How AI and Earth observation can help life on our planet
ESA’s Earth observation satellite EarthCARE is designed to answer critical scientific questions related to the role that clouds and aerosols, such as desert dust, play in reflecting incident solar radiation back out to space and trapping infrared radiation emitted from Earth’s surface. Image: ESA/ATG medialab
- Earth observation (EO) provides vital data for climate action and sustainable growth.
- Thanks to new satellites, advanced sensors and data from GPS-enabled and internet of things (IoT) devices, the volume of EO data has expanded exponentially.
- The volume of Earth observation data being generated exceeds the current capacity to analyse it.
- Using artificial intelligence can help decipher this data, providing actionable insights and business cases.
Earth observation (EO) by satellites, aircraft and ground-based sensors has for decades provided a rich stream of data for governments and businesses to take climate action and ensure sustainable growth. Its uses include creation of early-warning systems, detection of methane leaks and illegal mining, and tracking of afforestation and adaptation efforts.
Thanks to new satellites and advanced sensors, the scale and quality of commercially available EO data have risen exponentially in the past decade. While EO satellites alone provide hundreds of terabytes of data per day – and rising – data from GPS-enabled and internet of things (IoT) devices take the scale of data created way beyond the current capacity to analyse it.
Enter artificial intelligence (AI).
The use of AI coupled with low-cost, high-performance computing is set to do for EO data what large language models (LLMs) have done for text, as a new briefing paper produced in collaboration with Deloitte, The Catalytic Potential of Artificial Intelligence for Earth Observation, shows. This is making EO easier to understand and use, with profound impacts:
- Answering complex questions. AI capabilities allow for more data to be processed quickly and accurately, enabling the transformation of vast reams of raw EO measurements into actionable insights.
- Providing intuitive user interfaces for non-expert users. In the same way that ChatGPT has made LLMs ubiquitous, the development of more intuitive user interfaces (UI) will enable business users, and not only data scientists, to access and use AI-enabled EO insights.
- Driving business model innovation. As AI makes EO more accessible, organizations across sectors and industries can scale its application, disrupting commercial and sustainability-focused business models alike.
By infusing consistent, objective measurements into climate-positive action and environmental disclosures, AI will provide more trust and transparency in actions towards a net-zero economy.
Some use cases of AI in Earth observation include: fusing disparate datasets to enable more holistic situation analysis; creating training data for AI/machine learning (ML) systems; identifying causes (such as those from methane emissions – landfills, farms or pipelines); forecasting events such as cyclones and floods; and monitoring changes using large time series datasets.
The briefing paper provides vital insights for taking forward the Forum’s Earth observation work, which supports organizations to contribute to a nature-positive and net-zero economy, set science-based decarbonization targets, and understand their dependencies and impacts on nature.
Here are some key insights:
Foundation models
Going ahead, the convergence of AI with advanced computing will supercharge the discoverability and usability of EO data. For example, new foundation models could accelerate the analysis of large volumes of EO data “on demand”. Since foundation models are trained on a broad set of data, they can be used across a variety of downstream tasks, obviating the need for new models for each use case. This would reduce costs as a single model would support multiple downstream applications.
An early application helped a team of journalists to discover illicit mining in the Amazon. A customized, deep-learning model would have taken months to build, but with the foundation model, the datasets took days to assemble and milliseconds to curate.
UI for non-experts
With more accessible UI, novice users will be able to explore and experiment with available Earth data. In turn, greater awareness of EO’s capabilities and the questions it can answer will empower lay users to apply EO insights to use cases in their industry.
Two initiatives of the Massachusetts Institute of Technology (MIT) Media Lab, Earth Mission Control and Climate Pocket, provide such enhanced user interface and user experience. They analyse complex EO datasets, transform them into attractive data visualizations and provide actionable insights.
This provides a vital tool for informed decision-making for industry, policy-makers and communities.
New business models
Just as generative AI and LLMs are being tailored for and woven into business models today, AI for EO can provide a range of applications, such as monitoring remote infrastructure, assessing climate risk and adaptively managing supply chains.
EO insights can transform core functions and decision-making processes. For instance, an electricity utility could augment its satellite imagery of electrical infrastructure with geotagged data about its component parts, such as substations and transmission lines. Then, the utility would integrate insights about the status and health of its distributed systems into its workflow. Those insights could enable timely and cost-effective decisions to direct preventive maintenance by the organization’s workforce.
Ethical considerations
AI models need proper governance and safeguards to avoid negative impacts. For example, farm imagery without farmers’ knowledge could inform costly regulations or insurance premiums that negatively impact the same farmers. Biases in AI models may lead to outcomes that are neither equitable nor inclusive for all regions and populations.
In keeping with the Recommendation on the Ethics of Artificial Intelligence signed by all 193 United Nations Educational, Scientific and Cultural Organization (UNESCO) member-states in 2021, incorporating humans-in-the-loop is a basic step to infuse ethical judgment in both research and implementation of AI for EO. Decisions should be guided not only by AI models of Earth data but also by considerations for the economic, cultural and societal consequences of the models’ results and recommendations.
A focus on governance, standards, open-source solutions and business model innovation would ensure equitable adoption of AI for EO on a global scale. In addition to opening up new frontiers of value creation across sectors and industries, it will ensure a sustainable future for Earth.
Don't miss any update on this topic
Create a free account and access your personalized content collection with our latest publications and analyses.
License and Republishing
World Economic Forum articles may be republished in accordance with the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International Public License, and in accordance with our Terms of Use.
The views expressed in this article are those of the author alone and not the World Economic Forum.
Stay up to date:
Climate and Nature
Forum Stories newsletter
Bringing you weekly curated insights and analysis on the global issues that matter.
More on Nature and BiodiversitySee all
Federico Cartín Arteaga and Heather Thompson
December 20, 2024