Interim Project (hereinafter ERA-Interim) of the European Center for Medium-range Weather Forecasts (ECMWF); and (4) ERA 5 Reanalysis of ECMWF (ERA5). Among them, ERA5, which provides information at 1 h intervals and a resolution of 0.25°, has been judged to be particularly useful due to its high resolution and accuracy. It also showed the best agreement when compared with the ASOS (Automated Synoptic Observing System) and AWS (Automatic Weather System) data of the Korea Meteorological Administration. Therefore, in this study, initial and boundary condition data were constructed based on ERA5. However, the initial and boundary conditions generated with a spatial resolution of 0.25° are difficult to reconstruct the detailed spatial distribution expressing the extreme values, so the initial and boundary conditions were improved using additional data. In this study, the initial and boundary condition data were improved by additionally inputting NCEP ADP Global Surface Observational Weather Data, which is the surface and sea level observation data constructed in NCEP ADP Global Upper Air Observational Weather Data and the Global Telecommunications System (GTS), which includes various terrestrial and satellite observation systems operated by NCEP.
Numerical experiments were performed by configuring various combinations for each storm event to select the optimal combination of physics options–scheme. The number of combinations mentioned in Section 2.2 is a total of 224, and it is not practically appropriate to conduct numerical experiments for all of them to reconstruct a single storm event. Therefore, referring to the existing literature conducted on the Korean region (e.g., [30,31,32,33,34]), numerical experiments were performed by configuring as few as 15 combinations and as many as 37 combinations for each storm event. Table 1 shows the optimal physics option–scheme combination corresponding to each storm event.
In order to examine the spatial reproducibility of the simulated storm event, Figure 4 shows the rainfall field which was interpolated by the co-kriging method of the accumulated rainfall observed from the ground observation network (obs in Figure 4), the simulated accumulated rainfall from the WRF (WRF in Figure 4), and the cumulative rainfall field which was bias-corrected for each hour of the WRF rainfall field using CM (CM in Figure 4). WRF simulated a lot of rainfall in the middle of Jirisan Mountain (southwest of Namgang Dam watershed) for all three storm events, and it can be confirmed that this is similar to the spatial distribution of the observed rainfall field. Although there is a difference between the cumulative rainfall of WRF and the observed cumulative rainfall, it can be found that this difference is removed by performing bias correction using CM.
Figure 5 shows the temporal distribution of spatially averaged rainfall for each storm event. While WRF rainfall reconstructs the temporal distribution of the observed rainfall well for Events 2003 and 2007, it does not reconstruct this for Event 2020. Nevertheless, performing bias correction using CM enables the temporal distribution of rainfall to also closely match the observed distribution. For reference, the total cumulative rainfall of the reanalysis data and satellite data for Event 2020 was reviewed, and it was confirmed that there is a difference in the point where the peak occurred, and that the amount of rainfall is also underestimated (Figure S1 in the Supplementary Material).

3.2. Results from the Elevation-Associated Rainfall Field Estimation Model

The data used to estimate the parameters of the proposed model are the rainfall fields of the WRF corresponding to the three storm events, which were bias-corrected by CM. The spatial resolution of the final domain of the WRF applied in this study is 3 km, resulting in a rainfall field consisting of pixels with 30 rows and 25 columns. The temporal resolution of the rainfall field is 1 h, and the total simulated time for the three storm events is 420 h.
Table 2 provides information of eight representative pixel pairs located in valleys and mountains, respectively. Representative pixel pairs were selected based on pixels with actual ground observation sites. The top pixel represents the mountain, while the bottom pixel represents the valley. Table 2 shows the inclination direction, horizontal distance difference, and vertical height difference in the WRF pixel system in addition to the observation site name. To examine the relationship between rainfall and elevation, it is crucial to select pixel pairs that represent the same aspect. The horizontal distance difference ( x ) between the paired valley and mountain pixels was limited to within about 5 km, and the vertical elevation difference ( z ) was limited to between 450 m and 750 m.
The increase in rainfall due to the mountain effect was analyzed for eight selected pixel pairs in valleys and mountains. The accumulated total rainfall in hourly timescale rainfall data is generally higher for mountain pixels than for valley pixels (Table 3). The difference in average rainfall intensity between mountain and valley pixels is 0.317–1.08 mm/h. When comparing the results of previous studies [29], this small difference may be attributed to the uncertainty of simulated precipitation by WRF. However, it is not appropriate to characterize this difference as being due to model uncertainty because the rainfall intensity at the mountain pixels is consistently greater than the rainfall intensity at the corresponding valley pixels. In Table 3, EF (Enhancement Factor) is defined as the relative ratio of average rainfall intensity between mountain and valley pixels depending on the change in terrain elevation. EF ranges from 1.14 to 1.41 for eight mountain-valley pixel pairs, all greater than 1.0. This means that rainfall intensity increases with increasing elevation.
The above analysis suggests that rainfall in the Namgang Dam watershed is influenced by the mountains. However, it is still difficult to model the rainfall–elevation relationship on the hourly timescale due to its complex variability. Figure 6 shows an example of a scatter plot of rainfall intensity in valleys and mountains using data from the first representative pixel pair. On the hourly timescale, the distribution of rainfall intensity is widely scattered. The figure suggests a weak linear relationship with a slope of about 1.24 (constant factor in Figure 6) for valley rainfall intensity up to about 50 mm/h. However, applying this relationship to all rainfall intensities overestimates the rainfall intensities of mountain pixels. Using a linear relationship, the total rainfall at the mountain pixel would be well reproducible, but conversely, it would underestimate the mountain effect for many rainfall intensities below about 10 mm/h at the valley pixel. For reference, WREPN in Figure 6 is an abbreviation of WRF Rainfall–Elevation Parameterized Nowcasting, and this represents the relationship between rainfall and elevation by the model proposed in this study.
The parameters of the proposed model were estimated using the data of eight pixel pairs in Table 2. For parameter estimation, the Markov Chain Monte Carlo (MCMC) algorithm, which can estimate the posterior distribution, was applied. As sampling algorithms, Metropolis–Hastings, Gibbs Sampling, Hamiltonian Monte Carlo, and No-U-Turn Sampler are widely used. In this study, the Metropolis–Hastings algorithm [35,36,37,38] was used, which is relatively simple and easy to apply and has a low computational cost compared to other algorithms in some cases. First, the values of the parameters estimated from the rainfall fields of two different storm events are presented in Table 4. It can be found that the difference in the values of the estimated parameters in each data set is not large. Finally, the rainfall fields of all three storm events were used to determine the values of the parameters (last column in Table 4). Sensitivity analysis for the parameters was not performed in this study and will be reviewed in a future study.
The rainfall fields considering the elevation effect were obtained from the proposed model using rainfall data in pixels with observation sites in the Namgang Dam watershed. Figure 7 shows the cumulative rainfall field simulated by WRF-CM for each storm event (left panel, WRF-CM), the cumulative rainfall field interpolated with IDW using rainfall data from pixels with observed sites (middle panel, IDW), and the cumulative rainfall field by the proposed model (right panel, WREPN), respectively. Figure 7 shows that the proposed model can be usefully applied to realize the spatial distribution of precipitation in mountainous areas. Comparison of IDW (Figure 7b,e,h) and WREPN (Figure 7c,f,i) in the region with high-elevation pixels and the region with low-elevation pixels reveals that the two rainfall fields are mostly similar in the low-elevation region. However, it can be said that the proposed model explains the rainfall fields better, as the rainfall field by WREPN in the high-elevation region is more similar to that of WRF-CM (Figure 7a,d,g). The increase in rainfall due to the mountain effect is evident with more rainfall in high mountains. In addition, rainfall distributions appear more realistic using an elevation-reflected algorithm that tracks along the terrain. In the low-lying area, there is little influence of elevation, so it is difficult to find the characteristics of the rainfall distribution. In fact, the Namgang Dam watershed has a relatively high density of rainfall observation networks compared to other areas in the Korea. The proposed model will play a more important role in representing the mountainous effect of rainfall in regions with low network density.

3.3. Validation

For validation of the proposed model, seven storm events that occurred in the past in the Namgang Dam watershed were used. The seven historical storm events used are summarized in Table 5.
The validation method was performed using the concept of leave-one-out cross-validation (LOOCV) as follows.
(1) Excluding 1 site out of 55 sites.
(2) Calculate rainfall fields from IDW using data from sites other than the excluded site.
(2-1) Compare rainfall data observed at the excluded site with rainfall data interpolated from IDW at that site location.
(3) Calculate rainfall fields from the proposed model using data from sites other than the excluded site.
(3-1) Compare rainfall data observed at the excluded site with rainfall data simulated from WREPN at that site location.
(4) Repeatedly changing the excluded site.
Table 6 shows information about the sites selected for validation. The validation sites were selected from among the top 10 sites among the 55 sites applied in this study. Three of these ten sites were not suitable for performing validation due to intermittent missing data. The elevations of the selected sites ranged from 515 m to 1018 m.
As performance indicators for validation, Nash–Sutcliffe efficiency (NSE, [39]) and percent mean difference (PMD) were used. NSE is a representative performance index that evaluates the prediction performance of hydrologic models and is calculated as in the following Equation (6), and the closer it is to 1, the better the performance.
N S E = 1 t = 1 T P o ( t ) P s ( t ) 2 t = 1 T ( P o ( t ) P o ) 2
where P o is the mean of observed rainfall data, and P s is simulated rainfall data. P o ( t ) is observed rainfall data at time t .
PMD is an index that evaluates the prediction performance of the total rainfall for each event at each site. It is calculated as Equation (7) below, and P s is the mean of simulated rainfall data. The closer it is to 0, the better the performance, and negative numbers indicate underestimation and positive numbers indicate overestimation.
P M D = P s P o P o × 100
Figure 8 shows a box plot of performance index results for seven sites for each storm event. Although there are differences in the performance index for each storm event, the results show that WREPN performs relatively better than IDW. Based on the median value of NSE, WREPN predicts rainfall more accurately than IDW for all storm events at ungauged pixels. Both IDW and WREPN have a tendency to underestimate rainfall in mountainous areas (see PMD box plot in Figure 8). However, the data indicate that WREPN has the advantage of reducing this tendency of underestimation.
Figure 9 shows a box plot of performance index results for seven storm events for each site. Although there are differences in the performance index for each site, it can be seen that WREPN performs relatively better than IDW. Based on the median value of NSE, the prediction performance of WREPN is superior to that of IDW in all sites except Site 26. For reference, Site 26 is the second lowest elevation among the seven applied sites. At the highest elevation, Site 43, the NSE results indicate that WREPN accurately reflects the mountainous effect of rainfall in the Namgang Dam watershed, while IDW underestimates rainfall by more than 20% at Sites 10, 43, and 44 with relatively high elevation. However, WREPN significantly reduces the degree of underestimation at these sites. Additionally, WREPN slightly overestimates rainfall at Site 43.
Figure 10 shows the aggregated performance index of the LOOCV results for all storm events and all sites. Based on the median, WRPEN recognized that the NSE is 0.8 or more and can predict the rainfall in the mountainous area well. Additionally, PMD, which means percent error of total rainfall, shows performance within 5%. Figure 10 shows that the model proposed in this study adequately reflects the mountain effect of rainfall in the Namgang Dam watershed.

4. Conclusions

In this study, an algorithm was proposed to investigate the relationship between rainfall and elevation in the Namgang Dam watershed using high-resolution rainfall data from three storm events simulated by WRF and to consider the influence of elevation on hourly timescale rainfall. The simulation results of WRF confirmed an increase in rainfall due to the elevation effect in the Namgang Dam watershed. The analysis of eight representative pixel pairs in valleys and mountains suggests an increase in rainfall intensity for higher mountains. Rainfall data from eight representative pixel pairs were used to estimate the parameters of the proposed model. The proposed model shows parabolic increments for relatively small rainfall intensities and linear increments for relatively large rainfall intensities. It was confirmed that rainfall intensity in mountainous areas can be more realistically simulated using the algorithm that reflects the elevation effect compared with the result without elevation correction. This indicates that the proposed model can better estimate the spatial distribution of rainfall in the Namgang Dam watershed. Meanwhile, the proposed algorithm can be applied to the generation of real-time spatial rainfall distribution for flood prediction and warning in the Namgang Dam watershed. The results of leave-one-out cross-validation using seven storm events in the Namgang Dam watershed and seven sites in the mountainous area show that the proposed model can improve the prediction of rainfall intensity, especially in the mountainous area.
However, further studies are still needed to address some limitations of this study. Firstly, the present study considered the influence of elevation depending on the magnitude of rainfall intensity to minimize the computation time required for generating the real-time spatial rainfall field for flood forecasting and warning in terms of hydrology and disaster prevention. Since the actual relationship between rainfall and elevation is more complex, detailed physical analysis need to be conducted, and various environmental factors such as wind direction, thermal cycles, and mountain slope angle must be taken into account. Secondly, because the parameters of the proposed model were estimated based on rainfall data from only three storm events simulated by WRF, it is insufficient to generalize the results of this study. For practical applications, more storm events will be needed to accurately estimate model parameters. Finally, in the methodology proposed in this study, if there is an error in the simulation results of WRF, the reliability of the results will be significant affected. Although possible reliability was ensured through bias correction using ground observation data, a follow-up study using radar rainfall data that can provide detailed spatial information needs to be conducted. Additionally, because the focus of this study was on the amount of rainfall, additional physical analysis should be conducted through multidisciplinary cooperation to secure scientific validity. Given the characteristics of the Korea’s topography, which mostly consists of mountainous terrain, the effect of mountains on rainfall is an important topic for further study.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/w15091794/s1. Figure S1. Spatial distribution of the cumulative rainfall depth (mm) of the 2020 event (a) ground observation data using kriging method, (b) NCEP GDAS/FNL data, (c) GSMaP data of JAXA.

Author Contributions

Conceptualization, J.L. and S.K.; methodology, O.L. and J.C.; software, O.L. and S.K.; validation, J.S. and J.W.; formal analysis, J.L. and S.J.; Investigation, J.L. and J.C.; resources, J.L.; writing—original draft preparation, O.L. and S.K.; writing—review and editing, J.L. and S.J.; visualization, O.L.; supervision, S.K.; project administration, S.K.; funding acquisition, S.K. All authors have read and agreed to the published version of the manuscript.

Funding

This work was funded by the National Research Foundation of Korea (NRF) grant funded by the Korea government (MSIT) (No. NRF-2022R1A2B5B01001750).

Data Availability Statement

The data that support the findings of this study are available from the corresponding author upon reasonable request.

Acknowledgments

This work was supported by the National Research Foundation of Korea (NRF) grant funded by the Korea government (MSIT) (No. NRF-2022R1A2B5B01001750).

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Schematic diagram for research.
Figure 1. Schematic diagram for research.
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Figure 2. Target area and ground rainfall observation sites.
Figure 2. Target area and ground rainfall observation sites.
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Figure 3. WRF model domain for rainfall simulation.
Figure 3. WRF model domain for rainfall simulation.
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Figure 4. Cumulative rainfall depth by spatial rainfall field estimation for three storm events. (a1a3) Kriging results based on ground observation data, (b1b3) WRF original result, (c1c3) WRF result with bias correction using CM technique.
Figure 4. Cumulative rainfall depth by spatial rainfall field estimation for three storm events. (a1a3) Kriging results based on ground observation data, (b1b3) WRF original result, (c1c3) WRF result with bias correction using CM technique.
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Figure 5. Temporal distribution of spatially averaged rainfall intensity for three storm events.
Figure 5. Temporal distribution of spatially averaged rainfall intensity for three storm events.
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Figure 6. Scatter plot of hourly rainfall intensities at the valley and mountain for first pixel pair.
Figure 6. Scatter plot of hourly rainfall intensities at the valley and mountain for first pixel pair.
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Figure 7. Cumulative rainfall field by storm event according to spatial rainfall field estimation method. (a) WRF-CM result for Event 2003, (b) IDW result for Event 2003, (c) WREPN result for Event 2003, (d) WRF-CM result for Event 2007, (e) IDW result for Event 2007, (f) WREPN result for Event 2007, (g) WRF-CM result for Event 2020, (h) IDW result for Event 2020, (i) WREPN result for Event 2020.
Figure 7. Cumulative rainfall field by storm event according to spatial rainfall field estimation method. (a) WRF-CM result for Event 2003, (b) IDW result for Event 2003, (c) WREPN result for Event 2003, (d) WRF-CM result for Event 2007, (e) IDW result for Event 2007, (f) WREPN result for Event 2007, (g) WRF-CM result for Event 2020, (h) IDW result for Event 2020, (i) WREPN result for Event 2020.
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Figure 8. Performance index results for seven sites for each storm event through LOOCV analysis.
Figure 8. Performance index results for seven sites for each storm event through LOOCV analysis.
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Figure 9. Performance index results for seven storm events for each site through LOOCV analysis.
Figure 9. Performance index results for seven storm events for each site through LOOCV analysis.
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Figure 10. Aggregated performance index results using LOOCV analysis for all storm events and all sites.
Figure 10. Aggregated performance index results using LOOCV analysis for all storm events and all sites.
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Table 1. Optimal scheme combination for each storm event.
Table 1. Optimal scheme combination for each storm event.
Storm EventEvent 2003Event 2007Event 2020
MPWRF Single-Moment 6-classWRF Single-Moment 6-classThompson scheme
CUNew Tiedtke schemeNew Tiedtke schemeTiedtke scheme
PBMellor–Yamada–Janjic schemeYonsei University schemeYonsei University scheme
RA_LRRTMG schemeRRTMG schemeRRTMG scheme
RA_SRRTMG schemeRRTMG schemeRRTMG scheme
Table 2. Topographic characteristics of pixel pairs.
Table 2. Topographic characteristics of pixel pairs.
No.Pixel
(Row, Column)
Station IDAspect x (km) z (m)
1(18, 9)
(17, 8)
 
KW 20184190
NW4.2689
2(20, 4)
(19, 4)
 
KW 20184210
N3.0458
3(19,10)
(20,11)
 
KW 20184260
SE4.2518
4(19, 6)
(18, 7)
MOE 20184150
 
NE4.2507
5(7, 9)
(8, 8)
 
AWS 914
SW4.2491
6(21, 4)
(22, 5)
 
AWS 945
NE4.2483
7(21, 4)
(22, 5)
 
AWS 791
SE4.2533
8(22, 8)
(23, 7)
 
AWS 906
SW4.2545
Table 3. Characteristics of rainfall between each pixel pair located at mountain and valley, including mean rainfall intensity and ratio of the mountain to valley rainfall totals (EF) during three storm events.
Table 3. Characteristics of rainfall between each pixel pair located at mountain and valley, including mean rainfall intensity and ratio of the mountain to valley rainfall totals (EF) during three storm events.
Pixel No.Mean Rainfall Intensity (mm/h)EF
MountainValley
13.69642.61491.4136
23.47473.03651.1443
34.11593.41851.2040
43.14092.76691.1352
52.54492.11381.2039
62.54392.22681.1424
73.69703.16001.1699
83.29742.64671.2458
Table 4. Estimated optimum parameter values for storm events.
Table 4. Estimated optimum parameter values for storm events.
Event2003 and 20072007 and 20202020 and 2003All Events
a (-)1.621.651.551.65
P c (mm/h)5.856.445.776.70
Table 5. Key specifications of storm events used for validation of the proposed model.
Table 5. Key specifications of storm events used for validation of the proposed model.
EventThe Time the Storm Event OccurredDuration (h)Rainfall Depth (mm)
11 August 2014 22:0076252
211 July 2015 14:0049172
327 August 2012 20:0027125
429 June 2018 21:00103156
521 August 2013 19:0080140
623 August 2018 01:0039102
719 August 2017 13:008692
Table 6. Specifications of sites in mountainous areas selected for validation of the proposed model.
Table 6. Specifications of sites in mountainous areas selected for validation of the proposed model.
No.Site IDLatitude (°)Longitude (°)Elevation (m)
7KW20184210127.546135.3469630
10KW20184240127.723935.2842660
12KW20184260127.786435.3147 640
26MOE20184150127.641935.3597568
43AWS315127.510835.30671088
44AWS872127.756435.3192869
54AWS856127.598235.1018515
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MDPI and ACS Style

Lee, J.; Lee, O.; Choi, J.; Seo, J.; Won, J.; Jang, S.; Kim, S. Estimation of Real-Time Rainfall Fields Reflecting the Mountain Effect of Rainfall Explained by the WRF Rainfall Fields. Water 2023, 15, 1794. https://doi.org/10.3390/w15091794

AMA Style

Lee J, Lee O, Choi J, Seo J, Won J, Jang S, Kim S. Estimation of Real-Time Rainfall Fields Reflecting the Mountain Effect of Rainfall Explained by the WRF Rainfall Fields. Water. 2023; 15(9):1794. https://doi.org/10.3390/w15091794

Chicago/Turabian Style

Lee, Jeonghoon, Okjeong Lee, Jeonghyeon Choi, Jiyu Seo, Jeongeun Won, Suhyung Jang, and Sangdan Kim. 2023. "Estimation of Real-Time Rainfall Fields Reflecting the Mountain Effect of Rainfall Explained by the WRF Rainfall Fields" Water 15, no. 9: 1794. https://doi.org/10.3390/w15091794

APA Style

Lee, J., Lee, O., Choi, J., Seo, J., Won, J., Jang, S., & Kim, S. (2023). Estimation of Real-Time Rainfall Fields Reflecting the Mountain Effect of Rainfall Explained by the WRF Rainfall Fields. Water, 15(9), 1794. https://doi.org/10.3390/w15091794

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