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Applications of Artificial Intelligence in Combating Climate Change
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Artificial intelligence is crucial to combating climate change

Apr 09, 2023 pm 03:11 PM
AI data climate change

It is undeniable that climate change will have a significant impact on environmental, social, political and economic systems around the world. Mitigation of climate change and the ability to adapt and recover from this change are therefore critical. This is critical to efforts to achieve net-zero emissions by 2050, as well as efforts to combat the consequences of climate change and minimize the harm caused by it. At this critical time, applying advanced analytical methods and artificial intelligence (AI) to the climate challenge provides a vital path to achieving meaningful change.

Artificial intelligence is crucial to combating climate change

# A BCG (Boston Consulting Group) report titled “How Artificial Intelligence Can Be a Powerful Tool in the Fight against Climate Change” was recently released.

A survey of more than 1,000 executives with decision-making authority over artificial intelligence or climate change action found that about 40% of organizations envision using artificial intelligence in their own efforts to improve climate change. However, even among these experts, there is widespread agreement that significant barriers to widespread adoption of AI remain: 78% of respondents cited insufficient AI expertise as a barrier to their use of AI in combating climate change, and 77% cited artificial The availability of smart solutions is limited, and 67% lack confidence in AI-related data and analytics.

Hamid Maher, managing director and partner at BCG and BCG GAMMA and co-author of the report, said: “AI’s unique ability to collect, integrate and interpret large, complex data sets means It can help stakeholders take a more informed and data-driven approach to tackling carbon emissions and combating climate risks. However, most existing AI-related climate solutions are fragmented and often difficult to access, There is also a lack of resources at scale. These shortcomings need to be improved."

A team composed of data scientists and artificial intelligence experts. Their mission is to go to the "unfathomable" place in the enterprise - the database, bring back light - business insights, and help enterprises create new business value.

Applications of Artificial Intelligence in Combating Climate Change

There are many ways global leaders can use AI to achieve their goals:

mitigating emissions:One of the most critical uses of artificial intelligence is to measure, reduce and eliminate emissions and greenhouse gas (GHG) effects. More than 60% of public and private sector leaders believe reducing and measuring emissions is the greatest business value to their organizations. BCG stated that if artificial intelligence is applied globally, greenhouse gas emissions can be reduced by 5% to 10%, which is equivalent to reducing carbon dioxide emissions by 260 to 5.3 billion tons.

Response Capacity:Adapting to climate change is a critical task for policymakers and the public as it increases resilience to the impacts of long-term climate trends and extreme weather events ability. Artificial intelligence is well-suited to help predict climate-related disasters, whether by improving long-term forecasts of localized events such as rising sea levels, or by upgrading early warning systems for extreme phenomena such as hurricanes or droughts.

Improve social awareness: Artificial intelligence can be used to support research and education efforts on climate change, helping stakeholders understand the associated risks and impacts, and encouraging them to share what they learn . These efforts support and expand ongoing mitigation, adaptation, and recovery efforts.

ALL SUPPORT REQUIRED

Artificial intelligence has many critical uses in the climate change space, but any successful AI solution must be user-friendly and easily accessible. It must provide tangible benefits to users and provide clear recommendations that are easy to implement. Therefore, AI solutions require more meaningful support, including access to capital investment, policymakers, and trained practitioners.

“AI holds great promise in helping to solve the climate crisis, but AI alone is not enough. It depends on the willingness of policymakers to act and make the necessary changes, which is supported in part by AI and other emerging technologies," said Damien Gromier, founder of AI for the Planet and co-author of the report.

AI for the Planet invites all interested parties to participate in its solutions, including active participation at any stage and from any sector, whether private, public, academic or non-profit institutions.


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