Robohub.org
 

Robust and transparent governance is key to building trust in driverless cars


by
12 April 2016



share this:

regulation_google-buggy_car_autonomous_robocar-(1)Sooner or later there will be fatal accident caused by a driverless car. It’s not a question of if, but when. What happens immediately following that accident could have a profound effect on the nascent driverless car industry.

Picture the scene. Emergency services are called to attend the accident. A teenage girl on a bicycle apparently riding along a cycle path was hit and killed by a car. The traffic police quickly establish that the car at the centre of the accident was operating autonomously at the moment of the fatal crash. They endeavour to find out what went wrong, but how? Almost certainly the car will have logged data on its behaviour leading up to the moment of the crash – data that is sure to hold vital clues about what caused the accident, but will that data be accessible to the investigating traffic police? And even if it is, will the investigators be able to interpret the data?

There are two ways the story could unfold from here.

Scenario 1: unable to investigate the accident themselves, traffic police decide to contact the manufacturer and ask for help. As it happens, a team from the manufacturer actually arrives on scene very quickly – it later transpires that the car had ‘phoned home’ automatically so the manufacturer actually knew of the accident within seconds of it taking place. Somewhat nonplussed, the traffic police have little choice but to grant them full access to the scene of the accident. The manufacturer undertakes their own investigation and – several weeks later – issue a press statement explaining that the AI driving the car was unable to cope with an “unexpected situation” which “regrettably” led to the fatal crash. The company explain that the AI has been upgraded so that it cannot happen again. They also accept liability for the accident and offer compensation to the child’s family. Despite repeated requests the company declines to share the technical details of what happened with the authorities, claiming that such disclosure would compromise its intellectual property.

A public already fearful of the new technology reacts very badly. Online petitions call for a ban on driverless cars and politicians enact knee-jerk legislation which, although falling short of an outright ban, sets the industry back years.

Scenario 2: the traffic police call the newly established driverless car accident investigation branch (DCAB), who send a team consisting of independent experts on driverless car technology, including its AI. The manufacturer’s team also arrive, but – under a protocol agreed with the industry – their role is to support DCAB and provide “full assistance, including unlimited access to technical data”. In fact, the data logs stored by the car are in a new industry standard format thus access by DCAB is straightforward; software tools allow them to quickly interpret those data logs. Well aware of public concerns DCAB provide hourly updates on the progress of their investigation via social media and, within just a few days, call a press conference to explain their findings. They outline the fault with the AI and explain that they will require the manufacturer to recall all affected vehicles and update the AI, after submitting technical details of the update to DCAB for approval. DCAB will also issue an update to all driverless car manufacturers asking them to check for the same fault in their own systems, also reporting their findings back to DCAB.

A public fearful of the new technology is reassured by the transparent and robust response of the accident investigation team. Although those fears surface in the press and social media, the umbrella Driverless Car Authority (DCA) are quick to respond with expert commentators and data to show that driverless cars are already safer than manually driven cars.


There are strong parallels between driverless cars and commercial aviation. One of the reasons we trust airliners is that we know they are part of a highly regulated industry with an amazing safety record. The reason commercial aircraft are so safe is largely down to the very tough safety certification processes and, when things do go wrong, the rapid and robust processes of air accident investigation. There are emerging standards for driverless cars: ISO Technical Committee TC 204 on Intelligent Transport Systems already lists 213 standards. There isn’t yet a standard for fully autonomous driverless car operation, but see for instance ISO 11270:2014 on Lane keeping assistance systems (LKAS). But standards need teeth, which is why we need standards-based certification processes for driverless cars managed by regulatory authorities – a driverless car equivalent of the FAA. In short, a governance framework for driverless cars.

Postscript: several people have emailed or tweeted me to complain that I seem to be anti driverless cars – nothing could be further from the truth. I am a strong advocate of driverless cars for many reasons, first and most importantly because they will save lives, second because they should lead to a reduction in the number of vehicles on the road – thus making our cities greener, and third because they might just cure humans of our unhealthy obsession with personal car ownership. My big worry is that none of these benefits will flow if driverless cars are not trusted. But trust in technology doesn’t happen by magic and, in the early days, serious setbacks and a public backlash could set the nascent driverless car industry back years (think of GM foods in the EU). One way to counter such a backlash and build trust is to put in place robust and transparent governance as I have tried (not very well it seems) to argue in this post.



tags: , , , ,


Alan Winfield is Professor in robotics at UWE Bristol. He communicates about science on his personal blog.
Alan Winfield is Professor in robotics at UWE Bristol. He communicates about science on his personal blog.





Related posts :



Robot Talk Episode 131 – Empowering game-changing robotics research, with Edith-Clare Hall

  31 Oct 2025
In the latest episode of the Robot Talk podcast, Claire chatted to Edith-Clare Hall from the Advanced Research and Invention Agency about accelerating scientific and technological breakthroughs.

A flexible lens controlled by light-activated artificial muscles promises to let soft machines see

  30 Oct 2025
Researchers have designed an adaptive lens made of soft, light-responsive, tissue-like materials.

Social media round-up from #IROS2025

  27 Oct 2025
Take a look at what participants got up to at the IEEE/RSJ International Conference on Intelligent Robots and Systems.

Using generative AI to diversify virtual training grounds for robots

  24 Oct 2025
New tool from MIT CSAIL creates realistic virtual kitchens and living rooms where simulated robots can interact with models of real-world objects, scaling up training data for robot foundation models.

Robot Talk Episode 130 – Robots learning from humans, with Chad Jenkins

  24 Oct 2025
In the latest episode of the Robot Talk podcast, Claire chatted to Chad Jenkins from University of Michigan about how robots can learn from people and assist us in our daily lives.

Robot Talk at the Smart City Robotics Competition

  22 Oct 2025
In a special bonus episode of the podcast, Claire chatted to competitors, exhibitors, and attendees at the Smart City Robotics Competition in Milton Keynes.

Robot Talk Episode 129 – Automating museum experiments, with Yuen Ting Chan

  17 Oct 2025
In the latest episode of the Robot Talk podcast, Claire chatted to Yuen Ting Chan from Natural History Museum about using robots to automate molecular biology experiments.

What’s coming up at #IROS2025?

  15 Oct 2025
Find out what the International Conference on Intelligent Robots and Systems has in store.



 

Robohub is supported by:




Would you like to learn how to tell impactful stories about your robot or AI system?


scicomm
training the next generation of science communicators in robotics & AI


 












©2025.05 - Association for the Understanding of Artificial Intelligence