About
Summary
The PREDICT project is advancing understanding of climate tipping points in the biosphere using Earth observation data and new methods to detect early warning signals. The project harnesses satellite-derived data records of a suite of Essential Climate Variables generated by the ESA Climate Change Initiative to monitor resilience changes in key tipping elements including Amazon rainforest dieback, dryland vegetation, and permafrost thaw. Statistical methods, process-based modelling, and cross-ECV data approaches are employed to create a prototype biosphere resilience sensing system. This will provide critical insights into when and where potentially irreversible changes may occur and inform more targeted climate adaptation and mitigation strategies. The Global Systems Institute at the University of Exeter is the project lead in collaboration with the University of Leicester and UK Centre for Ecology & Hydrology.
Background
Tipping points in the Earth's climate system represent critical thresholds where relatively small perturbations can trigger self-propelling, abrupt, and potentially irreversible changes in large parts of the Earth system. These tipping elements, once pushed beyond their critical thresholds, can lead to disproportionate and long-lasting impacts on ecosystems and human societies compared to more gradual climate change.
Evidence from past abrupt climate changes and future climate model projections suggests that several elements of the Earth's climate system, particularly in the biosphere, can exhibit tipping point behaviour. Ongoing climate change has already advanced to a point where we are at risk of triggering damaging tipping points in parts of the biosphere coupled to the atmosphere, such as the Amazon rainforest or boreal permafrost. Understanding and providing early warning of these tipping points is crucial for informing adaptation and mitigation strategies.
Current approaches to climate tipping point early warning are dominated by manual analysis of one or two generic early warning signals (usually rising autocorrelation and variance), which has clear limitations because they rely on restrictive assumptions that don't necessarily hold for real systems. Additionally, these methods often miss information contained in higher-order statistical moments and spatial patterns that could provide more robust early warning signals.
The unprecedented amount of data from remote sensing, coupled with innovative models and computing, presents the opportunity to develop multiple tools for detecting tipping points in the biosphere. Remote sensing with its global coverage at fine temporal and spatial resolution can uniquely identify and monitor these tipping systems, phenomena, and their interactions across scales.
Earth observation data must meet several criteria to be useful for tipping point applications, including: salient variables correlated with key processes, accurate analysis-ready data, sufficient spatial coverage and resolution, adequate temporal resolution, long enough temporal duration, and low data latency. However, current remote sensing capabilities have some limitations in meeting these criteria, such as data discontinuities, uncertain data quality, challenges in merging sensors, and difficulties in interpreting resilience estimates.
PREDICT seeks to address these challenges by developing an integrated approach that combines multiple lines of evidence from Earth observations, models, statistical techniques, and cross-ECV approaches to significantly advance our understanding of climate tipping points and ecosystem resilience, their underlying processes, interactions, and potential impacts.
Aims and objectives
The PREDICT project aims to develop and advance methodologies for detecting early warning signals of climate tipping points in the biosphere using Earth observation data, particularly the Essential Climate Variable (ECV) datasets from ESA's Climate Change Initiative .
The main objectives include:
- Advance understanding of biosphere tipping elements and abrupt changes through innovative scientific analyses leveraging observations and models. This will involve identifying key driving processes, feedback mechanisms, and parameter sensitivities in potential tipping elements such as Amazon forest dieback, dryland vegetation, and permafrost thaw.
- Fully leverage the long-term, consistent ECV datasets and other observational data to detect patterns, trends, and early warning signals of approaching tipping points in the biosphere. The project will develop statistical and machine learning methods that can effectively extract signals from noisy and heterogeneous satellite data.
3. Develop cutting-edge techniques integrating Earth observations, models, statistics, and data fusion to comprehensively study key biosphere tipping elements. This will include extending proven methods for detecting early warning signals, deriving new indicators coupled to observable quantities, and harmonizing multi-sensor datasets through advanced data fusion techniques.
4. Implement robust uncertainty quantification frameworks to underpin confidence in the findings. The project will assess parametric, structural, and scenario uncertainties using advanced techniques such as data assimilation, Monte Carlo methods, and cross-model comparisons.
5. Deliver novel, high-impact publications driving the scientific frontier on biosphere tipping points. The project aims to produce peer-reviewed articles that significantly advance our understanding of tipping elements and early warning signals.
A central outcome will be the development of a prototype biosphere resilience sensing system that integrates EO data, process understanding, and modelling tools to provide a multi-scale assessment of resilience in key biophysical tipping elements. This system will enable monitoring of critical variables, estimation of stability metrics, and dynamic mapping of tipping risks at spatial scales from local landscapes to global biomes.
The project will also focus on establishing a tipping point sensing system that combines data and models to identify and anticipate potential tipping points across scales, providing a unifying research framework that could inform resilience-based ecosystem management and governance at multiple levels.
Project Plan
The PREDICT project is structured around six work packages (WPs):
- WP1: Project Management, Communication & Outreach - Led by Dr. Jesse Abrams (UoE), this WP will establish a rigorous project management framework, maintain communication with ESA and stakeholders, implement data management policies, and develop a comprehensive communication and outreach strategy. Deliverables include a project management plan, monthly and quarterly reports, and an executive summary.
- WP2: Earth Observation Data - Led by Dr. Robert Parker and Dr. Darren Ghent (UoL), this WP will underpin all EO-related activities, ensuring ESA CCI ECVs are fully utilized. Tasks include literature review, data identification, uncertainty assessment, cross-ECV consistency evaluation, and integration into ESMValTool recipes. This WP will contribute to inventory documentation and roadmap development.
- WP3: Project Definition and Synthesis - Led by Prof. Valerio Lucarini (UoL) and Prof. Timothy Lenton (UoE), this WP will perform a comprehensive scientific study demonstrating the value of satellite data in investigating biosphere tipping points. It will review existing methodologies, catalogue evidence of tipping elements, analyse multisensor data, assess uncertainties, and develop a scientific roadmap.
- WP4: Development of Methodology - Led by Dr. Joseph Clarke and Prof. Peter Cox (UoE), this WP will develop novel methods for early warning signal detection. Tasks include literature review, statistical and deep learning method development, process-based indicator creation, and cross-ECV data combination approaches, followed by feasibility studies and benchmarking.
- WP5: Tipping Elements Analysis - Led by Dr. Joshua Buxton and Dr. Chris Boulton (UoE), this WP will apply the developed methodologies to three key case studies: Amazon Rainforest dieback, Sahelian dryland greening, and permafrost thaw. Tasks include investigating biophysical processes, selecting case study regions, implementing methods, combining multi-source data, and evaluating performance.
- WP6: Uncertainty Characterization - Led by Dr. Chris Huntingford (UKCEH), this WP will define strategies for understanding uncertainties and error propagation. Tasks include quantifying uncertainties due to Earth System Model differences, variations between early warning signal methods, and bounds associated with each method, culminating in overall uncertainty bounds on triggering conditions.
This work programme leverages the team's expertise in EO algorithm development, ecosystem modelling, and tipping point science to deliver a step-change in our ability to understand, monitor, and forecast the resilience of critical biophysical tipping elements.
Data
The PREDICT project will utilize a wide range of Earth observation data, with a primary focus on Essential Climate Variable (ECV) datasets developed within the ESA Climate Change Initiative (CCI) programme. These datasets will be complemented by other satellite products and model outputs.
For Amazon forest dieback analysis:
- Vegetation-CCI CDRs including data from SPOT, MODIS, MERIS, Metop, OLCI, GEDI, and VIIRS
- Vegetation Optical Depth (VOD) from SSMI, TRMM, TMI, AMSRE, AMSR2, SMOS, and SMAP
- Biomass-CCI CDRs including data from Sentinel-1A/B, ALOS-2, PALSAR-2, and GEDI
- LandCover-CCI CDRs including data from MERIS and Sentinel-2
- Climate data from CMIP6 Ensemble
For dryland patterned vegetation analysis:
- Vegetation-CCI CDRs
- LandCover-CCI CDRs
- CHIRPS Rainfall data
For permafrost thaw analysis:
- Permafrost-CCI CDR Extent/Thickness
- Sentinel-1 SAR
- GHG-CCI CDRs from Sentinel-5P, GOSAT
- Sentinel-2 and Commercial (Planet/MAXAR) Optical Imagery
- LST-CCI CDRs including from (A)ATSR, MODIS, SLSTR, SSMI
The project will also utilize observational uncertainty information provided with the CCI datasets, as well as harmonize multi-sensor datasets through a weighted ensemble machine learning fusion framework, employing Bayesian gap-filling techniques and novel scale-aware approaches.
Data products will be made available via the CCI Open Data Portal and CEDA, with all software and analysis tools developed as open-source with appropriate documentation.
Team
University of Exeter, Global Systems Institute – Project lead
- Professor Timothy Lenton - Principal Investigator, Chair in Climate Change and Earth System Science
- Dr. Jesse Abrams – Co-Principal Investigator, Project Manager, Senior Research Impact Fellow, Glo
- Professor Peter Cox - GSI Director
- Dr. Joseph Clarke - Research Associate
- Dr. Joshua Buxton - Lecturer in GIS and Environmental Spatial Science
- Dr. Chris Boulton - Research Fellow
- Dr. Andrew Cunliffe - Oppenheimer Senior Research Fellow
University of Leicester – Lead on earth observation
- Professor Valerio Lucarini - Professor of Applied Mathematics
- Dr. Robert Parker - Lecturer in Earth Observation
- Dr. Darren Ghent - Senior Research Fellow
- Professor Sergei Petrovskii - Chair in Applied Mathematics
UK Centre for Ecology & Hydrology – Lead on uncertainty quantification
- Dr. Chris Huntingford - Climate Modeller
Contacts
Science Leader: Prof. Tim Lenton
Global Systems Institute (GSI), Laver Building, University of Exeter, North Park Road, Exeter, EX4 4QE, UK
Project manager: Dr Jesse Abrams
Global Systems Institute (GSI), Laver Building, University of Exeter, North Park Road, Exeter, EX4 4QE, UK
ESA Technical Officer: Dr Clement Albergel
ESA ECSAT, Fermi Ave, Harwell, Didcot OX11 0FD, UK