作者: |
Krausman, A; Neubauer, C; Forster, D; Lakhmani, S; Baker, A. L; Fitzhugh, S. M; Gremillion, G; Wright, J. L; Metcalfe, J. S; Schaefer, K. E. |
摘要: |
The rise in artificial intelligence capabilities in autonomy-enabled systems and robotics has pushed research to address theunique nature of human–autonomy team collaboration. The goal of these advanced technologies is to enable rapid decisionmaking, enhance situation awareness, promote shared understanding, and improve team dynamics. Simultaneously, use ofthese technologies is expected to reduce risk to those who collaborate with these systems. Yet, for appropriate human–autonomy teaming to take place, especially as we move beyond dyadic partnerships, proper calibration of team trust is neededto effectively coordinate interactions during high-risk operations. But to meet this end, critical measures of team trust for thisnew dynamic of human–autonomy teams are needed. This report seeks to expand on trust measurement principles and thefoundation of human–autonomy teaming to propose a “toolkit” of novel methods that support the development, maintenance,and calibration of trust in human–autonomy teams operating within uncertain, risky, and dynamic environments. |