An animation shows glaciers in the Karakoram range of
Pakistan with monthly ice-velocity measurements overlaid from January through
December. On Baltoro Glacier, red areas, indicating high ice velocities,
propagate slowly downslope throughout the melting season.
NASA/Chad Greene
For the first time, scientists have created a comprehensive global dataset
revealing how the world's glaciers speed up and slow down with the seasons.
Published in Science in November 2025, this groundbreaking
study analyzed
over 36 million satellite image pairs—including decades of Landsat data—to
track the seasonal "pulse" of every major glacier on Earth.
The research, built off the ITS_LIVE ice velocity dataset from NASA’s Jet Propulsion
Laboratory (JPL), reveals that seasonal glacier dynamics are becoming more
pronounced as our planet warms, with the strongest seasonal variations
occurring where annual maximum temperatures exceed freezing. Armed with this
global perspective, researchers can continue to tease out patterns in glacial
dynamics, identifying how factors including geology and hydrology impact
seasonal melting.
Alex Gardner, a scientist at NASA
JPL and a co-author on this study, explains how combining Landsat and radar
data makes this research possible.
What makes this research unique
from other studies of glacial dynamics?
While many past studies have
investigated seasonal changes in glacier flow, they have typically focused on
single glaciers or specific regions. This localization makes it difficult to
extrapolate findings to the rest of the world.
This study is the first to
characterize seasonal flow changes for all the world’s glaciers. By applying a
consistent methodology globally, we were able to isolate the universal
relationships that drive seasonal fluctuations in glacier flow.
Why did you use Landsat in this
work? Did it give you any insight that would have been difficult to get
otherwise?
We utilized data from Landsat
4/5/7/8/9, as well as ESA’s Sentinel 2 (optical) and Sentinel 1 (radar).
Landsat offers an unmatched historical record with dense temporal sampling,
particularly following the launch of Landsat 8 in 2013.
Three factors make Landsat imagery
ideal for detecting "surface displacements" (the subtle pixel shifts
used to estimate flow):
- Near-exact repeat orbits: The satellite returns to the exact
same position.
- Nadir viewing: The instrument looks directly
downward.
- Stable instrument geometry: Distortion is minimized.
An animation shows glaciers in southeastern Alaska
with monthly ice-velocity measurements overlaid from January through December.
Red areas, indicating high ice velocities, begin to expand across Malaspina
Glacier in spring.
NASA/Chad Greene
Why does the ITS_LIVE tool use the
Landsat panchromatic band? Which bands from Landsats 4-5 are used?
We measure surface displacement
using a technique called feature tracking, which tracks the movement of
specific surface details between a primary and a secondary image.
This approach works best with
high-resolution imagery because there are more "features" to track.
Therefore, we utilize the 15m panchromatic band. For the older Landsat 4/5
data, we use Band 2 (visible red) because it provides the best contrast over
bright glacier surfaces.
You used Landsat data in
combination with radar data to track ice velocity. What did each of these
datasets contribute?
Optical and Radar imagery are
highly complementary and allow us to reconstruct a complete timeline of glacier
flow:
- Radar (Active
Sensor): Can image
the surface day or night, regardless of cloud cover, but struggles with
feature tracking when the surface is melting (wet snow/ice).
- Optical (Passive
Sensor): Requires
sunlight and clear skies, but performs significantly better than radar
when the surface is melting.
How did you use radar data to
validate uncertainties?
We characterized uncertainty by
analyzing retrieved velocities over stationary surfaces, such as bedrock. If
our data showed high variability or movement in areas we know are not moving
(like rock), we knew those measurements carried a higher uncertainty.
You found that glacier dynamics
vary by region and glacier type. Why is it important to understand these global
differences?
A glacier's response to external
forces—such as meltwater lubricating the bedrock or changes in frontal
melting—is highly dependent on local factors (e.g., the material beneath the
glacier or the shape of the fjord). This makes it risky to assume that findings
from one glacier apply to another.
Our study identified general
patterns by observing nearly every glacier on Earth. A key finding was the
relationship between temperature and flow:
Seasonal variability becomes
prominent when annual maximum temperatures exceed 0°C.
The amplitude of that seasonal
cycle increases with every degree of warming above that threshold.
Are there plans to incorporate
Landsat 9 data into future studies? How would improvements in remote sensing
technology (increased temporal revisit, spatial resolution, etc.) impact
glacial velocity analyses?
We are already ingesting Landsat 9
data into the ITS_LIVE project, which is designed to scale quickly with new
sensors. Future sensor
improvements offer a trade-off:
- Increased Spatial
Resolution: Allows us to track a
higher number of surface features, improving flow estimates.
- Increased Temporal
Frequency: Reduces data gaps
caused by surface changes (loss of features), but can potentially increase
error rates. This is because displacement is an accumulated signal;
features move half the distance in an 8-day pair compared to a 16-day
pair, making the movement harder to distinguish from background noise.
Are there any research questions
you’re interested in that build off this work?
This study is just the tip of the iceberg. The dataset is rich with insights on glacier mechanics that are waiting to be uncovered. While we hope to make new discoveries in the coming years, we are equally excited to see what breakthroughs come from the wider scientific community exploring this open data.
An animation shows an ice cap in the Canadian Arctic
with monthly ice-velocity measurements overlaid from January through December.
Red areas, indicating high ice velocities, expand across the ice cap during the
summer months.
NASA/Chad Greene
Source: Tracking Glacial Change with Landsat and Radar - NASA Science



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