PROMISE — PROcess-based MountaIn permafrost Sensitivity indEx — is our proposal to build one such tool for the Euregio Tyrol–South Tyrol–Trentino, led by Jan Beutel (UIBK), Andrea Andreoli (UNIBZ) and myself (UNITN), with Dominik Amschwand (UIBK) coordinating the scientific deliverables and John Mohd Wani (UNITN) leading the modelling effort. Stephan Gruber (Carleton) and colleagues from the Chinese Academy of Sciences accompany us as international partners.
| Photo by B Edmaier: https://www.facebook.com/B.Edmaier/posts/thawing-permafrost-due-to-global-warming-can-trigger-huge-landslides-like-yester/835248057961452/ |
The idea in one paragraph
Permafrost in mountains is not a uniform sheet of frozen ground that retreats upward as it warms. It is a mosaic — rock walls, talus cones, rock glaciers, ice-cored moraines, scree slopes — and each of these landforms transmits atmospheric warming to the deeper subsurface very differently. Some are buffers (an ice-rich rock glacier with a thick coarse-blocky active layer can stay cold for decades after the climate signal arrives); others are amplifiers (a steep, snow-poor rock wall couples almost directly to the air). PROMISE will produce, for the first time at regional scale in the European Alps, a thermal sensitivity index (thSI) that classifies the Euregio terrain along this buffer–amplifier axis, in the present and into the near future.
The thSI is not a permafrost distribution map. Distribution maps answer: where is permafrost likely to be present? The thSI answers a different and, today, more pressing question: where is the ground thermal regime most vulnerable to ongoing and future change?
Why now, and why this approach
There are precedents — but none for the Alps. Smith & Burgess (2004) built a semi-quantitative sensitivity index for the Canadian Arctic using the buffer-layer model of Luthin & Guymon. The Qinghai–Tibet community has produced beautiful regional assessments (Du et al. 2024 mapped the 1982–2020 trend in soil thermal conductivity, revealing a self-reinforcing degradation: as ground warms toward 0 °C, wetting raises STC, which raises heat flux, which accelerates thaw). But the QTP is a low-relief plateau with fine-grained soils. The Euregio is rugged terrain dominated by coarse-blocky debris, fractured bedrock and snow-driven microclimates. We need a landform-resolved approach.
Two findings from the recent literature anchor our framing:
- Preconditioning (Hauck & Hilbich 2024). A single hot-dry summer can permanently flip an ice-rich landform from buffered to sensitive: once meltwater drains, the latent-heat reservoir is gone and cannot be refilled. Climate sensitivity is not a static material property.
- Snow melt-out timing dominates over winter snow thickness for many high-elevation landforms. Once snow exceeds the ~0.6 m decoupling threshold, mid-winter variations matter little; what matters is the snow melt-out date (SMOD), after which the dark debris is exposed to the June sun (Amschwand et al. 2025b).
Both effects make a process-based, time-varying index essential. An empirical regression on today's climatology won't capture them.
The framework: thermal resistance of the snow–active-layer system
The thSI rests on a simple but physically grounded backbone. The heat transfer between atmosphere and permafrost is $Q = \Delta T / R_{tot}$, where the total thermal resistance is additive across the seasonal snow cover and the active layer:
$$ R_{tot} = R_{snow} + R_{AL} = \frac{h_{snow}}{k_{snow}} + \frac{h_{AL}}{\alpha_{eff} C_v} $$
A high (or rising) $R_{tot}$ means climate-robust terrain; a low (or falling) $R_{tot}$ means climate-sensitive terrain. The thSI is then a convex combination of $R_{tot}$ and its relative change with respect to a reference time. Continuous values are binned into four ordinal classes — low, moderate, high, very high sensitivity — following the spirit of Smith & Burgess (2004).
The trick is that none of the terms in $R_{tot}$ is a constant. $h_{snow}$ and $k_{snow}$ evolve through the season; $\alpha_{eff}$ in coarse blocks includes non-conductive transfer (subsurface airflow) and depends non-linearly on water/ice content. This is where physically based modelling enters.
The three pillars
PROMISE rests on three tightly coupled work packages.
WP1 — Ground truth (UNIBZ, Andrea Andreoli, Raul-David Șerban). Continuing the PERMAWAT line, the consortium extends the existing 32-site ground-surface-temperature network in Matsch and Schnals (with the iconic Lazaun rock glacier) by adding paired soil-moisture/temperature loggers, and instruments two new permanent permafrost boreholes at Hochebenkar / "Auf dem Grat" in the Rofental — the first permanent permafrost boreholes in Tyrol, filling a long-standing observational gap. From these data, the team derives the full battery of thermal indices (MAGST, FDD/TDD, frost number, zero-curtain, SOD/SDD, SCD, frost-cracking window, ALT, MAGT, dza), and uses the semi-empirical FROSTNUM model (Nelson & Outcalt 1987, updated by Cao et al. 2022) as a first-pass hot-spot screening.
WP2 — Numerical modelling (UNITN, with John Mohd Wani). The role of the Trento group is to convert atmospheric forcing into atmosphere–ground transfer functions using GEOtop 3.0, the process-based, three-dimensional land-surface model that solves the coupled mass and energy balance, the multi-layer snowpack, Richards-equation flow with freeze–thaw, and (where relevant) non-conductive subsurface heat transfer in coarse-blocky terrain (Zegers et al. 2025). Two complementary tracks:
- A point-scale 1D ensemble at the cluster centroids defined by the TopoSUB landscape clustering, designed to provide statistically independent samples across the predictor space and to feed both the per-terrain transfer functions and the ML upscaling.
- Distributed catchment simulations (one in Tyrol, one in South Tyrol, one in Trentino, at 50–100 m resolution) that serve as full-physics process diagnostics — quantifying how much lateral water and heat fluxes, slope-aspect contrasts and terrain heterogeneity matter for the transfer functions.
The 1D ensemble is calibrated against the WP1 thermal indices; the distributed runs use the WP3 snow-cover products as boundary conditions and provide the sanity check on what 1D necessarily misses.
WP3 — Upscaling (UIBK, with the new PhD student). Two preparatory products — terrain classification from sub-3-m DEMs and rock glacier inventories, and a pixel-wise SMOD trend analysis over the Euregio building on the 30-m Landsat product of Bayle et al. (2025) — feed into the final thSI map. We will explicitly test the hypothesis that SMOD trends dominate over $R_{snow}$ variability for most high-elevation landforms, by comparing alternative snow-cover descriptors in the GEOtop ensemble. The upscaling itself follows the TopoSUB hybrid statistical–process approach: cluster the landscape, simulate at centroids, map back to the full Euregio.
What's genuinely new
Three things, I think:
- Forward-looking, not descriptive. The thSI estimates rates of change, not present-day occurrence. It is meant to be read together with conventional permafrost distribution maps (Boeckli et al. 2012), not against them.
- Physics-grounded, not regression-fitted. Every grid cell of the final map is anchored, via the cluster centroid it belongs to, to a GEOtop simulation that explicitly resolves snow dynamics, freeze–thaw, and (where relevant) convective heat transfer in coarse blocks.
- A bridge between communities. Mountain permafrost research is, today, fragmented between detailed point-scale process studies (the Murtèl and Matterhorn traditions) and large-scale Arctic / QTP statistical assessments. PROMISE deliberately operates at the intermediate scale where the Alps actually live.
Caveats — what the thSI is not
This deserves emphasis. The thSI quantifies the thermal-conditioning component of permafrost vulnerability. It does not predict slope failures, rockfall release, or rock-glacier surges. Mechanical instability also depends on lithology, fracture geometry, glacial debuttressing, and meteorological triggers we do not model here. The thSI is meant to be added to — not to replace — the topographic, geological and geomorphological information already available to hazard assessors.
Wider context on this blog
For readers who want to follow the technical thread, the cryospheric work of the group is documented here in some detail:
- Summarizing my cryospheric work (made with good company) — the most recent overview, with all the relevant references.
- Permafrost is not ice — soil-freezing thermodynamics — slides and video on why frozen soil is a multiphase system and why proper models must carry three thermodynamic potentials.
- Freezing soil requires new algorithms — on the Newton–Casulli–Zanolli (NCZ) nested-Newton method that underpins our energy-conserving freezing-soil solver.
- Advances in permafrost modelling: application of the Nested Newton algorithm for solving the heat equation — the follow-up on Tubini, Gruber & Rigon (2021, The Cryosphere).
- New Insights in Permafrost modelling (EGU Wien 2017) — the earlier conceptual setup.
- Snow, Ice and Permafrost — the broader cryosphere framing with Alberto Bellin.
- Advanced Topics in Snow Hydrology — measurements, modelling, remote sensing — context on snow–permafrost interactions.
- All posts tagged Permafrost and Snow.
Timeline and acknowledgements
If funded (decision in March 2027), PROMISE will run May 2027 – April 2030. Field installations and the first GEOtop terrain-specific runs are scheduled for the first year; the snow-cover trend product and the first thSI metrics for the second; the final Euregio thSI map and the dissemination workshops for the third. Data and code will go out FAIR and open-source, through PANGAEA, the partners' geoportals, and the existing GEOtop/GEOframe GitHub repositories.
A warm thank you to Dominik Amschwand and Jan Beutel (UIBK), Andrea Andreoli and Raul-David Șerban (UNIBZ), John Mohd Wani (UNITN), and Stephan Gruber (Carleton), whose combined expertise on rock-glacier thermodynamics, wireless sensor networks, periglacial geomorphology, cryo-hydrological modelling and topographic downscaling makes this proposal possible.
Riccardo Rigon, with the PROMISE consortium.

