The fast penetration of automation and Artificial Intelligence (AI) is boosting the adoption of automated and autonomous systems across industries. Known as digitalisation, this trend is also rapidly changing aviation. Driven by the increasing complexity of the aviation ecosystem (aircraft, air traffic control – ATC, airports), digitalisation provides solutions in the form of Digital Assistants (DAs) that, by teaming with their human counterparts (pilots, ATC operators, airport operators), support the execution of tasks to ensure safe and profitable operations in complex scenarios. The JARVIS project, led by Collins Aerospace, aims at developing and validating three ATM solutions: an Airborne DA (AIR-DA, TRL4), an ATC-DA (TRL4), and an Airport DA (AP-DA, TRL6).
The AIR-DA will increase the level of automation in the flight deck and thanks to AI-based machine intelligence will act as an enabler for reduced crew operations and single pilot operations. The adoption of the AIR-DA will allow pilots to manage complex scenarios without compromising safety or security, while reducing pilot workload. The ATC-DA will increase the level of automation in air traffic control, where environmental Key Performance Indicators (KPIs) and airspace capacity management will benefit from the adoption of AI-based technologies. ATC-DA targets support for both tactical conflict resolution , tactical recommendations, flight plans syntactical errors correction and short term traffic forecasting. Finally, the AP-DA will increase the level of automation in airports, enhancing safety and for scenarios such as intrusion detection to enhance runways operations as of aircraft turnaround and terminal passengers' flows
The adoption of AI-driven technologies in the aviation ecosystem represents a promising breakthrough but also entails challenges. JARVIS will address key challenges common to the three different DAs:
I. Assured AI design, to deliver trustworthy, explainable, safe, and ethical decision-making algorithms;
II. Human AI Teaming (HAT), to deliver human-centric designs to maximise the teamwork between humans and autonomous systems;
III. Big data and cloud infrastructures for the proper management of data moving from a centralised architecture to a more edge-to-cloud architecture.
These challenges are addressed in collaborations with regulatory agencies (including EASA) and the international AI community.