By Irishexaminer.com Robert Booth
Using machine learning, researchers at universities in the US, China, Singapore and Sweden designed new paint formulas tuned to best reflect the sun鈥檚 rays and emit heat, according to a peer-reviewed study published in the science journal Nature.
It is the latest example of AI being used to leapfrog traditional trial-and-error approaches to scientific advances. Last year the British company MatNex used AI to create a new kind of permanent magnet used in electric vehicle motors to avoid the use of rare earth metals, whose mining is carbon-intensive.
Microsoft has released AI tools to help researchers rapidly design new inorganic materials 鈥 often crystalline structures used in solar panels and medical implants. And there are hopes for new materials to better capture carbon in the atmosphere and to make more efficient batteries.
The paint research was carried out by academics at the University of Texas in Austin, Shanghai Jiao Tong University, the National University of Singapore and Ume氓 University in Sweden. It found that applying one of several new AI-enabled paints to the roof of a four-storey apartment block could save electricity equivalent to 15,800 kilowatt hours a year in a hot climate such as Rio de Janeiro鈥檚 or Bangkok鈥檚.
If the paint were applied to 1,000 blocks, that could save enough electricity to power more than 10,000 air conditioning units for a year.
Yuebing Zheng, a professor at the University of Texas and co-leader of the study, said: 鈥淥ur machine learning framework represents a significant leap forward in the design of thermal meta-emitters. By automating the process and expanding the design space, we can create materials with superior performance that were previously unimaginable.鈥
He said a month鈥檚 work designing a new material was being done in a few days using AI and that new materials that may never have been discovered through trial and error were being created.
鈥淣ow, we follow the machine learning output, [its instructions for] the structure and what kind of materials we should use, and we can get it right without going through many, many design and fabrication testing cycles.鈥
AI allows material scientists to push through previous restrictions in computational power. It also means the traditional process of creating a material and then testing its properties can be reversed, with scientists able to tell the AI what properties they want upfront.
The Guardian