Relying solely on end-of-line testing isn't enough when security, traceability, and mission reliability are vital.
US researchers say a self-supervised machine-learning tool can identify long-term physical defects in solar assets weeks or years before conventional inspections, potentially reducing operations and ...
The software tool developed by Stony Brook University uses self-supervised learning to detect long-term solar equipment ...
Vehicle platooning, first studied as an application of Intelligent Transportation Systems (ITS), is increasingly gaining ...