Volume 147, Issue 739 p. 3335-3348
RESEARCH ARTICLE
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Predictability of moisture flux anomalies indicating central European extreme precipitation events

Blanka Gvoždíková,

Corresponding Author

Blanka Gvoždíková

Faculty of Science, Charles University, Prague, Czech Republic

Correspondence

B. Gvoždíková, Faculty of Science, Charles University, Albertov 6, 128 00, Prague 2, Czech Republic.

Email: blanka.gvozdikova@natur.cuni.cz

Contribution: Conceptualization, Data curation, Formal analysis, Methodology, Visualization, Writing - original draft

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Miloslav Müller,

Miloslav Müller

Faculty of Science, Charles University, Prague, Czech Republic

Institute of Atmospheric Physics AS CR, Prague, Czech Republic

Contribution: Conceptualization, Supervision, Writing - review & editing

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First published: 19 July 2021
Funding information Ministerstvo Školství, Mládeže a Tělovýchovy, LTC19043; The Ministry of Education, Youth and Sports

Abstract

Forecasting heavy precipitation has an important role in mitigating floods and associated hazards, but it remains one of the main challenges in operational meteorology. Our previous study confirmed the close connection between large-scale extreme precipitation events and anomalous moisture fluxes in central Europe. In this study, we introduce a variable accounting for the accumulated ascending moisture flux, which could potentially support extreme precipitation event forecasts. The variable reflects the total amount of transported water vapour in combination with extra high upward vertical velocity, which are important factors required for extreme precipitation occurrence. Looking at ERA-Interim forecasts, we aim to determine a practical predictability and forecast skill of accumulated ascending moisture flux and compare it with the forecast skill of precipitation. While the predictability of moisture flux itself is satisfactory, generally less accurate forecasts of the vertical velocity negatively affect the predictability of accumulated ascending moisture flux, especially in the case of summer precipitation events with prevailing northern moisture flux. Nevertheless, the forecast of the proposed variable was adequate and stable up to 6 days in advance in all cases of maximum events that produced major central European summer floods. There were no such stable forecasts for less extreme events or false-alarm precipitation extremes. Thus, we hypothesize that the calculation of the accumulated ascending moisture flux from numerical weather prediction could be useful as a supporting tool in extreme precipitation warnings in central Europe.

1 INTRODUCTION

Numerical weather prediction (NWP) models exhibit insufficient forecast skill for extreme precipitation events (EPEs), particularly due to the high spatial and temporal variability of precipitation (Sukovich et al., 2014). However, accurate forecasts of precipitation, particularly extreme events, are essential for mitigating the impact of possible precipitation extremes as well as subsequent floods, which can cause serious damage to society and ecosystems.

Our focus is large-scale extreme precipitation in central Europe, where events can be connected to synoptic-scale processes of moisture transport mainly from the Atlantic and the Mediterranean (Sodemann and Zubler, 2010; Hofstätter et al., 2017), which distinguish two main types of large-scale extreme precipitation in central Europe. However, when going into details, some studies suggest larger variability of synoptic-scale patterns that induce extreme precipitation and floods in the area (Jacobeit et al., 2006; Wypych et al., 2018).

The connection between hydrometeorological extremes in central Europe and synoptic types of subjective, mixed or objective classifications is relatively well discussed in the literature (e.g. Ustrnul and Czekierda, 2001; Jacobeit et al., 2006). In connection with extreme precipitation and floods, the classifications are often qualitative, that is, the circulation patterns are classified by similar fields of sea-level pressure or geopotential height (Mastrantonas et al., 2021), backward air trajectories (Seibert et al., 2007), cyclone tracks (Hofstätter et al., 2017), etc. However, when associated with extreme events, Müller and Kašpar (2010) emphasized the need to add a quantitative aspect to the classification process, which allows expressing the extremity of circulation conditions at different places.

Such a quantitative evaluation of the synoptic–dynamical conditions can be based on anomalies of some meteorological variables, including for example, potential vorticity, total column water vapour, vertical velocity, moisture flux, or a combination of several anomalous variables. The transport of moisture is often considered essential for the emergence of hydrometeorological extremes in central Europe. A close relationship between extreme floods and intense moisture transport has been demonstrated in the Alps by Froidevaux and Martius (2016), who examined the vertically integrated water vapour transport (IVT), and by Müller and Kašpar (2011), who focused on the moisture flux at single pressure levels. Outside central Europe, the importance of IVT as a predictor of heavy precipitation was highlighted by Grazzini et al. (2020) over northern Italy and, on a larger European scale, by Lavers et al. (2014; 2016).

However, extreme precipitation always requires moisture supply supported by a sustained lifting of air, which has been considered in our previous study (Gvoždíková and Müller, 2021), where we examined the moisture flux anomalies in the area of extra high upward vertical velocity. Results showed that these moisture flux anomalies might be a suitable indicator of EPEs, especially events with dominating northern moisture flux (i.e. travelling towards central Europe from the north; Nf). The EPEs that belong to the Nf type represented a large group of EPEs that affect the eastern parts of central Europe in the warm half-year and that cause severe floods in the Oder, Elbe and Danube basins (Gvoždíková and Müller, 2017). On the other hand, there were several EPEs with dominating western moisture flux (i.e. travelling from the west; Wf), which occurred only from September to March (Gvoždíková and Müller, 2021) and mostly affected the western half of central Europe. However, the correspondence between western moisture flux anomalies and Wf EPEs was not as strong due to cases when high values of moisture flux from the west occurred due to extra high wind velocities despite rather small amounts of air moisture.

Given that the moisture flux is related to a larger-scale circulation, we can assume that its predictability will be better than in the case of precipitation, which is driven by more complex small-scale atmospheric processes (Lavers et al., 2016). There is already evidence from previous studies that IVT is more predictable than precipitation (Lavers et al., 2014). The finding was based on the comparison of the degree of linear association between forecasted fields and observed fields measured by the Pearson correlation coefficient. Since the correlation coefficient is a dimensionless value, it may be useful for comparing the quality of forecasts for different atmospheric variables.

For the verification of spatial fields, which are typically produced by numerical NWP models, anomaly correlation is one of the most common traditional measures of forecast accuracy (Wilks, 2011; Zhang et al., 2019). Anomaly correlation is utilized as one of the main verification measures at the European Centre for Medium-range Weather Forecasts (ECMWF) (Owens and Hewson, 2018), although it is not directly employed for precipitation. There may be a problem with forecasts that indicate smaller-scale precipitation patterns that are somewhat misplaced and are penalized twice for showing precipitation at the wrong location and not showing precipitation at the correct location (Ebert, 2008). Therefore, new verification methods that account for spatial translation and suppress the double penalty issue were developed (e.g. Gilleland et al., 2009). However, this issue is more problematic for high-resolution forecasts. Another solution may be to describe precipitation fields as individual events, characterised by for example, a daily value of extremity index, and thus to verify precipitation as a categorical event – it means whether or not it has exceeded a given threshold (Rossa et al., 2008).

Given that some EPEs were directly associated with moisture flux anomalies in our previous study (Gvoždíková and Müller, 2021), it is also possible to use the combination of vertical velocity and moisture flux – the accumulated ascending moisture flux – as a predictor of heavy precipitation. The aim of this study was to determine practical predictability (Lorenz, 2006) and forecast skill of mean daily accumulated ascending moisture flux and compare it with the forecast skill of one-day precipitation extremity, which are both derived from ERA-Interim reanalysis and forecasts. The focus is on selected EPEs from 1979 to 2013, but the non-extreme precipitation days are also evaluated to detect possible false-alarm events. We hypothesize that forecasts of the accumulated ascending moisture flux could support extreme precipitation warnings even at longer lead times and improve preparedness for these extremes.

2 DATA AND METHODS

2.1 Study area and reference precipitation events

Our study area is defined by five main river basins in central Europe – Rhine, Weser/Ems, Elbe, Danube up to Bratislava, and Oder (Figure 1). In this area, we detected a set of EPEs, which could later be divided into two main types according to the area of occurrence, seasonal distribution, and the direction of moisture flux that caused the event.

Details are in the caption following the image
Elevation and ERA-Interim grid points in the study area
The examined extreme precipitation events (Table 1) were always large-scale extremes that were selected by the value of the weather extremity index (WEI: Müller and Kašpar, 2014), combining the information about precipitation intensity using return periods of precipitation totals, the area affected by precipitation and the duration of the event. The return periods are estimated from series of 1- to 10-day precipitation totals at rain-gauges within the study area and then interpolated into a regular grid with a horizontal resolution of 10 km. The WEI is equal to the maximum value of the variable Eta (described in detail by Müller and Kašpar (2014)), which is calculated for the day-by-day expanding time window (t from 1 to 10 days) as the product of the radius of a circle (equivalent to the enlarging area a) and the mean common logarithm of the return periods N of precipitation totals within the considered area:
E ta = i = 1 n log ( N ti ) n a π . (1)
TABLE 1. Extreme precipitation events of Nf (left and central panel) and Wf (right panel) moisture flux variants in central Europe from 1979 to 2013 ranked by precipitation extremeness (WEI)
EPEs ranking Precipitation event Duration (d) Moisture flux variant EPEs ranking Precipitation event Duration (d) Moisture flux variant EPEs ranking Precipitation event Duration (d) Moisture flux variant
1 17 Jul 1981 4 Nf 13 6 Aug 2002 2 Nf 10 20 Oct 1986 3 Wf
2 4 Jul 1997 5 Nf 14 16 Jul 2002 2 Nf 16 19 Dec 1993 2 Wf
3 30 May 2013 4 Nf 15 8 Jul 1996 1 Nf 17 19 Mar 2002 4 Wf
4 11 Aug 2002 2 Nf 18 31 Jul 1991 3 Nf 20 27 Oct 1998 2 Wf
5 6 Aug 1985 4 Nf 19 17 Jun 1979 1 Nf 23 13 Feb 1990 3 Wf
6 1 Aug 1983 5 Nf 21 22 Jul 2010 3 Nf 24 6 Oct 1982 2 Wf
7 3 Aug 2006 6 Nf 22 24 Jun 2013 2 Nf 26 21 Dec 1991 2 Wf
8 5 Sep 2007 2 Nf 25 12 Apr 1994 2 Nf 28 12 Sep 1998 4 Wf
9 25 Sep 2010 3 Nf 27 27 May 2007 3 Nf 29 28 Dec 1986 3 Wf
11 20 Jul 2011 3 Nf 30 16 May 2010 3 Nf 32 25 Feb 1997 1 Wf
12 15 Jul 1997 7 Nf 31 8 Jun 1990 3 Nf

The final list of central European EPEs, based on the size of the WEI and published by Gvoždíková et al. (2019), contains events with different sizes of affected area and different durations, mostly up to 5 days. However, the course of multiday events can always be analysed by the one-day Eta.

According to our previous study (Gvoždíková and Müller, 2021), EPEs from 1979 to 2013 consisted of three types of event of different moisture flux conditions that prevail during their lifetimes. A geometric mean of relative moisture flux values (separately from each of the four cardinal directions) was used to derive a single-value representation of the moisture flux over multiple grid points. The geometric mean specified the following division: (a) events with dominating moisture flux from the northern sector (Nf), (b) events with dominating moisture flux from the western sector (Wf), and (c) low-flux events (Ot). Considering that the geometric mean was taken only over grid points of extra high upward vertical velocity, no Sf events or Ef events were detected (i.e. events with dominating southern moisture fluxes or eastern moisture fluxes, respectively). As a result, we identified 22 Nf events, 10 Wf events, and 11 Ot events. In this study, we focused on two of these three types: EPEs of Nf and Wf moisture flux variants (a total of 32 EPEs, Table 1), which completely differ in their origin.

2.2 ERA-Interim reanalysis and forecasts

Data from the ERA-Interim reanalysis based on the ECMWF Integrated Forecast System (IFS) were retrieved from January 1979 to December 2018 over the area 42°–57°N, 0°–24°E with a horizontal grid spacing of 0.75° on a regular latitude/longitude grid (Figure 1). Reanalysis of several variables was retrieved at 0000 and 1200 UTC: the vertical velocity w (Pa·s−1) at a pressure level of 700 hPa (with negative values indicating ascending motion) and other variables at the 850 hPa level – air temperature T (K), specific humidity q (kg·kg−1), zonal component of wind u (m·s−1), and meridional component of wind v (m·s−1). The ERA-Interim forecasts were retrieved for the same variables and the same spatio-temporal coverage. With a maximum forecast period of 10 days and initiation at 0000 UTC, the forecast lead times ranged from 24 to 240 hr. Zonal and meridional horizontal moisture fluxes (kg·m−2·s−1) were obtained from the retrieved data as Fqu = ρqu and Fqv = ρqv, respectively. Fluxes from the west and south are positive, while the negative values refer to eastern and northern fluxes. Daily means of the reanalysis and forecasts of the vertical velocity and the components of moisture fluxes were calculated using 0000 UTC, 1200 UTC, and 0000 UTC of the following day. In addition to these fields on pressure levels, total surface precipitation forecasts were obtained in 24 hr steps, with daily values accumulated to 0000 UTC. In this case, the 24 hr forecast represented the observation.

The advantage of comparing ERA-Interim forecasts with its reanalysis is that the same physics can be employed for both, which is guaranteed by a fixed IFS cycle (Cy31r2), on which ERA-Interim is based (Dee et al., 2011). The approach allows us to determine the capability of the model for prediction, and thus presents the upper limit of practical predictability and forecast skill – rather idealized predictability – which could be achieved if the model had the same physics as the real world (Luo and Wood, 2006). However, real physical processes are much more complex, which implies that the actual forecast skill will be less than the idealized predictability.

2.3 One-day precipitation extremity

Precipitation is not a normally distributed quantity, so it may be a disadvantage to verify precipitation as a continuous variable. WEI allows categorical verification as it is a single-value representation of multiday precipitation events. However, variable duration poses a problem for verification. Applying only one-day precipitation totals in Equation (1) could give us one-day precipitation extremity regularly on each day from the beginning of the study period. As the calculation of Eta in Equation (1) is based on grid data, it could be applied to reanalysis and forecasts as well.

The return periods were estimated from series of daily precipitation totals at each grid point within the study area using the generalized extreme value (GEV) distribution fitted to the annual maxima of the reanalysed precipitation totals. We did not interpolate the data, which are on a regular lat/lon grid, but the size of each grid cell had to be estimated using geodesic area calculations.

2.4 Accumulated ascending moisture flux

As shown in our previous study (Gvoždíková and Müller, 2021), the combination of the vertical velocity and moisture flux worked better than the moisture flux as a potential predictor of extreme precipitation in central Europe. We introduced a variable, which is here referred to as the accumulated ascending moisture flux T*d (kg·s−1) and reflects the total amount of transported water vapour during day d over grid points with extra high upward vertical velocity. The size of T*d is calculated by the vector sum of the mean daily accumulated zonal flux (the larger of the western and eastern fluxes, FW/E) and the meridional flux (the larger of the southern and northern fluxes, FS/N):
T * d = a 1 n | F W / E | 2 + a 1 n | F S / N | 2 . (2)

In Equation (2), a refers to the average pixel size within the study area (a ≈ 4.5 × 109 m2), and n is the variable number of grid points with extra high upward vertical velocity, which represents the vertical velocity within 0.5% of the lowest reanalysis values for a particular grid point from 1979 to 2018.

To analyse the advantages and limitations of T*d forecasts, we also introduce the accumulated moisture flux, which is referred to as Td and is accumulated over all grid points in the study area, and therefore is not conditioned by the extra high value of the upward vertical velocity.

2.5 Practical predictability and forecast skill

As the accumulated ascending moisture flux derived from the reanalysis has previously confirmed a correspondence to extreme precipitation (especially Nf events), we now want to determine whether the calculation of T*d is reliable even in the case of forecasts with different lead times. As we wanted to know what we are able to predict with the currently available procedures, we focused here on practical predictability (Lorenz, 2006). We can consider that the daily forecast of T*d is dichotomous (yes/no forecast) – indicates if an event will or will not happen according to exceedance of the T*d threshold. The threshold was different for Nf and Wf events and it corresponded to the smallest maximum T*d of the set of EPEs of each type. It means that the maximum daily T*d was extracted from all EPEs of one type (with some of them being of multiple days), and from this set of maximum values the smallest one represented the T*d threshold. Correspondingly, the smallest maximum one-day Eta of two types of EPEs defined thresholds for yes/no events based on the one-day precipitation extremity.

The four possible combinations of forecasts (yes/no) and reanalysis (yes/no) are specified in elements of a 2 × 2 contingency table: hits, false alarms, misses and correct negatives (Wilks, 2011), which can be used to calculate a large variety of categorical statistics. As an example, we present the hit rate and false-alarm ratio, which we apply later in this study. The hit rate is a rather positively oriented score that indicates the proportion of yes events that was actually forecasted: hit rate = hits hits + misses . As it disregards false alarms, it is often combined with the false-alarm ratio, which measures the proportion of yes forecasts that did not occur: false alarm ratio = false alarms hits + false alarms (Rossa et al., 2008).

For the comparison of the forecast skill of the daily values of the vertical velocity at the 700 hPa pressure level and the zonal and meridional horizontal moisture fluxes at the 850 hPa level, the centred anomaly correlation AC is calculated according to Wilks (2011) as the usual Pearson correlation between the grid points of a single pair of reanalysis/forecast fields:
AC = i = 1 I ( f i f ) ( r i r ) i = 1 I ( f i f ) 2 i = 1 I ( r i r ) 2 . (3)

In Equation (3), ri and f i refer to anomalies of the variables, when the climatological mean value ci of each of I grid points is subtracted from both reanalysis ri and forecasts fi of different lead times: ri = ri – ci, and fi = fi – ci, respectively. As a result, AC measures the similarities in anomaly patterns, but it is not sensitive to absolute or conditional biases, and thus, reflects potential predictive skill.

To show the bias of the forecasts, we calculated a mean error (ME), which is simply the difference between the average forecast f and average reanalysis r (Wilks, 2011). The ME was taken over the whole period (n = 14,601; i.e. the number of days between 1979 and 2018) and separately for each grid point i around the study area:
ME i = 1 n k = 1 n ( f k r k ) , (4)

which show the spatial information about bias of the forecasts.

3 RELATION BETWEEN EPES AND DAILY ACCUMULATED ASCENDING MOISTURE FLUX

Due to the position in midlatitudes, western directions of moisture flux prevail in the study area, which also applies to the values of T*d in general, both for their frequency and magnitude (left diagram in Figure 2). To evaluate the representation of EPEs among high T*d values, we separately defined sectors within the diagram for Nf and Wf events so that Nf and Wf sectors comprise maximum T*d values during all EPEs of the respective type. Each sector is characterised by a range of angles and a threshold of T*d (Table 2 and Figure 2a), which give the T*d values hereafter referred to as extreme T*d. The agreement between extreme T*d values and EPEs of the given type was tested for the reanalysis and forecasts within the sectors in two ways: (a) percentage of the extreme T*d values associated with EPEs in the total number of extreme T*d values, and (b) number of the EPEs with extreme T*d values at least on 1 day (in the case of the reanalysis, it equals the number of all EPEs, i.e. 22 Nf and 10 Wf events).

Details are in the caption following the image
(a) Reanalysis of accumulated ascending moisture flux (T*d) during EPEs in comparison with other days between 1979 and 2018, when the criterion of extra high upward vertical velocity was fulfilled at least in one grid point. Values reached during EPEs are marked with symbols different for the variants Nf and Wf; magnitude and mean direction of the moisture flux are expressed by the distance and position to the centre of the diagram. Shading refers to Nf and Wf sectors (Table 2). (b,c) As (a) but with distance to the centre of the diagram representing one-day precipitation extremity expressed by Eta calculated from (b) rain-gauge data, and (c) reanalysis
TABLE 2. Directional sectors defining the reanalysis and forecasts of extreme accumulated ascending moisture flux (T*d), extreme accumulated moisture flux (Td) and extreme one-day precipitation expressed by Eta
Threshold of
Sectors Range of angles T*d (kg·s−1) Td (kg·s−1) Eta
Nf 300°–70° 2⋅109 2⋅1010 39
Wf 235°–295° 7⋅109 4⋅1010 45
  • Note: The directional sectors for extreme T*d are also indicated in Figure 2a.

The results for the reanalysis of T*d are depicted on the far left in Figure 3a. Almost half of the extreme T*d values in sector Nf are associated with Nf EPEs. Regarding the Wf precipitation events, only a minority (15%) of the extreme T*d values in the Wf sector were associated with EPEs. A substantial portion of extreme T*d values in sector Wf, which were not accompanied by EPEs, was recorded on days when strong moisture fluxes were generated by extra high wind velocity combined with rather low values of air humidity.

Details are in the caption following the image
Reanalysis and forecasts of the proportion of Nf and Wf event points to the total number of (a) extreme accumulated ascending moisture flux values (T*d), (b) extreme accumulated moisture flux values (Td) without the condition of extra high vertical velocity, and (c) extreme precipitation days expressed by Eta in sectors Nf, and Wf (refer to Table 2). The number of EPEs in the sectors is represented by column

In general, extreme T*d values became more frequent when computed from the forecast outputs. As a result, the proportion of extreme T*d associated with EPEs in the total number of extreme T*d forecasts generally decreased (Figure 3a) compared to the reanalysis. The decrease was more pronounced for the Nf sector, in which the proportion of extreme T*d related to Nf EPEs decreased to 26% already for 1-day forecast.

The situation was rather different for the forecasts of moisture fluxes from the western direction. The proportion of extreme T*d values associated with Wf EPEs to the total number of measurements even increased slightly within the first 2 days of the forecast and approached the values of the Nf sector (Figure 3a). However, the number of included EPEs in the Wf sector decreased a little faster with longer forecast lead times.

An interesting comparison is offered by Figure 3b, which displays the same as Figure 3a, but for moisture flux accumulated over all grid points (Td) and not only over points with extra high upward vertical velocity. The Td threshold (Table 2) was calculated in the same way as for T*d (i.e. the smallest of maximum daily Td associated with EPEs). There was no significant decline with longer forecast lead times, which could indicate that forecasted vertical velocity values negatively affect the forecasts of T*d. However, despite the better correspondence of reanalysis and forecasts in Figure 3b, extreme Td is less related to the EPEs than extreme T*d, as the percentage of the extreme Td values associated with EPEs was very low in both sectors.

4 RELATION BETWEEN EPES AND ONE-DAY PRECIPITATION EXTREMITY

According to the previous Section 3, there exists a good connection between extreme T*d and EPEs mainly of Nf type. This connection is even stronger than between EPEs and one-day precipitation extremity expressed by Eta calculated from the reanalysis (Figures 2c and 3c). It is not possible to directly connect one-day Eta with different types of EPE without knowing the direction of moisture flux. Therefore, each value of one-day Eta is characterised by the direction vector inherited from T*d calculation. It is then possible to treat the one-day Eta correspondingly to T*d and to determine the threshold for extreme one-day precipitation for both types of EPE. The individual thresholds calculated as the smallest of maximum one-day Eta associated with EPEs are listed in Table 2.

The actual proportion of extreme one-day precipitation related to Nf EPEs in the total number of extreme precipitation days was only 34% according to the data from reanalysis (Figure 3c). However, the proportion rises to 62% when we consider one-day Eta calculated from rain-gauge data (not shown). A general overestimation of the 1-day Eta in the case of reanalysis is also evident from the comparison of Figure 2b,c, where the 1-day Eta from rain-gauge data and reanalysis, respectively, are displayed with the same direction vector as in Figure 2a.

The proportion of extreme one-day precipitation associated with EPEs in the total number of forecasted extreme precipitation days was also lower than for extreme T*d up to the 3-day forecast. The proportions approached those of T*d in the case of longer lead times. This applies to both the Nf and Wf sectors.

5 PREDICTABILITY OF CONSIDERED VARIABLES

5.1 Predictability of accumulated ascending moisture flux

Section 3 indicated that the vertical velocity may reduce the quality of the accumulated ascending moisture flux forecast. To confirm the presumption, we decided to compare the accuracy of the T*d and Td forecasts (Figure 4) using two selected scores: hit rate and false-alarm ratio (refer to Section 2.5). The thresholds for the YES events correspond to the Nf/Wf sector thresholds in Table 2.

Details are in the caption following the image
(a) Hit rate and (b) False-alarm ratio calculated for pairs of reanalysis/forecast of accumulated ascending moisture flux (T*d). YES events are set to the occurrence of extreme T*d in sectors Nf and Wf (refer to Table 2). Dashed lines depict the same measures for the accumulated moisture flux (Td) without the condition of extra high vertical velocity

The poor forecast of T*d in sector Nf was caused by a large number of false alarms, which is demonstrated by a high false-alarm ratio (Figure 4b). Even on the first forecast day, false alarms almost doubled the number of hits (Table 3a). For sector Wf, the forecast was better according to a lower false-alarm ratio (Figure 4b), but a slightly higher number of missed events (and lower hit rate) had the opposite effect and worsened T*d forecasts (Figure 4a, Table 3b).

TABLE 3. Contingency tables for verification of one-day forecasts of (a,b) accumulated ascending moisture flux (T*d), (c,d) accumulated moisture flux (Td), and (e,f,g) one-day precipitation extremity expressed by Eta from 1979 to 2018
(a) (b)
T*d Nf sector Reanalysis T*d Wf sector Reanalysis
Yes No Yes No
1-Day forecast 1-Day forecast
Yes 74 121 Yes 36 24
No 27 14,379 No 36 14,505
(c) (d)
Td Nf sector Reanalysis Td Wf sector Reanalysis
Yes No Yes No
1-Day forecast 1-Day forecast
Yes 1,077 219 Yes 1,445 235
No 147 13,156 No 155 12,764
(e) (f)
Eta Nf sector Reanalysis Eta Wf sector Reanalysis
Yes No Yes No
1-Day forecast 1-Day forecast
Yes 79 156 Yes 22 80
No 35 14,331 No 32 14,467
(g)
Eta all range Reanalysis
Yes No
1-Day forecast
Yes 217 322
No 103 13,959
  • Note: Except for (g), tables are divided according to the sector in which we evaluate the occurrence of daily events: (a,c,e) Nf sector and (b,d,f) Wf sector. For sector thresholds, refer to Table 2.

In contrast, the daily forecast of Td seems to be quite accurate. Both the hit rate and the false-alarm ratio showed much better results than when we considered the condition of extra high upward vertical velocity (Figure 4). However, as Figure 3b shows, only a small part of extreme Td values in the defined sectors were associated with EPEs. Therefore, it is not possible to use it as a supporting forecasting tool for extreme precipitation warnings. Simultaneously, working with T*d is also problematic due to the lower forecast skill.

Nevertheless, the forecasts of T*d during the five largest EPEs seem quite stable even if vertical velocity is included. There was consistency in forecasting extreme T*d, especially in the case of days with Nf extreme precipitation events. For the five largest EPEs, the model began to forecast extreme T*d 6 days in advance (we take into account the forecast for the same day with a possible one-day shift; Figure 5). Except for EPEs, there were only a few cases when forecasts continuously indicated extreme T*d for at least six consecutive days. Apart from the largest Nf events, these cases included the 4th largest Wf event (Table 1), several less extreme spring events and two February precipitation events (some of them outside the largest EPEs in Table 1). Only one case in April remained without a precipitation response.

Details are in the caption following the image
Quality of extreme accumulated ascending moisture flux (T*d) forecasts for days when values reached sectors Nf/Wf (refer to Table 2) on at least the first forecast day. The distance to the centre of the diagram expresses the number of days of consecutive forecasts of extreme T*d within sectors. The directional angle represents the seasonal distribution of events. EPEs are highlighted in colour compared to cases that did not belong to EPEs. Selected EPEs are marked with a number that corresponds to the ranking in Table 1

5.2 Predictability of one-day precipitation extremity

As in the case of T*d, poor predictability appears for one-day precipitation extremity expressed by Eta. Both hit rate and false-alarm ratio show even worse forecast skill than for T*d, (compare Figures 4 and 6) with a very high number of false alarms in both Nf and Wf sectors (Table 3e,f). It seems that especially during western moisture flux situations, the one-day precipitation extremity is highly overestimated (Figure 6b), although part of the error may be related to prediction of moisture flux direction inherited from T*d. However, the presence of the same error in T*d as well as in one-day precipitation extremity allows us to compare the predictability of both. Nevertheless, if we only focus on extreme precipitation, regardless of direction angles, the predictability is slightly better, but still it only improves to the level of T*d forecast in Nf sector (compare Figures 4 and 6).

Details are in the caption following the image
(a) Hit rate and (b) False-alarm ratio calculated for pairs of reanalysis/forecast of one-day precipitation extremity expressed by Eta. YES events are set to the occurrence of extreme one-day precipitation in sectors Nf and Wf (refer to Table 2). Dashed lines depict the same measures for extreme one-day precipitation regardless of the direction angle

5.3 Comparison of forecast skill of vertical velocity and moisture fluxes

Considering the previous findings of this study, it can be assumed that the vertical velocities negatively affect the quality of the T*d forecast. Therefore, we examined individual variables and assessed their forecast skill by calculating anomaly correlations (refer to Section 2.5) between the grid points of the daily pairs of reanalysis/forecast fields. On average, the vertical velocity field forecast skill appears to be much worse than the forecast skill of moisture flux (Figure 7a). Both zonal and meridional horizontal moisture fluxes showed very similar results (compare Figure 7c,d) and even in the 5-day forecast, their AC were approximately 0.6 compared to 0.4 for vertical velocity. The difference in AC corresponds to an increased forecast horizon of moisture fluxes over vertical velocity of 2–3 days. However, in the case of the vertical velocity, a significant difference occurred between AC for the Nf events and those for the Wf events, with much better results for the western moisture flux situations (Figure 7b).

Details are in the caption following the image
(a) Median values and (b,c,d) boxplots of anomaly correlations for (b) vertical velocity (w) forecast at the 700 hPa level, (c) zonal (fqu) and (d) meridional horizontal moisture flux (fqv) forecast at the 850 hPa level. The whiskers go from each quartile to the 1st and 99th percentile values. The symbols represent the mean anomaly correlations for days during Nf or Wf events

High AC of moisture fluxes and less accurate results for the vertical velocity suggest an explanation for a much worse agreement between EPEs and forecasted T*d than in the reanalysis (Figure 3a). Simultaneously, this finding agrees with the greater accuracy of the forecasts of Td (Table 3c,d, Figure 4), which are independent of the condition of extra high upward vertical velocity.

Figure 8 shows that within the study area, the ME of vertical velocity is mostly negative, indicating larger forecasted ascending motions mainly on the northern side of the Alps and in the eastern part of central Europe. This is a possible explanation for higher AC of vertical velocity in the case of Wf events (Figure 7b) and the large number of false alarms of extreme T*d in the Nf sector (Figure 4b). In the case of other variables, including precipitation, the MEs are positive, indicating an overestimation of precipitation and western and southern moisture fluxes.

Details are in the caption following the image
Mean precipitation, vertical velocity (w) at the 700 hPa level, zonal (fqu) and meridional horizontal moisture flux (fqv) at the 850 hPa level calculated for all grid cells around the study area between 1979 and 2018. Mean errors (ME) in 1- and 4-day forecasts of the same variables are displayed in the middle and bottom figures

6 DISCUSSION

Moisture flux forecasting can support the prediction of precipitation extremes, but first, it needs to be reasonably connected to these extremes, and second, the quality of its predictability must be sufficient (Froidevaux and Martius, 2016).

The close relationship between accumulated ascending moisture flux T*d and especially large EPEs of the northern moisture flux variant (Nf) was confirmed in this study. This result agrees with previous findings by Gvoždíková and Müller (2021), which were based on data from the recent ERA5 reanalysis. The agreement was even better using ERA5 data when expressed as the percentage of Nf event points to the total number of extreme T*d values, which accounted for 68% in the sector that corresponds to Nf (Table 2) compared to 47% using ERA-Interim. Higher data resolution (0.25° spatial grid) may explain this stronger relationship, as it captures local extremes of accumulated ascending moisture flux, or the stronger relationship may be related to the selected vertical velocity threshold. In our previous study (Gvoždíková and Müller, 2021), extra high upward vertical velocity corresponded to only 0.1% of the lowest reanalysis values, which was not possible in the case of ERA-Interim data, where some EPEs would not be recorded. Despite ERA5 outperforming the ERA-Interim reanalysis and exhibiting a closer connection between EPEs and extreme T*d, we could not use ERA5 due to the unavailability of the reforecasts.

In addition to the existing relation between EPEs and T*d at lower tropospheric isobaric levels, research by other authors often links extreme precipitation and floods to intense IVT, which usually occurs in atmospheric river regions. Thus, IVT had a significant effect on extreme events in the western United States (Konrad and Dettinger, 2017) or western Europe (Lavers and Villarini, 2013). According to Froidevaux and Martius (2016), IVT perpendicular to orography also caused major floods in the Swiss Alps, although it was not always associated with atmospheric rivers. Simultaneously, the authors were aware of the strong vertical wind shear situations, which can affect the IVT direction and reduce its magnitude. A significant change in the wind direction with altitude is often related to EPEs in the eastern part of central Europe (Bližňák et al., 2019), where precipitation extremes are triggered by Vb cyclones that originate in the Mediterranean region (Messmer et al., 2015).

Despite the obvious connection between extreme moisture flux and precipitation, few studies have compared their predictability. Lavers et al. (2014; 2016) focused on IVT and confirmed the higher predictability of moisture flux compared to precipitation. They explained this finding by a connection of moisture flux to synoptic-scale circulation, which is more predictable than microphysical phenomena, such as precipitation. Our study demonstrates good forecast skill for zonal and meridional horizontal moisture fluxes at the 850 hPa level up to 5-day forecast, when AC was still higher than 0.6. However, combined with vertical velocity, the accumulated ascending moisture flux is not an appropriate forecasting tool due to the worse forecast skill of vertical velocity (Figure 7).

Figure 8 indicates some changes in biases of the displayed variables depending on lead times. Therefore, the method could be further refined by using lead-time-dependent thresholds of the vertical velocity, which could improve the forecast performance of T*d. An improvement would also be possible in the Eta forecast if we estimated parameters of GEV distribution from the forecasted time series. However, due to different mechanisms driving precipitation throughout the year, the biases could differ for each season (Argüeso et al., 2013). These possible variations make the use of lead-time-dependent thresholds difficult with an uncertain outcome. Other studies frequently use bias correction methods (e.g. Jabbari and Bae, 2020; Lavers et al., 2021), which are particularly useful for improving real-time hydrological modelling built on the precipitation forecast. To compare the forecast performance of different variables, we do not consider the bias correction necessary, but it may be the subject of further research.

7 CONCLUDING REMARKS

- The connection between extreme accumulated ascending moisture flux and EPEs exists mainly in the case of precipitation extremes with predominant northern moisture flux (Nf events). In the case of extreme T*d in the western moisture flux directions, the correspondence to Wf EPEs was less significant due to the larger proportion of non-precipitation events among these values caused by the high wind velocities with rather small air moisture.

- Forecasts of one-day precipitation extremity expressed by Eta showed worse skill than forecasts of extreme T*d. However, forecasts of extreme T*d also do not provide sufficient reliability, because they produce a large number of false-alarm situations with northern moisture flux. This finding was connected to a poorer vertical velocity forecast during these situations. Therefore, improving the forecast skill of vertical velocity in NWP models could bring additional benefits in the forecasting of EPEs.

- Despite worse predictability of T*d, there was continuity in forecasting extreme T*d in the case of large Nf EPEs. For the five largest Nf events, extreme T*d values were forecasted at least 6 days in advance, while there was no such continuity for smaller or false-alarm events. We could use the continuity of high T*d forecasts as support for predicting large EPEs of the Nf type, such as in July 1981 and 1997, August 2002 or May/June 2013, which led to disastrous floods in central Europe. For less-extreme events, forecasts of accumulated ascending moisture flux are not reliable enough, and a forecasting tool that is based only on the moisture fluxes would be better. However, it seems that T*d accumulated in the area of extra high upward vertical velocity shows a better direct relationship to EPEs than Td independent of this condition.

ACKNOWLEDGEMENTS

We would like to thank Stephan Pfahl for his helpful insights and discussions on the topic. The ERA-Interim reanalysis and forecast data were retrieved from the ECMWF data server. The research was supported by The Ministry of Education, Youth and Sports grant LTC19043.

    AUTHOR CONTRIBUTIONS

    Blanka Gvoždíková: Conceptualization; data curation; formal analysis; methodology; visualization; writing - original draft. Miloslav Müller: Conceptualization; supervision; writing-review & editing.

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