This study introduces social navigation metrics to enhance human-autonomous collaboration in air combat. The proposed metrics focus on naturalness and comfort, aiming to align with pilot expectations and improve team performance.
The naturalness metrics evaluate the similarity of the autonomous wingman's motion to human movements and the smoothness of its path. This involves analyzing the agent's velocity, acceleration, and jerk to assess movement smoothness and human-likeness.
The comfort metrics assess human comfort by minimizing disturbance in interactions with the autonomous agent. This includes measuring the smallest distance maintained between the human and the wingman, as well as calculating the risk of collisions based on the principles of Time to Closest Point of Approach (TCPA).
The authors propose validating these metrics through a user study experiment involving military pilots in high-fidelity simulated air combat scenarios. The experiment will use the Ambiente de Simulação Aeroespacial (ASA) framework to evaluate the feasibility and effectiveness of continuous Combat Air Patrol (CAP) operations and Defensive Counter Air (DCA) missions. Data will be gathered via post-trial questionnaires, and the analysis will be conducted using the AsaPy Library to correlate the data and validate the social navigation metrics.
The study aims to optimize autonomous agents' algorithms, including those based on behavior trees and reinforcement learning techniques, to enhance human-autonomous collaboration in air combat and contribute to safer and more strategic air operations.
Na inny język
z treści źródłowej
arxiv.org
Głębsze pytania