ΑΙhub.org
 

Australia’s vast savannas are changing, and AI is showing us how


by
10 December 2025



share this:

A grassy savannah style woodland in Western Sydney, NSW. By Qumarchi, CC BY-SA 4.0.

By Dr Jessie Wells, Dr Robert Turnbull and Dr Attila Balogh

Australia has the largest intact savannas on Earth. Savannas are an ever-changing mosaic of ecosystems – from the sparse grasslands to dense woodlands, forests and wetlands.

They stretch from Cape York Peninsula in Queensland to the Kimberley in Western Australia, making up almost 25 per cent of Australia’s landmass.

Anticipating how savannas will change in the years ahead is crucial to help inform our decisions about land management and policy that reflect the region’s cultural, environmental and economic values.

To do this, our team created an artificial intelligence (AI) tool we’ve called Themeda, a name inspired by Themeda triandra, an iconic Australian native species known as ‘kangaroo grass’ (as well as an acronym for Thematic Mapping of Ecosystem Dynamics).

Themeda is trained on 33 years of satellite observations across northern Australia, drawing on a wide range of information – including fire scars, elevation, temperature, rainfall and soils.

From this data, it can predict the changing land cover for every 25 by 25 metre patch of Australia’s 1.5 million square kilometre northern savanna – year by year.

This is like creating a personalised prediction for every house-lot-sized patch of land across an area twice the size of Texas – for every year.

Forecasting land cover change means we can anticipate risks like biodiversity loss, erosion and degraded grazing lands – not just react to them.

By learning from the past and projecting into the future with rainfall and temperature forecasts, Themeda can show, for instance, whether low rainfall might push grasslands and wetlands from dense cover to bare ground – harming water quality downstream – or whether wetter years might increase grassland cover or expand woody vegetation.

These forecasts also help fire managers anticipate fuel loads, guiding cool-season burns that reduce the risk of catastrophic wildfires.

By linking ecological dynamics directly to practical decisions, Themeda gives us a new way to support biodiversity conservation, sustainable grazing and prevent habitat loss.

Deep learning for forecasting

We used deep learning, a branch of AI that can learn from huge amounts of data to discover patterns and make predictions.

A deep learning model has millions of parameters which function like ‘dials’ that it adjusts to improve its forecasts.

For each of the 33 years in our training dataset, the model tried to predict the land cover for the following year.

Each prediction was checked against reality, and the dials were nudged to make the model a little more accurate next time. After many rounds across millions of patches of land, the model gradually learned how to forecast the future.

Deep learning works by passing information through many ‘layers’.

A graphic showing a map of Australia's savanna with headings including 'herbaceous sparse', 'woody open' and 'bare ground'.
A map of predicted landcover for the test year 2019. Graphic: Supplied

 

The design of these layers – or the model’s architecture – determines how well it can recognise the patterns needed for accurate predictions.

We tested two architectures: a standard design in wide use, alongside a new one we developed to better capture both local details and regional patterns across space and time.

Both performed well, but our new architecture consistently came out ahead. Our hope is that it can be applied to other ecological datasets where space and time interact.

But our model’s output is not just a single answer; it’s a probability for each type of land cover in every 25 by 25 metre square of the landscape.

That means we can map the ‘most likely’ land cover in a given year – or look at the chances of more extreme shifts, like grasslands receding or woody vegetation spreading, which can help anticipate risks of erosion or habitat loss.

From ecological forecasting to decision making

Ultimately, our work on Themeda aims to improve decision-making for dynamic and rapidly changing environments.

It offers a flexible and versatile approach for ecological forecasting. And it’s adaptable to diverse ecosystems and regions, via its open-source pre-processing pipeline and software package.

Our next projects aim to use Themeda’s predictions as inputs for modelling ecosystem services under scenarios for land and fire management as well as climate change.

For example, we can map erosion and sediment movement in streams, so that grazing management and restoration efforts can focus on mitigating accelerated erosion.

From there, we’ll use Themeda’s predictions for scenario modelling of future land use and management.

Large areas of Australia’s savannas are currently designated as grazing lands, and ecological forecasting can enable us to explore management strategies for each part of the landscape.

This could include restoration, fire management and grazing practices – assessing their consequences and trade-offs for production, biodiversity and carbon storage.

Beyond its immediate applications, Themeda opens new possibilities for advancing data-driven environmental monitoring and land change modelling.

Its integration of deep learning with remote sensing can be extended to detect ecological trends, assess the impacts of extreme climate events and improve forecasts of habitat shifts.

 
The authors wish to acknowledge their colleagues – Dr Damien Mannion, Kabir Manandhar Shrestha and Dr Rebecca Runting, who co-authored the research on which this article is based.




Pursuit, University of Melbourne




            AIhub is supported by:



Related posts :

Learning to see the physical world: an interview with Jiajun Wu

and   17 Feb 2026
Winner of the 2019 AAAI / ACM SIGAI dissertation award tells us about his current research.

3 Questions: Using AI to help Olympic skaters land a quint

  16 Feb 2026
Researchers are applying AI technologies to help figure skaters improve. They also have thoughts on whether five-rotation jumps are humanly possible.

AAAI presidential panel – AI and sustainability

  13 Feb 2026
Watch the next discussion based on sustainability, one of the topics covered in the AAAI Future of AI Research report.

How can robots acquire skills through interactions with the physical world? An interview with Jiaheng Hu

  12 Feb 2026
Find out more about work published at the Conference on Robot Learning (CoRL).

From Visual Question Answering to multimodal learning: an interview with Aishwarya Agrawal

and   11 Feb 2026
We hear from Aishwarya about research that received a 2019 AAAI / ACM SIGAI Doctoral Dissertation Award honourable mention.

Governing the rise of interactive AI will require behavioral insights

  10 Feb 2026
Yulu Pi writes about her work that was presented at the conference on AI, ethics and society (AIES 2025).

AI is coming to Olympic judging: what makes it a game changer?

  09 Feb 2026
Research suggests that trust, legitimacy, and cultural values may matter just as much as technical accuracy.

Sven Koenig wins the 2026 ACM/SIGAI Autonomous Agents Research Award

  06 Feb 2026
Sven honoured for his work on AI planning and search.


AIhub is supported by:







 













©2026.01 - Association for the Understanding of Artificial Intelligence