1. Introduction
Climate change is likely to be the most discussed factor in future risk due to its direct impacts on atmospheric perils and its indirect impacts on weather-driven perils, such as riverine and rainfall flooding. These trends were described by the IPCC in 2012 report [
1]. Within Europe, climate change will alter the hydrologic cycle due to the expected shift in average temperatures and seasonal rainfall. This will lead to a change in flood frequencies; however, the frequency of specific flood events in different regions and year seasons might increase or decrease based on the related river segment locations and their specific climate regions in Europe. Although the main purpose of this article is to investigate changes in floods in terms of frequency and discharge, climate change should be taken to count as a whole process. As Sýs et al. [
2] points out, change in the hydrological cycle is complex and will have consequences in water supply process, retention volume solutions, and in many other areas, such as integrated rescue system [
3].
While predictions of the impacts of climate change on flood frequency are highly uncertain [
4,
5], we assume that it is possible to apply global and regional simulations to catastrophic loss models to predict the possible impacts on modelled financial insurance loss. In the insurance sector, since the long-term observation and experience is not good enough to estimate possible insurance flood losses, catastrophe models have been developed. Catastrophe modelling allows insurers and reinsurers to evaluate and manage natural catastrophe risk and create financial preparation according to every regulatory demand. The main outputs of probabilistic catastrophe models are probable maximum losses (PML) curves and average annual loss (AAL) values. A different view on losses can be provided by two types of PML curves: Aggregate Exceedance Probability (AEP) and Occurrence Exceedance Probability (OEP).
The nature of climate change in European regions is captured by Global Climate Models (GCMs). As Kay et al. mentioned in his study [
4], the GCM is the main source of uncertainty in future flood frequency estimation. GCM simulation is downscaled via Regional Climate Models (RCMs) based on designed scenarios referred to as Representative Concentration Pathways (RCPs). Its trajectory is adopted by the IPCC for its fifth Assessment Report (AR5) [
6]. Four pathways have been selected for climate modelling and research. They describe different climate futures depending on how much greenhouse gases are emitted in future years. The four RCPs, namely RCP 2.6, RCP 4.5, RCP 6, and RCP 8.5, are labelled after a possible range of radiative forcing values in the year 2100 (2.6, 4.5, 6.0, and 8.5 W/m
2, respectively). Those pathways are widely used in common studies [
5,
7,
8,
9]. The study by Rajczek et al. [
9] examines the influence of future precipitation extremes. Based on their study, which investigates precipitation effected by RCP scenarios, changes in extremes do not scale proportionally to changes in mean. Basically, there is expected intensification of extrema and change in frequency of events. Single-day events intensify more than multiday precipitation. In the context of Czechia, recent changes are also examined in the research of the Czech Academy of Sciences in [
10].
Floods across Europe are caused by numerous triggers. The largest and costliest floods have occurred during different seasons, in different regions, and in various regional patterns. In Czechia, flooding often occurs during the summer season, with most of the recent serious floods (e.g., 1997, 2002, and 2013) occurring during this time. Major flooding can also occur in the spring (e.g., 2006), which is induced by rain or by melting of the accumulated snowpack. There are several studies from Brázdil et al. which describe the synoptic causes of floods on the Morava River [
11] and investigate past floods in Czechia [
12]. The documentary evidence of past floods and their utility in flood frequency estimation is discussed in another article [
13].
Considering the change in precipitation patterns during this region’s annual cycle, a change can also be anticipated in the flood regime and flood magnitudes. As changes of flood frequency curves are a long-term reflection of atmosphere conditions and soil moisture together with snow, there is strong emphasis on regional climate and runoff generation processes. Blöschl et al. [
14] mentioned that there is need for a large-scale continental study. Wider studies easily demonstrate the pattern of both increase and decrease of observed discharges. Based on his results, increasing autumn and winter rainfalls resulted in increasing floods in northwest Europe. On the other hand, decreasing precipitation and increasing evaporation caused a decrease of flood events in southern Europe. Additionally, decreasing snow cover and snowmelt results in decreased flooding in Eastern Europe. The redistribution must be considered from two connected perspectives: geographically and seasonally. Such redistribution will increase the number of flood events in winter and decrease the number of events in spring, mainly due to the changes in temperature and the amount of water accumulated in the snow cover.
There are many factors which modulate the flood response, so an increase in precipitation does not necessarily mean increasing floods. Trambley et al. [
15] investigates Mediterranean basins, where decreasing soil moisture caused lower floods, even though rainfall increased. Initial saturation of the soil has a strong impact, together with future changes in evaporation caused by climate change.
The reduced precipitation amount (but with increased rainfall intensities) during the original flood season might cause a slight decrease in design flows. Still, causing an increase in the average temperature might induce floods during otherwise calm winters.
Snow storage and snowmelt are factors that modulate flood response. The effects of changing snowmelt process on flood frequency curves depend on flood-generating process in the region. For Central Europe, the most relevant process is rain-on-snow [
16]. The shape of flood-frequency curve is likely to flatten out at large return periods [
17]. This is caused by the reduction of lying snow cover and upper energy limit for melt.
The effect of changes in a hydrological regime that yields to the altered design flows might be incorporated directly into a catastrophic flood model. To evaluate the view of risk from the climate change scenarios, a view taken from those scenarios can be deployed in the current flood model by using the same vulnerability, exposure, and flood mitigation measures. Evaluation of the direct impacts on losses from future climate effects can be made for each scenario using the current socio-economic (and other) conditions.
Rädler [
18] pointed that the reinsurance view of risk is not necessarily the same as the scientific view. The main aim is on the extrema, while the mean values of distribution play only a minor role in the risk. The Impact Forecasting Flood Model for Czechia [
19] with climate change scenarios is designed to evaluate financial losses caused by riverine (fluvial) and rainfall-driven (pluvial) flooding, as well as any related groundwater (off-floodplain) flooding. This model, including climate change scenarios, is found to be well suited for investigating financial losses of the possible effects of the changed hydrological regime in Europe.
3. Results
Under the most pessimistic climate scenario, meteorological changes result in an increase in the number of small or moderate floods, in terms of the magnitude of financial losses. This is caused by either a relatively low flood intensity over a large area or a high flood intensity over a smaller area. However, the area of the largest intense floods decreases, as compared to the reference scenario. This observation may result in a different view of risk: lower return periods of losses on the EP curve and a sharp increase of the AAL, while the largest loss actually decreases due to the absence of the largest area-intensive events. Combined with the decrease in direct flood risk on large rivers, strengthening dikes on these rivers will not have a substantial effect on the loss. Alternatively, strengthening dikes on smaller rivers or building flood defenses where no flood protection measures currently exist (or building defenses against pluvial flooding) might have a more substantial effect. The effect of the increasing number of smaller events during the year can be observed from the difference between the aggregate exceedance probability (AEP) curve, which is based on the sum of losses within a year, and the occurrence exceedance probability (OEP) curve, which is based on the maximum of loss within a year.
3.1. Change in Discharges
Due to the increased temperature during the cold season in the climate scenario, more of the precipitation is expected to occur as rain, rather than snow, and less water is held in the snowpack. Thus, a different runoff within the catchment can be observed. In the reference model, when the warming happens, the runoff occurs both later and suddenly, as a flood wave. In the climate scenario, the warming runoff from the basin may occur gradually and in several lower waves.
Alternately, higher flows in small catchments are observed in the climate scenario during the summer months. Although less total precipitation occurs during the summer, relatively intense but short floods occur due to the high rainfall intensity or several intense events in a row.
An example of the changing rainfall–runoff relationship within a watershed is shown in
Figure 5. These changes are driven by the changing meteorological conditions and spatiotemporal changes in the distribution of precipitation, combined with changes in the amount of water retained in the snowpack. In large catchments, decreasing design flows can be expected under the climate scenario. For smaller catchments, the trend is the opposite and there is an increased risk of more severe flooding. It can be expected that the risk of flooding, including the risk of flooding from heavy rainfall, will be significantly increased for small catchments. For small to medium sized catchments, the magnitude of design flows increases for lower return periods but decreases for higher return periods.
The proportion of flood events for the Czech river basins in the reference period shows that most floods greater than the return period of 1 in 20 years occur in the spring months (due to snow melting and heavy rainfall), followed by summer floods. This is illustrated by the graph in
Figure 6 for the three basin sizes that were demonstrated in
Figure 5. However, the largest flood peaks in the reference period occur during the summer months when the most frequent and heaviest rainfall is observed. This is also due to the given climate scenario having less rain overall in the summer months (in Czechia/Central Europe), despite the fact that there is a redistribution of wet and dry days. This redistribution then has a major effect on flood peaks in small catchments.
The change in the proportion of floods greater than a return period of 1 in 20 years is shown for each climate scenario (
Figure 7). Due to warming over Central Europe and less water being retained in snow, there is an increase in the number of winter flood events (which are generally less damaging, but more frequent), especially in the 2080s (2075 to 2100) period and in the most pessimistic emission scenario. The number of summer floods is decreasing, but their proportion and magnitude remain significant, especially for rivers with smaller catchments.
Considering the stronger but more localized storms and rainfall events, the impact of summer floods for large catchments is limited. This is due to the need to combine several events into one using a single window. In general, floods on large catchments are generated by long lasting precipitation over a substantial area of the catchment. Consequently, the overall decrease in rainfall during the wettest period (related to the reference period) leads to an overall decrease of maximum peaks in the large catchment. Conversely, increases in rainfall in drier periods have a substantial effect on the generation of floods in the small catchments.
3.2. Number of Events
Due to the changes in the spatial and temporal distribution of precipitation and temperature (shorter periods of more intense precipitation, more water in the springtime, and so on), the response in the river network changes, as does the definition of events according to
Section 2.4 (where the HC component is used). Therefore, although the number of 12,066 years of daily precipitation and temperature is constant, there is still a change in the number of events within one year. Many smaller events break down into several independent events, with the overall effect of a different ranking of events in terms of frequency. This has consequences for the calculation of the OEP and AAP loss. The number of events per scenario before flood protection applications (i.e., events defined purely in hydrological terms) is listed in
Table 1. The final number of events that drive the loss is smaller and depends both on the setting of local flood defenses, as well as the distribution of exposure within the portfolios.
3.3. Effect on Losses
3.3.1. Loss Change in a Multiperil Perspective
Following the definition of events in previous sections, the impact of changing climatic conditions on losses in the different climate scenarios can be demonstrated in distinct ways. The largest events for the highest emission scenarios are spatially smaller and less intense, relevant to the reference period. This is the same for the 40th–42nd largest events (which affect the return period 1 in 250-year loss), 41st shown in
Figure 8. In the following sections, the relative comparison of loss magnitudes between the scenarios and the reference period can be observed. Another perspective may be to compare the first few losses. A representation of the sum of the first five to fifty losses (on the market portfolio) is shown in
Figure 9. One can see that the largest (spatially) fluvial flood events are less prone to loss in the individual scenarios. This is for the reasons previously discussed. Alternatively, there are an increasing number of smaller events (locally concentrated but intense, or events less intense but (spatially) larger. A limitation of the model is that it does not necessarily capture the impact of extremely short but intense rainfall events (within the pluvial component) that may be more dominant in losses when produced from a flood model considering climate scenarios.
Loss analyses result not only in losses per event but also in an AAL and PML curve for each selected client portfolio. The analysis was performed using the portfolios of the seven largest Czech insurance companies and the Czech market portfolio. The PML was calculated for each scenario and period of interest for both the GU loss and the gross loss view (OEP and AEP).
By its very definition, an event set is a year-based model and the calculation of the PML is relatively straightforward. The comparison of the OEP (maximum) versus the AEP (sum of damages) is particularly interesting in terms of the frequency of the losses in the return period’s lower end of losses. The maximum return period shown on the graphs is 1 in 1000 years, but in terms of an even higher return period, the tail curve continues with an increasing trend. However, it has considerable uncertainty, and so it is not displayed.
A comparison of the PML values relative to the model results of the reference period for the variants with and without adaptation is shown in the graphs (
Figure 10 and
Figure 11). There is a noticeable increase in the AAL values and in the lower return periods for all scenarios and a decrease in the tail losses, with this effect being more noticeable for AEP damages than for OEP losses. At the same time, this trend is stronger for the most pessimistic emissions scenario, and the smallest changes relative to the reference period are seen in the most optimistic emissions scenario. The impact of adaptation measures (by strengthening dikes) is mainly at the tail losses. The impact on lower return periods is relatively small and caused by losses that may occur more often as a result of heavy rainfall. This is mainly owing to locations where strong protection measures cannot be expected, or small rivers with flood discharges significantly amplified will not have access to the large flood protection measures (
Figure 10 and
Figure 11).
3.3.2. Loss Change—Without Adaptation
This scenario assumed that key climate variables based on a specific scenario and time period are taken and transferred into the present-day climate condition. One can imagine it as if future conditions suddenly appeared in the present but everything else remained unchanged, such as the level of flood protection, spatial distribution of the exposure, loss ratio for buildings, and so on. Only the natural climate condition changed and only for the purposes of estimating the direct impact of the changes. This allows for the investigation of which hazard component and which condition will be more frequent or more important from the risk point of view. Stakeholders can then request greater details and at a more significant scale. They can also initiate real adaptation measures that are specifically targeted at the risk.
3.3.3. Loss Change—With Adaptation
As opposed to the model version, which considers climate change but from only the natural conditions, there was a developed version that includes a view of the partial adaptation measures. The original flood model for Czechia included a number of flood protections related to the river segment and the pluvial component.
Based on the table of projected strengthening of dikes in (
Section 2.3), model versions with climate change scenarios and time periods have been updated with the projected levels of flood protection. The strengthening of dikes has been applied to all areas in the same ratio, so we can assume that the model can over/under-estimate the effect in more specific areas. However, other adaptation measures have not been taken into account, so we can assume that the uncertainty also covers other measures, such as the individual mobile flood barriers for doors or location-specific polders.
4. Discussion and Conclusions
This study assessed the change in risk under projected climate change scenarios, particularly in terms of their financial implications. This includes scenarios of simple climate change and scenarios with strengthened flood protection measures (to simplify, this also includes landscape measures). No additional financial implications arising from the need for levee construction or other adaptation measures are discussed in this study, nor is any loss from weather-driven perils such as windstorms, hail, or drought.
The pluvial component is considered in terms of a 24-h rainfall, for consistency with GCMs. Further research needs to be undertaken to better capture the impact of very intense but short duration torrential rainfall events on small areas and to account specifically for the impact of these storms. In terms of the rainfall–runoff model, there is a clear difference in the response of the landscape between a volume of rain that falls in six hours from a slow-moving cloud versus 24+ hours of precipitation.
Considerable uncertainty remains in the GCM outputs about changes in precipitation totals. RCMs agree with some GCM outputs, but there are other GCMs that show no change in precipitation. According to the RCMs, precipitation will increase by an average of 10 percent by the end of the century for RCP 4.5, and even by 13 percent under RCP 8.5, as compared to the reference period (in absolute terms, this means an increase in the annual average of 90 mm for RCP 8.5 and 60 mm for RCP 4.5 by the end of this century, while the national average in the reference period is 703 mm).
Decreasing precipitation amounts are expected in the northern regions and increasing amounts in the southern regions, with the transition located across Central Europe in the summer and the southern Mediterranean in the winter. A prominent intensification of precipitation extremes is present in all seasons and nearly all regions of Europe. In the continental and northern regions, the entire set of simulations shows an increase in total precipitation around +20 percent with the largest values in winter and autumn. In southern regions, changes are more complex and particularly uncertain in warmer seasons. In those regions, the significant reduction in the number of wet days might influence the occurrence of heavy flood events in summer. Knutti, Masson, and Gettelman 2013 [
37] suggest this is in line with recent observations of the European precipitation regime, such as the intensification of heavy events that particularly appears in the winter season [
38,
39], which is projected to amplify in a future climate. It has been reported [
40] that annual average precipitation will increase in northern and North-Central Europe, while it will decrease in Southern Europe.
In Central Europe, a smaller change in precipitation is expected. However, annual precipitation patterns will change. Southern Europe will experience lower rainfall year-round. There will be less precipitation during the summer season in Atlantic and continental Europe, but more winter precipitation. It has been reported [
40] that decreases in annual average precipitation in Southern and Central Europe can be as high as 30–45 percent, and up to 70 percent in the summer in some regions. Due to this and warmer summer temperatures, the risk of summer drought is likely to increase in Central Europe and in the Mediterranean area.
On the other hand, Kundzewicz et al. 2005 [
41] suggested that the potential for intense precipitation is likely to increase in a warmer climate. According to the Clausius–Clapeyron Law, the atmosphere’s capacity to absorb moisture should increase with temperature. With a higher amount of precipitable water, the potential for intensive precipitation should increase. It seems likely that for broad parts of the investigation area the mean summer precipitation will decrease, corroborating the general projection of enhanced summer drying over continental interiors, while the amount of precipitation related to extreme events will increase [
41]. However, the spatial size of extreme precipitation events will probably be reduced. We have observed intensification of extreme rainfall in our results, but with a reduced spatial size of storms.
Our study shows that there is very little change in total precipitation for Czechia, but the distribution of precipitation changes during the year and the number of wet and dry days also changes. This has a clear effect on runoff and flood genesis. Fewer floods are seen during spring seasons, due to the reduction of snowpack, which is consistent with predictions [
9,
10]. This led to a clear effect in our calibrated rainfall–runoff model for flood magnitude as well as on the superposition of flood waves. The amplification of less intense precipitation led to an amplification of flood waves on small and medium-sized catchments, while large catchments were affected by a decrease in design flows due to the stacking of flood waves. The distribution of events within the year is also changing, with an increasing number of winter floods.
Within the loss calculation where there is an increase in the loss of the lower part of the PML curve (more frequent small floods, or the splitting of a large event into several smaller ones) and a decrease in tail losses due to the reduction in the number of the largest flood events. In all climate scenarios considered, losses on the lower return periods increase and losses on the higher return periods decrease compared to the reference model. Only the magnitude of these changes differs.
The study contains several uncertainties: uncertainties in climate models, uncertainties in changing precipitation-runoff relationships in the landscape, and uncertainties in adaptation measures and in population development. To provide the most straightforward view of the estimation of the risk, the model is accordingly separated into two parts, with a portion using only the change in climate conditions for the current world and a portion using the assumption of adaptation.
This study is intended to highlight the possible trend in flood losses (without considering the price trends) and to provide a basis for further development and decision-making by the relevant institutions, the state or insurance companies. Floods over Europe are caused by various triggers. The largest and costliest floods happen in different seasons, in different regions and in different regional patterns. In Czechia, the majority of serious floods (e.g., 1997, 2002, 2013) currently happen during the summer season, but different types of flooding might dominate in the climate scenarios. Further work may target specific types of storms that do not occur in the current climate, which may play a significant role in climate scenarios. While the results of this study suggest this may be the case, the current model cannot capture this completely and without uncertainties. To evaluate the view of risk from climate change scenarios, it is possible to take a view of climate change scenarios and convey it to the current model. Using the same vulnerability, exposure, and flood mitigation measures, the evaluation of the direct impact on the losses can be achieved for each scenario of the future climate happening under current socio-economic and other conditions.
Subsequently, the effect of mankind’s efforts protecting themselves, reflected in flood mitigation, should be added to evaluate such effect. The third step in our future work is to evaluate the change in exposure (development of new residential, commercial, and industrial areas with different spatial distribution and sensitivity against flood losses) under current conditions of current costs associated with flooding.
One limitation of this study might be underestimation of the future frequency and magnitude of flash floods on small catchments due to the daily precipitation used for deriving event set and 24-h simulation of pluvial events. That might even intensify losses of lower return periods and AAL. However, hydrodynamic simulation based on derived design flows is based on a frequency analysis of extracted peaks directly from gauging stations. The output of the rainfall–runoff simulation is used only to evaluate the relative magnitude of discharge event and real flood hazard is modelled through 2-dimensional hydrodynamic simulation whose input parameters (hydrological data) are taken from intensity-duration-frequency (IDF) functions (for pluvial hazard simulations) and design flows, derived from daily maximum data. Therefore, the rainfall–runoff outputs are used only to describe the spatial patterns and relative severity magnitude of model’s stochastic events. That is why the described number of events in climate change scenarios might be considered to be comparable to the reference period.
In the studied climate scenario flood model for Czechia, for a return period 1 in 5 years for the worst-case scenario, the differences between scenario results and reference model can be up to +125 percent increase, while for the return period 1 in 100 years it is a −40 percent decrease. There is no significant effect of adaptation measures for the return period 1 in 100 years, but there is a −20 percent decrease in the return period 1 in 5 years. The study also considers exposure redistribution in addition to adaptation measures and brings attention to the significant risk of increasing tail loss in the PML curve when compared to the reference model (up to +30 percent). It also investigated pluvial flooding increases by about 10–20 percent (OEP) and 20–40 percent (AEP), respectively, in the model.
Another aim of this study was to provide a basis for the decision-making processes, which may lead to better targeting of adaptation measures in the landscape or construction of flood control measures, which may result in a significant reduction in losses from large floods of the “classic” type, as well as flood control measures in small catchments from heavy rainfall events. This may result in very different flood losses than the model projects. Stakeholders will likely wish to investigate this further, using this data to initiate processes of adaptation precisely targeted to their risk. While Impact Forecasting will continue to refine climate change scenarios in flood models to reflect new knowledge, the climate change scenarios for the Impact Forecasting Flood model for Czechia [
19] considered here have been implemented into ELEMENTS so users can perform their own analyses using their portfolio data, and can make their own assumptions about exposure redistribution or price.