Author: Pina Schlombs, Sustainability Lead, Siemens Digital Industries Software
Today, seismic changes are transforming the world we live in. Our ability to master these ‘megatrends’ – demographic change, urbanization, glocalization, environmental change and resource efficiency, and digitalization – will shape our collective future.
The pressure of time weighs heavily on all of these. But this pressure becomes existential when it comes to the race to net-zero; net-zero in the broad sense encompassing all human-induced environmental impacts. Time is running out to achieve the goals of the Paris Agreement and, as highlighted in the Infrastructure Transition Monitor 2023, fewer than 50% of organizations currently expect to meet their decarbonization targets by 2030.
AI, however, holds promise to be a game-changer in our efforts here. One study published in Nature magazine, examining the role of AI in achieving the Sustainable Development Goals, outlines the potential, alongside the considerations for realizing it. Other success factors are referenced in research by PwC, which highlights that AI could help cut CO2 emissions by 0.9 to 2.4 gigatons by 2030, equal to the yearly emissions of Australia, Canada, and Japan.
When it comes to transforming the backbones of our economies, like manufacturing, infrastructure, and transportation, it is not about making one giant leap with AI. The strategic use of ‘Industrial AI’ (AI that is industrial-grade - reliable, secure and trustworthy) can serve as an accelerator and enhancer. It can help us master more complex problems faster and at scale to increase efficiency and lower emissions. What does this progress look like? Here are five prime examples: