By Kaitlyn Landram
Among all greenhouse gases, carbon dioxide is the highest contributor to global warming. If we do not take action by 2100, according to the Intergovernmental Panel on Climate Change, the average temperature of our world will increase by about 34 degrees Fahrenheit. Finding effective ways to capture and store CO2 has been a challenge for researchers and industries focused on combating global warming, and Amir Barati Farimani has been working to change that.
"Machine learning models bear the promise for discovering new chemical compounds or materials to fight against global warming," explains Barati Farimani, an assistant professor of mechanical engineering at Carnegie Mellon University. "Machine learning models can achieve accurate and efficient virtual screening of CO2 storage candidates and may even generate preferable compounds that never existed before."
Barati Farimani has made a breakthrough using machine learning to identify ionic liquid molecules. Ionic liquids (ILs) are families of molten salt that remain in a liquid state at room temperature, have high chemical stability and high CO2 solubility, making them ideal candidates for CO2 storage. The combination of ions largely determines the properties of ILs. However, such combinatorial possibilities of cations and anions make it extremely challenging to exhaust the design space of ILs for efficient CO2 storage through conventional experiments.