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Automating aircraft ship landings at rough seas

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Landing a helicopter on a ship's flight deck is one of the most challenging and complex maneuvers demanded of a Navy pilot. Unlike a runway, the landing area of any ship is small and a constantly moving target that sways with the sea. Solutions have been proposed to automate ship landing. Still, none have effectively held up to the added challenges helicopter pilots face when nature delivers gusty winds, especially in the wake of a ship, low visibility and other challenging environments.

The U.S. Navy is pursuing a solution capable of adapting to these difficult conditions and is turning to Texas A&M University researchers to develop the next generation of fully autonomous vertical takeoff and landing (VTOL) aircraft. By combining an optimal aircraft design with a robust machine learning algorithm, the researchers are proposing a new approach to automated aircraft ship landing at rough seas.

"When a helicopter pilot tries to land on a ship deck, they don't actually look at the moving deck," said Dr. Moble Benedict, associate professor in the Department of Aerospace Engineering at Texas A&M and the project's principal investigator (PI). "If they look at the moving deck, it will disorient the pilot, so they are trained to look at a specialized equipment on the ship called the horizon bar, which is a green, lighted, gyro-stabilized strip that provides the pilot an artificial horizon."

Recent studies focused on tracking the ship's deck rather than the horizon bar by using cameras, GPS and lidar to track the moving ship and adjust the aircraft to match its motion. Instead, Benedict and Dr. Dileep Kalathil, assistant professor in the Department of Electrical and Computer Engineering and co-PI on the project, are automating the landing process by mimicking a pilot's behavior while tracking the horizon bar.

"Reinforcement learning is a class of machine learning for developing the control algorithm for autonomous systems," said Kalathil. "We are developing a reinforcement learning control algorithm so precise that even if a vehicle is changing course or is in the presence of heavy winds, it can still track the horizon bar."

Benedict and Kalathil have proven success in using reinforcement learning to track and safely land an unmanned aerial system (UAS) in various conditions, including moderate horizontal winds, foggy visibility and changes in course and speed. Now, they're merging their respective disciplines of aerospace engineering and electrical and computer engineering to build on these advancements.

The researchers have developed an algorithm robust enough to tolerate adverse weather conditions and precise enough to continue tracking through course changes and varying speeds. Credit: Advanced Vertical Flight Laboratory

"My focus will be on designing a new generation of UASs for robust ship-based operation and while understanding their flight dynamics," said Benedict. "And Dr. Kalathil's focus is on using reinforcement learning to make this autonomous process more robust for highly uncertain environments."

Ultimately, the Navy is interested in three elements: an aircraft that is runway independent, meaning it can take off and land vertically; cruise efficiency so the aircraft can fly for long durations at a time; and lastly, the ability to land on moving ship decks safely and successfully.

Benedict is applying his expertise in rotorcraft to designing VTOL aircraft concepts that are gust-tolerant and efficient, which may include foldable wings when transitioning from vertical flight to fixed-wing cruise. Using simulations, wind tunnel testing and flight tests, he'll analyze the performance and dynamics of these concepts to build a subscale model that will complement the control systems developed by Kalathil.

Using his expertise in , Kalathil is developing an algorithm that is robust enough to handle rough conditions and optimized to use real-time data to adapt quickly, reacting similarly to a pilot.

"One of the main challenges for autonomous ship landing is the unpredictable nature of rough seas," said Kalathil. "But if we have a wind sensor in the UAS assembly that measures the speed and direction of the wind, then we can use that information to counteract that specific condition."

This adaptability addresses the simulation-to-reality gap faced by other developments. Kalathil is also looking at using a collaborative console to control multiple UASs.

More information: Vishnu Saj et al, Robust Reinforcement Learning Algorithm for Vision-based Ship Landing of UAVs, arXiv (2022). DOI: 10.48550/arxiv.2209.08381

Bochan Lee et al, Intelligent Vision-based Autonomous Ship Landing of VTOL UAVs, arXiv (2022). DOI: 10.48550/arxiv.2202.13005

Journal information: arXiv
Citation: Automating aircraft ship landings at rough seas (2023, October 3) retrieved 25 July 2024 from
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