More than an auto-pilot, AI charts its course in
aviation
Artificial intelligence steps up on the flight deck and in
the back office.
Boeing 787 Dreamliner.
Welcome to Ars
UNITE, our week-long virtual conference on the ways that innovation brings
unusual pairings together. Each day this week from Wednesday through Friday,
we're bringing you a pair of stories about facing the future. Today's focus is
on AI in transportation-buckle up!
Ask anyone what they think of when the
words "artificial intelligence" and aviation are combined, and it's likely the
first things they'll mention are drones. But autonomous aircraft are only a
fraction of the impact that advances in machine learning and other artificial
intelligence (AI) technologies will have in aviation-the technologies' reach
could encompass nearly every aspect of the industry. Aircraft manufacturers and
airlines are investing significant resources in AI technologies in applications
that span from the flightdeck to the customer's experience.
Automated
systems have been part of commercial aviation for years. Thanks to the adoption
of "fly-by-wire" controls and automated flight systems, machine learning and AI
technology are moving into a crew-member role in the cockpit. Rather than simply
reducing the workload on pilots, these systems are on the verge of becoming what
amounts to another co-pilot. For example, systems originally developed for
unmanned aerial vehicle (UAV) safety-such as Automatic Dependent Surveillance
Broadcast (ADS-B) for traffic situational awareness-have migrated into manned
aircraft cockpits. And emerging systems like the Maneuvering Characteristics
Augmentation System (MCAS) are being developed to increase safety when there's a
need to compensate for aircraft handling characteristics. They use sensor data
to adjust the control surfaces of an aircraft automatically, based on flight
conditions.
But machine-learning systems are only as good as the data
they get. There is inherent risk in handing off more of what humans do in a
high-risk environment to ML or AI that few people understand. While the final
investigation of the recent crash of Lion Air 610 is still underway, the details
revealed so far are a strong warning of the risks of handing off too much
control to autonomous systems. While catastrophic aviation accidents seldom
happen as a result of a single mistake (and this was no exception), the MCAS
sensors failed, maintenance failed to fully correct the issue, and the pilots
had not been fully trained and informed on the function and use of the
MCAS.
The lesson, reinforced at a tragic cost of 189 lives, is that the
aviation industry will have to fold data quality and the care and feeding of ML
and AI systems into the safety culture that commercial aviation is already
renowned for. As machine learning and AI transform the role of pilots, those
technologies need to be as thoroughly tested as their human counterparts and
deemed at least as competent.
Beyond the
auto-pilot
The Airbus A350 XWB aircraft, shown here during
the Dubai Airshow in 2015, has more than 50,000 sensors collecting flight and
performance data totaling over 2.5TB a day.
Major aircraft
manufacturers such as Airbus are already phasing in AI. According to Airbus Vice
President for AI Adam Bonnifield, the company has been working on these
technologies for a long time. "Airbus is not that unfamiliar with these
technologies because of our background in aviation and building systems that
essentially solve some problems in autonomy," he told Ars.
There's plenty
of data to tap regarding machine learning aboard the modern airliner: the A350
XWB, Airbus' twin-engine wide-body aircraft introduced in 2015, has some 50,000
sensors and collects 2.5 terabytes of data daily. And AI can make use of that
data in a number of ways. Airbus is working on projects that reduce the
cognitive load (and the resulting cognitive fatigue) on pilots, as well as the
number of pilots required to be at the controls. This means the crew can spend
more time handling the overall strategy and mission of a flight and less time
dealing with all the small sub-problems of piloting an
aircraft.
Bonnifield explained that, while many people view autonomy in
aircraft as "a binary"-either an airplane is autonomous or it isn't-he feels
differently. "It's more of a spectrum," he said, "where we take some of the
small problems of flying a plane and try to use AI to solve them."
One
example of this is an option available on Airbus aircraft called runway overrun
protection. ROPS is software that calculates aircraft approach speed and weight,
and it compares the resulting physics model with the published runway length and
current local weather on approach. If it detects an unsafe situation, it
broadcasts the message "Runway too short!" ROPS also calculates optimal approach
glide-slopes, or trajectories, for a landing approach, and it helps with
taxiing, takeoff, and other aspects of flight.
Another area of AI focus
at Airbus is building autonomous vehicles and air taxis designed to transport
people inside urban areas. And AI could potentially be used in a passenger plane
when the pilots are rendered unconscious from a fall in cabin pressure. It can
add up factors and make better decisions faster under high-pressure situations
than humans given the right data, creating a potential increase in
safety.
Simplifying communications
Air traffic controllers at the NATS London Area
Control Centre LACC in Swanwick, UK. Heavily accented English over noisy
communications channels is a real test of AI voice recognition.
Air
Traffic Control (ATC) communications is a critical aspect of all flights. In the
European airspace, much conversation happens in heavily accented English, making
it difficult for pilots and controllers to understand each other. Pilots need to
listen for their tail/flight number to be called for clearances, directional
instructions, and traffic alerts, often under challenging instrument
meteorological conditions (IMC) when they can't see out of the cockpit. Airbus
directed AI at this problem as part of a public contest in the company's AI
Gym-a program in which Airbus seeks outside partners to assist in developing
breakthrough AI systems.
Cleaning up air traffic conversations is
difficult for machine-learning algorithms to parse, because ATC audio is noisy,
and the conversation is rapid-fire and full of what Airbus described as
"domain-specific vocabulary." The goal of AI Gym was to provide full
transcription of ATC audio, as well as extract aircraft call signs from audio
for conversation tracking and alerting.
"We opened it up to a broad
community of different businesses, consulting firms, startups, and research
groups to collaborate with us," said Bonnifield. The competition closed in
October 2018, and Airbus has already begun work to convert the results into a
product.
The AI Gym program has allowed Airbus to attack a number of
other potential uses for AI by leveraging outside expertise. "We have these
interesting problems and use cases that are largely unexplored and unsolved,"
Bonnifield said. "Partly because of the fact that the space is so new, we're
living at this very immature inflection point of the technology where there's a
lot of experimentation happening and even some terrific open source
technology."
Through the program, Airbus is working with "all the usual
suspects," Bonnifield said; the projects are all performed under non-disclosure
agreements. The anonymity of the NDA can be a good thing, he suggested, because
not every effort is successful-and failures aren't advertised. While "the usual
suspects" in machine learning might often be expected to be the companies to
come up with the highest-performing solution, Bonnifield said he discovered that
most of the time the best solutions come from tiny startups.
Often,
research teams with only a few people are able to produce the best solution.
Bonnifield said he believed this is probably unique to the AI space. Airbus' big
challenge is how to bring these small teams at the tip of the innovation spear
along and give them an easy way to collaborate. That has required Airbus to
change the way it works with outsiders. "Some of the startups have never done an
RFP [Request for Proposals response] before," Bonnifield
explained.
Getting to business
When it comes to
flight-safety issues, airlines rely heavily on their equipment manufacturers
(such as Airbus and Boeing). But airlines aren't just counting on AI to assist
on the flight deck. Machine learning and AI are being called upon in the back
office to help airlines in their battle to streamline ground operations and to
create the best customer experience by making travel as painless and seamless as
possible.
United Airlines Vice President of Digital Products and
Analytics Praveen Sharma said that United is investing in all available new
technology to use machine learning with the backend data it gathers from
customers, maintenance logs, employee duty logs, and in-flight progressive data
to improve all aspects of its business.
In September, United and Palantir
Technologies announced a long-term relationship to deploy Palantir Foundry to
accelerate enterprise-wide data initiatives across a range of critical business
units as the airline's central platform. According to Sharma, "One challenge...
we are trying to solve is how to bring this vast amount of data from various
parts of the company on different platforms onto a single platform... [that] we
can leverage for our machine learning and AI model." The two companies have been
working on a wide range of projects for the past year to do
this.
Palantir partnered with Airbus to create Skywise, an aviation
data-analytics platform that Airbus provides to smaller airlines as a
subscription service that would include tools to help reduce unplanned
maintenance on aircraft. GE has also tried to turn aircraft sensor data into a
machine-learning-based service to drive predictive maintenance of the company's
jet engines.
United and its regional carrier, United Express, operate
about 4,600 flights a day to 357 airports across five continents. Last year, the
companies operated more than 1.6 million flights carrying more than 148 million
customers. When unforeseen maintenance issues do occur or other operational
issues get in the way, United is using machine learning to help swap out
aircraft. This isn't as simple as one might expect; the system must take into
account all of the variables required for assigning a crew (such as rest time
and appropriate crew aircraft certifications), aircraft fuel and operations
limitations, and aircraft seating capacity. "These are complicated decisions
that often must be calculated and decided in a 25-minute timeframe based on the
limited amount of data available at that time," Sharma
explained.
Beyond maintenance
But United's use of
machine learning and AI goes far beyond managing maintenance and aircraft
schedules. It also taps into customer data. Using the data gleaned from each
passenger interaction, United is applying AI and machine learning to streamline
its customers' experience based on their data-and tuning offers to match their
profiles.
United's machine-learning algorithms take 150 different
customer and flight data points and, in real time, decide which particular
product to put in front of a customer at the purchase or check-in point. The
engine takes into account things like passengers' previous purchases,
preferences, destinations, and activities. Customers' interactions move through
United's real-time decision engine, up and running since 2014, which gives them
various product options to improve their travel experience. Options include
flight choice, seat upgrades, mileage purchase, or the ability to jump to the
front of the line with Priority Access.
To drive what gets offered up to
each customer, Sharma said that United uses a prediction model based on a
Bayesian inference model. "It decides not just what offer to give," Sharma
explained, "but what image to put in front of the customer and what tagline to
use."
Sharma said that the application of machine learning is paying off.
Based on measurements collected by United, customers aren't having to hunt for
things they want to purchase or for desired experiences.
Other airlines
are embracing AI in other forms to take the pain out of travel (and to reduce
the workload on airline employees). Facial-recognition technology is now showing
up on terminal kiosks to help speed check-in at the airport.
Most
facial-recognition algorithms are based on deep learning, which is part of
machine learning. Delta Airlines is the first to deploy this process, speeding
up passengers' time to gate by almost 10 minutes, according to the airline's
estimates. The system, used currently for check-in and baggage check on
international flights, leverages passengers' passport photos. Delta expects to
expand operations to domestic flights next year.
Preventing
future disasters
Perhaps one of the most important uses of AI-based
analytics, however, may be in identifying risks to the safety of aircraft before
a disaster-such as the crash of Lion Air Flight 610, when a failure of the
automated control system on a prior flight may have signaled a major safety
issue. NASA Ames Research Center in Silicon Valley is heavily involved in
aviation-related AI, and one of NASA's projects there is focused on identifying
"anomalous operations" within data from commercial aviation-events that could be
precursors to potentially bigger problems.
This is a primary area of
research for Nikunj Oza, a computer scientist and leader of the data sciences
group within NASA Ames' intelligent systems division known as Code TI. Because
commercial aviation's safety record is so good-much better than driving, for
example-it's much more difficult to identify those few cases where there's an
anomaly that might represent a safety issue.
NASA has done some initial
development of algorithms related to anomaly detection and incident precursor
identification, and it has started the process for gathering feedback from
experts in the field. The agency is currently developing a system for use in
safety analysis of aircraft data-in particular, for FAA's analytics partner
Mitre, the federally funded research and development center. Mitre runs a
program called Aviation Safety Information Analysis and Sharing (ASIAS), a data
consortium that shares safety data among NASA, the Federal Aviation
Administration, the National Transportation Safety Board, aircraft
manufacturers, and more than 50 airlines. The airlines upload some subsets of
their flight-recorded data to Mitre, which performs analysis and provides
feedback on potential problems. (The data is shared confidentially by the
airlines.)
The hope for the analytics being developed at Ames is that the
AI can discover patterns of anomalies in flight data that could be indicative of
a systematic problem with aircraft. "You'd like to find that as soon as possible
and come up with some kind of a mitigation to prevent it happening again," Oza
explained. He said that, so far, rather than AI replacing humans outright in
aviation, AI and human experts have proven to be complementary-a partnership
that can save human lives.
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