How AI helps combat climate change — Global Issues

The recent launch of the UN-led AI Advisory Body advanced a growing global trend to harness machine learning to find solutions to common challenges. AI is upping the data crunching game and a growing number of governments, businesses and civil society partners are working together to reap its many benefits.

That includes speeding up and scaling efforts to realize such global ambitions as the 2030 Agenda and its 17 Sustainable Development Goals (SDGs), which serve as the world’s blueprint to make the planet greener, cleaner and fairer.

Ahead of the latest UN Climate Change Conference (COP 28), which begins at the end of November in Dubai, UN News looks at how AI helps the world, from communities to corporations to law makers, tackle climate change:

Artificial intelligence can contribute to fighting climate change and supporting progress towards all the SDGs.

UN Photo/Elma Okic

Artificial intelligence can contribute to fighting climate change and supporting progress towards all the SDGs.


AI-driven technologies offer previously unheard-of capabilities to process enormous volumes of data, extract insightful knowledge and improve predictive models, according to the UN’s World Meteorological Organization (WMO).

That means improved modelling and predicting climate change patterns that can help communities and authorities to draft effective adaptation and mitigation strategies.

Several UN agencies support vulnerable communities in Burundi, Chad and Sudan through an AI-driven project to investigate past environmental change around displacement hotspots and deliver future projections to inform adaptation measures and anticipatory action for integration in humanitarian programming.

On the ground, enhanced data can be a game-changer. For instance, the MyAnga app helps Kenyan pastoralists brace for drought. With data from global meteorological stations and satellites sent to their mobile phones, herders can plan ahead, better manage their livestock and save hours of scouting for green pastures.

SDG 13

United Nations

SDG 13

  • Strengthen resilience and adaptation to climate-related hazards and natural disasters
  • Integrate climate change measures into national policies, strategies and planning
  • Improve education, awareness-raising, and human and institutional capacity on climate change mitigation, adaption, impact reduction and early warning
  • Raise capacity for effective climate change-related planning and management in least developed countries

The UN Framework Convention on Climate Change (UNFCCC) is the primary international, intergovernmental forum for negotiating the global response to climate change.

Disaster prevention

As extreme weather events unfold with more frequency and intensity, AI can help communities around the world to better brace for climate disasters.

AI-driven initiatives are targeting high-risk areas and feeding into local and national response plans. For areas susceptible to landslides, for example, mapping can help local authorities plan and implement sustainable development measures, reduce risks and ensure the safety of residents in vulnerable communities.

Related developments in AI and robotics were among the tools identified in a recent project led by WMO, UN Environment Programme (UNEP) and International Telecommunication Union (ITU). From enhancing accuracy in weather forecasts to reducing disaster risks, AI is already helping, according to WMO, which operates a disaster risk reduction programme and multi-hazard early warning system that serves countries, communities and humanitarian agencies.

Leveraging AI’s benefits is also part of the UN Secretary-General’s groundbreaking Early Warnings for All initiative. Launched earlier this year, the its action plan aims to ensure everyone on Earth is protected from hazardous weather, water or climate events through early warning systems by the end of 2027.

Artificial intelligence can support early warning systems to mitigate the effects of extreme weather events.

© WMO/Eun Ok Cho

Artificial intelligence can support early warning systems to mitigate the effects of extreme weather events.

Tracking pollution

Ever wonder where urban air quality reports come from? Cities around the world already track pollution to alert the public in cases of dangerous levels.

Using AI, susceptibility maps can support local governments in making decisions to improve public health and urban resilience.

In addition, AI can improve urban planning as well as traffic and waste management, making cities more sustainable and liveable.

Carbon neutrality

AI can revolutionize the world’s approach to carbon neutrality and usher in an era of intelligent sustainability on a global scale at a time when the race is on to keep Earth from heating up to dangerous levels.

As a critical catalyst in realizing global carbon neutrality goals, AI’s algorithms have a key role to play in minimizing environmental impact and maximizing efficiency.

In terms of realizing the global goal for affordable and clean energy for all by 2030 (SDG 7), AI can optimize grids and increase the efficiency of renewable sources. Predictive maintenance using AI can also reduce downtime in energy production. That can mean reducing the planet’s carbon footprint.


United Nations


  • Increase share of renewable energy globally
  • Double global rate of improvement in energy efficiency
  • Expand infrastructure and upgrade technology for supplying modern, sustainable energy services
  • Enhance international cooperation to facilitate access to clean energy research and technology, including renewable energy, energy efficiency and advanced and cleaner fossil-fuel technology
  • Expand infrastructure and upgrade technology for supplying modern and sustainable energy services for all in developing nations, in particular least developed countries, small island developing States and land-locked developing countries

International funding for clean energy in developing countries has dropped to just $10.8 billion in 2021 from a peak of $26.4 billion in 2017.

Fast fashion

As an industry with a record of high emissions, fashion can benefit from AI-driven research and development to accelerate innovation. The $2.4 trillion-dollar global industry that employs approximately 300 million people across the value chain, many of whom are women, and the scale of the industry is only expected to grow over the coming years.

Given its size and global reach, unsustainable practices within the fashion sector have important impacts on social and environmental development indicators, and without major changes to production processes and consumption patterns in fashion, the social and environmental costs of the sector will continue to mount, according to the UN Alliance for Sustainable Fashion.

That’s where AI can step in. Machine learning can optimize supply chains to reduce waste, monitor resource consumption and promote sustainable manufacturing processes. AI can help to accelerate the energy transition by optimizing savings and improving efficiency across energy-intensive sectors.

The fashion industry is a major contributor to harmful emissions.

© UNESCO/Thandiwe Muriu

The fashion industry is a major contributor to harmful emissions.

Fast food

Likewise with agriculture, another emissions-heavy sector. It accounts for 22 per cent of global greenhouse gas emissions, according to a UN climate assessment report, but AI-driven efforts can change that.

From corporations to small-scale farmers facing extreme weather events, water scarcity and land degradation, AI can help optimize their practices, reduce waste and minimize the environmental impact of food production. AI-driven smart grids can balance supply and demand, facilitating the integration of renewables into energy systems and reducing the reliance on fossil fuels.

This year’s Science and Innovation Forum, held in mid-October, focused on climate action. Hosted by the UN’s Food and Agriculture Organization (FAO), the week-long event showcased examples of technologies that aim to transform traditional practices into data-driven systems that protect people and the planet.

Among them, AI and digital tools are pivotal in building climate-resilient agrifood systems that are more efficient, sustainable and adaptable to climate change challenges, according to the agency.

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UN on AI

The UN has been exploring ways to leverage the potential of AI to drive change and impact across their issue areas. Here are just a few:

  • The UN System’s Chief Executives Board for Coordination (CEB) and its High-Level Committee on Programmes (HLCP) established in 2020 the interagency working group on AI (IAWGAI), which is co-led by ITU and UNESCO.
  • The AI for Good platform, organized by ITU in partnership with 40 UN sister agencies, launched the Neural Network, an AI-powered community networking and content platform designed to help users build connections with innovators and experts. It also links innovative ideas with social impact opportunities.
  • ITU is working to identify gaps in UN AI-related activities in order to help the UN system prioritize strategic actions.
  • Multiple UN agencies are driving new competitions to find the best ways to advance climate action with AI. The winning entries will debut at COP 28 in late November. Learn more about the competitions here.
  • Find out more about UN activities on AI here.

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