A team of researchers from different US institutes are using the ISS (International Space Station) as a testbed to evaluate new space communications that could have far-reaching implications for future space missions. The research, in part, uses artificial intelligence to address ways to reduce or eliminate interrupted communications and guard against disruptions caused by space weather and other impairments faced by astronauts and science mission spacecraft. The team has researchers from the Worcester Polytechnic Institute (WPI), Penn State, and the NASA Glenn Research Center in Cleveland.
Alexander Wyglinski, professor of electrical and computer engineering at WPI, and his co-investigators recently reported on an in-orbit proof-of-concept experiment using the new algorithm in a paper in the IEEE Journal on Selected Areas in Communications. In the paper, the researchers explain that their algorithm was developed using a machine learning technique called reinforcement learning neural network (RLNN). The researchers were able to develop a communications approach that is able to automatically adjust to unpredictable changes in the communications channels while still achieving the mission goals. As a result, multiple communication parameters can be tailored and adjusted in real time to compensate for the harsh space communications environment.
According to Wyglinski, this new framework is a game-changer for performing wireless communications in space. By using machine learning techniques such as RLNN, one can make a significant difference in how critical information is exchanged in space, which can ultimately impact the success of a mission. Wyglinski received $123,505 from NASA to study the issue. NASA uses the space station, whose orbit is approximately 250 miles above the Earth, to learn about living and working in space and as a testbed for future exploration missions. This particular research used an experimental communication system on board the space station called the Space Communications and Navigation (SCaN) Testbed.
Wyglinski said, astronauts will frequently encounter a phenomenon known as “space weather,” which refers to charged particles that stream from the sun. When they enter the atmosphere near the Earth’s poles, the particles produce colorful light shows called the auroras, such as the Aurora Borealis or Northern Lights, but they can also disrupt wireless communications in and around Earth. As part of the project, Wyglinski has been working closely with Richard Reinhart, a principal investigator on the project at NASA Glenn, to test the new algorithms using the SCaN Testbed.
According to NASA, the Testbed, which includes several software-defined radios that can be reprogrammed as part of communications experiments, serves as a platform for NASA research on radio communications and the Global Positioning System (GPS). The Testbed was installed in the International Space Station in 2012 and is used to conduct a variety of experiments with the goal of further advancing other technologies, reducing risks on other space missions, and enabling future mission capabilities.
Reinhart believes the algorithm the research team is developing will provide improved and more durable connections between the Earth and future space missions. The novel part of the experiment is that the cognitive learning algorithm trains in a way that does not disrupt the communications links.
Student researchers working on the project were WPI graduate researcher Max Li and Timothy Hackett, Recipient of a Penn State NASA Space Technology Research Fellowship. Both spent several weeks at the NASA Glenn Research Center testing the system. Among other activities, Li ensured that computer code was working properly and evaluated the algorithm. Based on the findings, the research team has a framework on which to build new designs and implementations that can be used across a wide variety of space communications scenarios, including deep space missions.