copy and paste this google map to your website or blog!
Press copy button and paste into your blog or website.
(Please switch to 'HTML' mode when posting into your blog. Examples: WordPress Example, Blogger Example)
Using liquid air for grid-scale energy storage - MIT News Liquid air energy storage could be the lowest-cost solution for ensuring a reliable power supply on a future grid dominated by carbon-free yet intermittent energy sources, according to a new model from MIT researchers
Recovering from the past and transitioning to a better energy future . . . As part of an MIT Energy Initiative seminar, Emily A Carter, a professor at Princeton University, explained the importance of climate change mitigation in the energy transition, emphasizing that our approach must comprise transformation, intervention, and adaptation
A new approach could fractionate crude oil using much less energy MIT engineers developed a membrane that filters the components of crude oil by their molecular size, an advance that could dramatically reduce the amount of energy needed for crude oil fractionation
Ensuring a durable transition - MIT News At the MIT Energy Initiative’s Annual Research Conference, speakers highlighted the need for collective action in a durable energy transition capable of withstanding obstacles
New 3D chips could make electronics faster and more energy-efficient . . . A low-cost, scalable fabrication technology developed at MIT can integrate fast, efficient gallium nitride transistors onto a standard silicon chip, which could boost the performance of electronic chips used in high-bandwidth applications like video calling and real-time deep learning
Study shows how households can cut energy costs - MIT News Giving people better data about their energy use, plus some coaching, can help them substantially reduce their consumption and costs, according to a study by MIT researchers in Amsterdam
Photonic processor could enable ultrafast AI computations . . . - MIT News Researchers developed a fully integrated photonic processor that can perform all the key computations of a deep neural network on a photonic chip, using light This advance could improve the speed and energy-efficiency of running intensive deep learning models for applications like lidar, astronomical research, and navigation