CORDEX EUR-11 vs. CMIP6: Climate Data Choice for Risk Analysis
When companies report their physical climate risks under CSRD, the EU Taxonomy or IFRS S2, the...
By: Johannes Fiegenbaum on 5/14/26 11:36 AM
„Hail projection for 2050" sounds like a solid climate scenario, but it is not. As a sub-grid convective phenomenon, hail cannot be directly represented in CMIP5 and CMIP6 global models, because hail cells form on a 1 to 20 km scale within minutes, while global models run on 50 to 150 km grids with parameterised convection. Anyone who still needs hail statements for industrial sites in Europe has two credible routes: observational data (ESWD, DWD radar, GDV) and proxy-based reanalyses such as the AR-CHaMo model of Battaglioli et al. on ERA5. This authority article maps the current scientific state, the methodological boundary, the regional hotspots across Europe (with Germany as a worked case) and the ESRS-E1-9-compliant assessment path for CSRD-reporting industrial sites.
Table of contents
The Swiss meteorologist and ESSL researcher Francesco Battaglioli, together with colleagues, developed AR-CHaMo (Additive Regression Convective Hazard Model). The statistical model predicts the occurrence of large hail (≥ 2 cm) and very large hail (≥ 5 cm) based on atmospheric indicators. It was trained on roughly 24 million lightning observations and over 44,000 hail reports, applied to the hourly ERA5 reanalysis of the ECMWF on a 0.25° × 0.25° grid.
The key publication for practitioners is „Contrasting trends in very large hail events and related economic losses" (Battaglioli et al., Nature Geoscience, 2025). Three main findings for Europe and Germany:
A methodologically important sub-result: the CAPE energy above the minus 10 °C isotherm (not classical CAPE) proved to be a universally superior predictor for large hail. Anyone making hail statements in a climate context cannot get around this parameter anymore.
ERA5 itself is the fifth generation of global climate reanalyses from the European Centre for Medium-Range Weather Forecasts (ECMWF). Hourly data points since 1940, 31 km grid, over 100 atmospheric levels. Unlike pure observation networks, ERA5 combines physical models with historical measurements and is spatially complete. That is what makes it valuable for hail climatology in regions with sparse observational coverage.
German hail climatology is essentially carried by the IMK-TRO at KIT Karlsruhe. Three key studies:
Frontiers in Environmental Science (2026, KIT/climXtreme): 15,577 potential hail tracks from 20 summer half-years (2005–2024) on a 3D C-band radar dataset. Spatially a clear north-south gradient. Highest hail frequency south of Stuttgart and in the Bavarian Alpine foothills. Temporally no significant national trend. Spatially differentiated: significant increase along the Baden-Württemberg/Bavaria border and south-east of Munich, significant decrease across large parts of northern and western Germany. Scandinavian blocking patterns offer a teleconnection explanation.
The seemingly contradictory counter-finding comes from Kahraman et al. (Nature Communications, September 2025), Met Office and British universities. Using km-scale climate simulations under a high-emission scenario (RCP 8.5, +5 °C), the picture for central Europe shifts:
These findings do not contradict the historical ERA5 trends, they describe a possible future under strong warming. For site-level risk assessment both views belong in the analysis, because they address different time horizons.
CMIP6 global models typically have horizontal resolutions of 50 to 150 km and use parameterised convection. Hail cells form on horizontal scales of 1 to 20 km within minutes, far below grid cell size. Three consequences:
Those who still need climate projections for hail relevance work with proxies:
| Proxy | Physical link | Limitation |
|---|---|---|
| CAPE | Thermal instability, buoyancy energy | Overestimates risk in dry regions |
| CAPE above −10 °C isotherm | Energy in the hail growth zone | AR-CHaMo anchor, needs high-resolution data |
| Lifted Index | Thermodynamic instability | No statement about hail size |
| SHIP (Significant Hail Parameter) | Composite of CAPE, lapse rate, shear, moisture | Calibrated to US data, weaker European skill |
| WMAXSHEAR | Max updraft × wind shear | Low compute, recent validation |
| Deep Layer Shear (0–6 km) | Controls hail size, storm organisation | Size yes, frequency less |
The literature converges: a combination of CAPE-based instability and wind shear reproduces historical hail climatologies better than single parameters. AR-CHaMo outperforms most composites at medium and long forecast horizons. For an ESRS-E1-9 assessment the choice matters, because it carries the justification for the uncertainty range. Anyone diving deeper into the difference between direct projections and proxy-based statements will find the methodological frame in our CORDEX vs. CMIP6 data choice guide and the appropriate methodology framework in ISO 14091 in practice for banks and insurers.
Four data sources are practically relevant for German industrial sites:
Meteomedia/Kachelmann operates under the meteosol® brand in cooperation with Vereinigte Hagel, providing agriculture-focused hail damage monitoring. For industrial site assessment its informational value is limited, because no systematic quality control to scientific standards is documented.
Key takeaways
The regional evidence base from radar, insurance and model data:
| Region | Evidence strength | Mechanism |
|---|---|---|
| Swabian Alb / Neckar valley | Very strong | Lee convergence Black Forest, orographic lift |
| Bavarian Alpine foothills | Very strong | Thermal instability, foehn, moisture transport |
| Allgäu, Upper Swabia (BW/Bavaria border) | Strong | Significant upward trend 2005–2024 |
| Northern Hesse, Rhön, Vogelsberg | Moderate | Orographic effects |
| Mainfranken / Nuremberg basin | Moderate | Convergence in omega blocking |
| North German lowlands | Low / negative | Decreasing trends |
| NRW / Ruhr area | Year-dependent | Front-triggered, no orographic enhancement |
The strongest evidence rests on the 20-year DWD radar dataset, analysed in Frontiers (2026). The north-south gradient is consistent across all studies. The significant increase along the BW/Bavaria border is a newer finding with high statistical robustness. For site managers this means: an industrial site choice in the Allgäu or south of Munich should account for the hail trend with a 30 to 40 per cent higher probability of very large hailstones by the end of the century (under a moderate warming scenario).
Three consecutive years with marked variation:
Regional consistency: Baden-Württemberg, Bavaria and Thuringia lead the hail loss ranking in almost every year. Northern Germany (Mecklenburg-Vorpommern, Schleswig-Holstein, Bremen) sits regularly at the lower end. Average loss per event in BW around 3,300 euros, Bavaria around 3,000, both clearly above the national average.
Peak years such as 2013 or 2021 (Europe-wide) caused hail losses in Germany in the double-digit billion range. Northern Italy reached a record single-event loss of 6 billion US dollars in 2023, an impressive confirmation of Battaglioli's trend findings.
ESRS E1-9 requires the quantification of financial effects of material physical climate risks on assets, separated into acute and chronic risks, with affected asset values disclosed across short-, medium- and long-term time horizons. ESRS E1-2 (AR 10–13) requires a climate scenario analysis as the basis. Where direct projections are missing, the framework explicitly allows analogies, proxy indicators and expert judgement, provided the approach is methodologically justified and transparently documented.
For hail at European industrial sites a five-step path:
This approach also offers a clean transition to the ISO 14091 in practice methodology and to insurance and coverage gaps. Anyone building an audit-proof E1-9 assessment for CSRD-reporting industrial companies cannot shortcut the path with the words „hail projection 2050", but must make the methodological limits explicit, and that is precisely what auditors reward.
Hail is a methodological special case.
If you want to build ESRS-E1-9-compliant hail assessments for industrial sites, you need observation and reanalysis data, not „hail projection 2050". In the initial climate risk assessment we walk through AR-CHaMo, ESWD and GDV data on a sound methodological foundation.
Request climate risk initial assessmentCMIP6 resolves convection in a parameterised way on a 50 to 150 km grid. Hail cells form on 1 to 20 km scales within minutes, far below grid cell size. Global models cannot realistically represent either hail growth or melting in the fall path, and hail statistics are not directly output.
AR-CHaMo (Additive Regression Convective Hazard Model) predicts large and very large hail from atmospheric indicators. Trained with 24 million lightning observations and 44,000 hail reports, applied to ERA5 reanalysis since 1950. The Nature Geoscience publication in 2025 shows: Europe has the strongest global increase in very large hailstones. Northern Italy has tripled since the 1950s.
Swabian Alb, Neckar valley and Bavarian Alpine foothills with very strong evidence, BW/Bavaria border (Allgäu, Upper Swabia) with a significant upward trend since 2005. North German lowlands with decreasing trends. Source: the DWD radar dataset 2005–2024, analysed in Frontiers in Environmental Science (2026, KIT/climXtreme).
ESSL ESWD with over 310,000 hail reports, DWD radar network (17 C-band Doppler, RADKLIM, HAIL-Composite), GDV Naturgefahrenreport with insured loss data since 1973. Supplementary ERA5 reanalysis with AR-CHaMo trends. Meteomedia/meteosol® suits agriculture, too unsystematic for ESRS reporting.
Classical CAPE overestimates in dry regions. CAPE above the minus 10 °C isotherm is the AR-CHaMo anchor parameter and consistently superior in the literature. Lifted Index for screening, SHIP calibrated on US data with weaker European skill, WMAXSHEAR a recently validated low-compute option, Deep Layer Shear for hail size rather than frequency.
Five steps: historical hail exposure class from observation data, trend adjustment via AR-CHaMo, proxy scenario analysis via CAPE/Lifted Index from CMIP6, financial exposure across assets and insurance, documentation of the uncertainty range. ESRS allows proxy-based assessment when methodologically justified and transparently documented.
2023 storm/hail property insurance 2.7 billion euros, motor 1.3 billion. 2024 storm/hail 1.8 billion, Bavaria and Baden-Württemberg each around 1.6 billion including the June flooding. 2025 marked decline to 1.0 billion storm/hail. BW, Bavaria, Thuringia have led the hail loss ranking for years.
The answer is regional and scenario-dependent. Observations 1950–2024 show Europe-wide increases in hail frequency, especially for very large hailstones. Under a high-emission scenario (Kahraman et al. 2025), severe hail may become rarer in central Europe, but very large hail can intensify, with a clear shift towards southern and Mediterranean Europe. For German industrial sites this means: report regionally, not in blanket statements.
ESG and sustainability consultant based in Hamburg, specialised in VSME reporting and climate risk analysis. Has supported 300+ projects for companies and financial institutions – from mid-sized firms to Commerzbank, UBS and Allianz.
More aboutWhen companies report their physical climate risks under CSRD, the EU Taxonomy or IFRS S2, the...
Auditors ask for methodology, not for good intentions. CSRD reports are subject to audit, ESG data...
If you landed here searching for RCP...