Heron Systems turns focus to small UAVs after DARPA AlphaDogfight Trials win

Kartal1

Experienced member
Lead Moderator
Messages
4,439
Reactions
81 16,660
Nation of residence
Bulgaria
Nation of origin
Turkey
Heron Systems turns focus to small UAVs after DARPA AlphaDogfight Trials win
by Pat Host

Heron Systems is looking to get its artificial intelligence (AI) algorithms on autonomous unmanned aerial vehicles (UAVs) after winning the United States Defense Advanced Research Projects Agency’s (DARPA’s) AlphaDogfight Trials on 20 August.


Brett Darcey, Heron Systems vice president of research, told Janes on 24 August that the company has been on the periphery of the US Air Force’s Skyborg autonomous attritable UAV effort and wants to get more directly involved with the programme. Heron Systems, he said, had a minor risk reduction subcontract for Skyborg through the Johns Hopkins University Applied Physics Laboratory (APL), which also played a part in the AlphaDogfight Trials.

1598530282006.png

Heron Systems used its TacView tool to analyse its AI algorithm’s flight patterns and perform post-mission debriefs with subcontractor BGI LLC to identify performance issues. (Heron Systems)


Heron Systems emerged from a group of contractors that created AI algorithms to simulate Lockheed Martin F-16 Fighting Falcons in aerial combat. These contractors included semifinalists Aurora Flight Sciences, Lockheed Martin, and PhysicsAI.


In the final round, Heron Systems competed against a human F-16 pilot that was US Air Force (USAF) weapons school-trained. Heron Systems defeated the human pilot 5–0 to win the competition. While the company did not receive a cash award for winning the competition, Darcey said the victory, most importantly, demonstrated that Heron Systems has a robust and capable end-to-end pipeline for building multiple solutions using underlying technologies.


“That is exciting,” Darcey said. “(It) gives us the confidence to go after other stuff.”


Darcey said Heron Systems was able to win the competition because it performed full-end reinforcement learning, from controlling the aircraft to tactical decision making. Other contractors, he said, were performing an expert-systems approach while others were performing a more hybrid-hierarchical model.
 

Follow us on social media

Top Bottom