A race between a robot car and a human has ended with a win for the humans.
The race was run on Thunderhill Raceway in California between
an Audi TTS that can drive itself and a racing car driver familiar with
the circuit.
The human driver completed a lap around the circuit a few seconds faster than the robotic car.
The race was part of research to develop control systems that will help to make domestic cars more autonomous.
Human race
The robot car in the race has been developed by researchers at the
Centre for Automotive Research at Stanford University (Cars).
Called Shelley, the autonomous vehicle is fitted with sensors
that work out its position on the road, feed back information about the
grip of its tyres and help it plot the best route around the circuit.
Prof Chris Gerdes, head of the Cars Lab at Stanford, said
Thunderhill was chosen because its 15 turns present the car's control
systems with a wide variety of challenges. Some corners can be taken at
high speed, some are chicanes, others are sharp and come at the end of
long straights down which the car hit a top speed of 115mph (185kph).
Once familiar with the three-mile circuit the car was raced
against one of Thunderhill's staff who was very familiar with the track
and logged a slightly faster time.
"What human drivers do consistently well is feel out the
limits of the car and push it just a little bit further and that is
where they have an advantage," said Prof Gerdes.
He added that follow-up work had been done to record what the
best human drivers did with the car's brakes, steering and throttle as
they drove so this could be incorporated into the control systems the
Stanford team is developing.
For instance, he said, in
situations where the car is being driven at the limit of the grip of its
tyres, the car cannot be turned via the steering wheel. Instead, said Prof Gerdes, race drivers use the brake and the throttle to force a car round a corner.
"We're learning what they are doing and it's those
counter-intuitive behaviours that we are planning to put in the
algorithm," he said.
"Our ultimate objective is not really to robotify [car
racing] but to take these sorts of technologies, learning from the very
best human drivers and turn those into safety systems that can work on
cars," he told the Big Science Summit, a conference organised by The
Atlantic magazine.
Currently, he said, driver assistance systems in vehicles
actively prevent them performing manoeuvres that the best drivers use to
avoid or get out of trouble.
Driving fast on a race track was one way to expose those high
level abilities, he said. The maths of making a car steer safely at
high speed around a tight bend was very similar to that needed to keep a
car on the road if it hits a patch of ice. Both, he said, involved a
calculation based on how much friction there was between the road and
the tyres.
"As we set up these systems in the future, it's important not
to build autonomous vehicles that are merely a collection of systems
designed for human support but to think a little bit more holistically
about making them as good as the very best human drivers," said Prof
Gerdes. "It's not so much the technology as the capability of the human
that is our inspiration now."
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